Electronic Theses and Dissertations UC Santa Cruz
|
|
|
- Neal McCormick
- 10 years ago
- Views:
Transcription
1 Electronic Theses and Dissertations UC Santa Cruz Peer Reviewed Title: High Frequency Trade Direction Prediction Author: Stav, Augustine Dexter Acceptance Date: 2015 Series: UC Santa Cruz Electronic Theses and Dissertations Degree: MS, PhysicsUC Santa Cruz Advisor(s): Laughlin, Gregory Committee: Aguirre, Anthony, Aldrich, Eric Permalink: Abstract: Copyright Information: Copyright 2015 by the article author(s) This work is made available under the terms of the Creative Commons Attribution-ShareAlike40 license, escholarship provides open access, scholarly publishing services to the University of California and delivers a dynamic research platform to scholars worldwide
2 UNIVERSITY OF CALIFORNIA SANTA CRUZ HIGH FREQUENCY TRADE DIRECTION PREDICTION A thesis submitted in partial satisfaction of the requirements for the degree of MASTER OF SCIENCE in PHYSICS by Augustine Stav June 2015 The Thesis of Augustine Stav is approved by: Professor Gregory Laughlin, Chair Professor Anthony Aguirre Professor Eric Aldrich Professor Tyrus Miller Vice Provost and Dean of Graduate Studies
3
4 Contents List of Figures iv vi Acknowledgments vii 1 Introduction 1 21 The Volume Synchronized Probability of Informed Trading Model 3 22 The Application of VPIN to the E-mini S&P Predicting Trade Direction Abstract 8 4 Parameterizing A Random Price Walk 15 5 Conclusion 18 Appendix 21 References 23 iii
5 List of Figures Figure 1 SPY Price and VPIN metric on 6 May 2010 Figure 2 Frequency of trade types preceding same price trades, E-Mini S&P 500 on August 5-7, Figure 3 Percentage of n consecutive given trade types leading to same price (blue), reversive (green), or trending (red) trades on August 5-7, Figure 4 Frequency of trade types preceding reversive trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Figure 5 Frequency of trade types preceding same price trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Figure 6 Frequency of trade types preceding trending trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Figure 7 Percentage of n consecutive given trade types leading to same price (blue), reversive (green), or trending (red) trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Figure 8 Bootstrap resample of frequency of trade types preceding reversive trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Bootstrap resample of frequency of trade types preceding same price trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Bootstrap resample of frequency of trade types preceding trending trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Figure 9 Figure 10 iv
6 Figure 11 Brownian motion simulation: frequency of trade types preceding reversive trades, difference between high volatility and low volatility 16 Figure 12 Brownian motion simulation: frequency of trade types preceding same price trades, difference between high volatility and low volatility 16 Figure 13 Brownian motion simulation: frequency of trade types preceding trending trades, difference between high volatility and low volatility 17 Figure 14 Frequency of trade types preceding reversive trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Figure 15 Frequency of trade types preceding same price trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Figure 16 Frequency of trade types preceding trending trades, difference between high VIX and low VIX for E-Mini S&P 500 in August Figure 17 Brownian motion simulation: frequency of trade types preceding reversive trades, difference between high volatility and low volatility 22 Figure 18 Brownian motion simulation: frequency of trade types preceding same price trades, difference between high volatility and low volatility 22 Figure 19 Brownian motion simulation: frequency of trade types preceding trending trades, difference between high volatility and low volatility 22 v
7 High Frequency Trade Direction Prediction by Augustine Stav Abstract High frequency trading involves large volumes and rapid price changes The Volume Synchronized Probability of Informed Trading (VPIN) metric characterizes order flow toxicity This toxicity is the unbalance of order flow between informed traders who possess knowledge of future price directions and market makers who do not have this information VPIN requires trades to be classified as buys or sells and works with volume as a proxy for information arrival As an alternative, trade volatility is determined from the trade direction Subsequent trades are either at the same price, reversive, or trending The virtual price takes continuous values between the bid-ask spread and exhibits Brownian motion The realized price is the virtual price rounded to the nearest tick Changes in the actual price occur when the realized price crosses the spread The volatility parameter of the Brownian probability density function is determined so that the model has the greatest correlation to the observed trade directions According to the Chicago Board Options Exchange Market Volatility Index, VIX, August 5th 7th and August 20th 22th, 2014 were periods of relatively high and low volatility for the S&P 500 respectively The volatilities obtained for the high and low periods are (480 ± 202) dollars 2/trade and (421 ± 071) dollars 2/trade respectively vi
8 Acknowledgments I want to thank my parents, John and Sokhan Stav, and my friend, Monica Tutor, for their support I would also like to thank Professor Gregory Laughlin for his guidance and invaluable feedback vii
9 1 Introduction High frequency (HF) traders act as market makers, quoting bid and ask prices They attempt to earn small margins on a large volume of trades HF traders turn over their inventories five or more times per day, leading to the rapid growth of HF trading to 73% of US equity trading volume (Sussman et al 2009) Easley et al (2011) have proposed using order flow, or signed trades, to determine short-term price movement Aggressive buys (sells) are market orders to buy (sell) at the ask price (bid price) Informed traders possess knowledge of future price directions that the market makers do not Trading against informed traders leads to losses From a market makers' perspective, order flow is toxic when the other parties in a trade are informed (Easley et al 2011) HF trading data may involve rapid price movements and unsigned trades If trades are unsigned, order flow classification schemes are necessary Easley et al (2012) developed a bulk classification method involving the price changes between volume buckets described in Section 2 The Volume Synchronized Probability of Informed Trading (VPIN) is given by the sum of the differences between sell and buy volume as a fraction of the total volume High order flow toxicity, represented by VPIN, may force market makers to liquidate or abandon market making activities VPIN, then, may predict short-term toxicity-induced volatility Easley et al (2012) divide the VPIN distribution into twenty 5 percentile bins 5184% of the times that VPIN enters a bin in the upper quartile of its distribution, there is at least one absolute 1
10 return between volume buckets greater than 075% before VPIN leaves that 5%-tile Volatility characterizes uncertainty about future returns It can be defined as the standard deviation of the return provided in one year when the return is expressed using continuous compounding Volatility can be estimated empirically from historical data or implied volatilites can be obtained from option pricing models The Black Scholes Merton formulas for the prices of European call and put options, for example, are solutions to a differential equation characterizing the dependence of a derivative price on the underlying stock Implied volatilities are calculated in such a way that, when input into the pricing model, they return the option prices observed in the market Contrasting with historical volatilities, implied volatilities characterize the market's opinion about the volatility of a stock VIX is an index of the implied volatility of 30-day options on the S&P 500 (Hull 2012) The purpose of this paper is to derive a metric from millisecond data, based on trade direction, as an alternative to order flow toxicity Section 2 describes the VPIN model, Section 3 presents the trade direction view of trade data, and Section 4 matches a random walk to the trade direction data 2
11 21 The Volume Synchronized Probability of Informed Trading Model The Probability of Informed Trading (PIN) developed by Easley et al (1996) is the fraction of informed trading relative to total order flow Traders are either informed or uniformed Information arrives between trading days with probability α This information is either bad, with probability δ, or good, with probability 1-δ Informed traders sell after bad news and buy after good news following a Poisson process characterized by a daily arrival rate μ Uninformed traders submit sell or buy orders according to independent Poisson processes with arrival rates ϵs and ϵb respectively The likelihood of observing B buys and S sells on a trading day is: (1) Using (1), maximum likelihood estimates of the parameters (α, δ, μ, ϵb, ϵs) are obtained PIN is given by: (2) Easley et al (2011) have developed a high frequency estimation of PIN: Volume Synchronized Probability of Informed Trading Whereas PIN models information arrival with clock time, VPIN uses trade volume as a proxy for 3
12 information arrival The average daily trade volume V is divided by a number n into volume buckets of equal size V = VτB + VτS VτB and VτS are the buy and trade volume in volume bucket τ, and (3) E[VτB + VτS] is the expectation value of the total number of trades in volume bucket τ The expected trade imbalance approximates αμ (the fraction of orders from informed traders): (4) With unsigned data, calculation of the order imbalance requires a volume classification scheme The bulk volume classification method classifies a fraction of the τth volume bucket as buys or sells Trades are rolled over into 1 minute timebars, indexed by t and having volume Vi, to mitigate order splitting effects Let t(τ) be the index of the last timebar included in bucket τ, and let t(τ-1) + 1 be the timebar immediately after the last timebar of bucket τ-1 A fraction of each timebar volume Vi is assigned as buys or sells assuming a normally distributed change in price between timebars (Pi Pi-1): (5) 4
13 where Z is the cumulative distribution function of the standard normal distribution and σδp is the estimated standard deviation of the price changes between time bars The order flow toxicity metric is: (6) (Easley et al 2012) (Abad and Yagüe, 2012) 22 The Application of VPIN to the E-mini S&P 500 Our primary source of information for this analysis is market depth data for the E-Mini S&P 500 Futures contract purchased from the Chicago Mercantile Exchange (CME) (CME DataMine 2015) These data are recorded and timestamped at the Globex matching engine, currently located in Aurora, Illinois (longitude -8824º W, latitude 4180 N) At the time of the Flash Crash on May 6th, 2010, the matching engine was located at 350 E Cermak Road in Chicago (longitude W, latitude 4173 N) Session data is written to ASCII files using the FIX specification Level-2 order book activity to a price depth of 10 on both the bid and the offer side of the order book is captured, along with trade records and other information relevant to recreating the trading session All order book events are time-stamped to millisecond precision, with time signals propagated from GPS receivers Events that occur within a single millisecond are time ordered US Equity futures prices formed in Chicago are generally understood to lead 5
14 cash prices formed in the US equity markets themselves (see, eg Hasbrouck 2003) Specifically, equity prices are determined by the price of the near-month E-Mini S&P 500 futures contract, which is traded on the CME's Globex platform and valued at 50 times the numerical value of the S&P 500 Stock Index on the contract expiration date The E-mini contract trades on the March quarterly cycle (March, June, September, and December) and expires on the third Friday of the contract month On the socalled roll date, eight days prior to expiry, both liquidity and price formation shift to the contract with the next-closest expiry date Several million E-mini contracts are traded each day, corresponding to dollar volumes that frequently exceed $200 billion A second, higher-level, source of tick data has been obtained from the NYSE Technologies Market Data Custom Trade and Quote Services (NYSE Custom TAQ 2014), and consists of trades in the symbol SPY aggregated across the Consolidated Market System, with price and trade size information time-stamped to the millisecond We obtain Figure 1 using the VPIN calculated from Equation (6) The figure shows VPIN in red and SPY price in blue vs time on May 6, 2010, the day of the Flash Crash This calculation uses average daily trade volume V = 100,000,000 and number of volume buckets n = 50 6
15 Figure 1: SPY Price and VPIN metric on 6 May 2010 Figure 1 shows the SPY price begin to drop precipitously at approximately 2:30pm VPIN begins its ascent 20 minutes prior and could serve as an indicator of toxic order flow Easley et al (2011) determine an empirical distribution of VPIN for the E-mini S&P 500 They find that CDF(VPIN) exceeds 95% at 1:08pm, compared to the 2:32pm accepted 'start' of the crash 7
16 3 Predicting Trade Direction The following analysis looks at consecutive past trades to predict the next trade type of the E-mini S&P 500 Futures Using the sign of previous price changes, this metric attempts to predict the direction of future price movements Current trades are either at the same price, trending, or reversive relative to the previous trade Let trades be organized chronologically and have index i The price change is ΔP i = Pi Pi-1 Trending trades continue the direction of price movement, so that sign(δp i) = sign(δpi-1) Reversive trades change the direction of price movement, so that sign(δpi) = -sign(δpi-1) Each trade i has nixy prior consecutive trades of a certain type The subscript x denotes the type of trade i (reversive, trending, or same price), while y represents the type of prior consecutive trades Let n xy, without the superscript i, represent the number of y trades immediately before any x trade N is the number of instances where nixy = nxy The relative frequency of nxy for given trade types x and y is: (7) where Tday is the total daily number of trades To mitigate the effects of order splitting, trades with the same millisecond timestamp, price, and sign (aggressive buy or sell) are aggregated As an example, Figure 2 plots the frequency according to Equation (7) for the different types of trades prior to same price trades on August 5-7, 2014 for the E-mini S&P 500 Futures The Reversive Preceding Same Price subplot (middle of the figure) shows the relative frequency of the number of consecutive reversive 8
17 trades immediately prior to each same price trade The other plots are organized similarly The percentage of the times that n consecutive y trades leads to an x trade is: (8) As an example, let F(nrs), F(nss), and F(nts) be the F(nxy) for consecutive same price trades immediately prior to reversive, same price, and trending trades respectively Then the percentage of the times that n consecutive same price trades leads to a reversive trade is: (9) Figure 3 provides a graphical example of G(n x) for n consecutive same price, reversive, and trending trades on August 5-7, 2014 The subscript x signifies that the trade after the consecutive string is either same price (blue), reversive (green), or trending (red) For example, the % Same Price Leading to Same, Reversive, or Trending subplot shows the percentage of the times that n consecutive same price trades leads to a same price, reversive, or trending trade 9
18 Figure 2: Frequency of trade types preceding same price trades, E-Mini S&P 500 on August 5-7, 2014 Figure 3: Percentage of n consecutive given trade types leading to same price (blue), reversive (green), or trending (red) trades on August 5-7, 2014 In order to test the effect of volatility on the analysis, the relative frequency F(nxy) is computed for three days of a local VIX maximum: August 5 th, 6th, and 7th 2014 These days had a VIX of 1687, 1637, and 1666 respectively This is repeated for three days of a nearby local VIX minimum: August 20th, 21th, and 22th 2014 These days had a VIX of 1178, 1176, and 1147 respectively For comparison, the 90-day VIX simple average ending on September 30, 2014 was 1263 (Yahoo! Finance 2014) Let the difference in the relative frequency be: (10) 10
19 where the summation is over each three day period Figures 4 through 6 plot ΔF(nxy) in August 2014 for trades prior to reversive, same price, and trending trades respectively These Figures are repeated with uncertainty estimates in the Appendix in Figures 14 through 16 The uncertainty is obtained from bootstrap resampling The bootstrapping procedure involves random resampling of the data with replacement Each resample is equal to the size of the original data set The low and high bounds of the error bars are obtained from the 15th and 85th percentiles of 100 bootstrap resamples Examples of single realizations of the bootstrap resampling procedure are shown in Figures 8 through 10, which can be compared to the corresponding original data represented in Figures 4 through 6 Figure 7 shows G(n x) vs n consecutive trades leading to same price (blue), reversive (green), or trending (red) trades for the high and low VIX periods in August 2014 Negative percentages are possible because ΔF(nxy) can take negative values Figure 4: Frequency of trade types preceding reversive trades, difference between high VIX and low VIX for E-Mini S&P 500 in August
20 Figure 5: Frequency of trade types preceding same price trades, difference between high VIX and low VIX for E-Mini S&P 500 in August 2014 Figure 6: Frequency of trade types preceding trending trades, difference between high VIX and low VIX for E-Mini S&P 500 in August 2014 Figure 7: Percentage of n consecutive given trade types leading to same price (blue), reversive (green), or trending (red) trades, difference between high VIX and low VIX for E-Mini S&P 500 in August
21 Figure 8: Bootstrap resample of frequency of trade types preceding reversive trades, difference between high VIX and low VIX for E-Mini S&P 500 in August 2014 Figure 9: Bootstrap resample of frequency of trade types preceding same price trades, difference between high VIX and low VIX for E-Mini S&P 500 in August 2014 Figure 10: Bootstrap resample of frequency of trade types preceding trending trades, difference between high VIX and low VIX for E-Mini S&P 500 in August 2014 See the Appendix on page 21 for Figures 14 through 16 with error bars obtained from 13
22 the 15th and 85th percentiles of 100 bootstrap resamples Same price trades dominate Figures 4 through 6 show that larger numbers, greater than n 10, of consecutive same price trades leads to reversive, same price, or trending trades more often on low VIX days, as G(n) < 0 Similarly, G(n) < 0 for reversive trades preceding reversive or same price trades These indicate that low VIX days correspond to less variation in the price (larger numbers of consecutive same price trades) In addition, low VIX days can be characterized by a larger number of consecutive reversive trades than on high VIX days, indicating a tendency to undo previous price changes G(n) takes positive values in the Same Price Preceding Same Price subplot of Figure 5 only for a number of consecutive trades fewer than n 10 This shows that on high VIX days the price fails to remain constant for more than a few trades 14
23 4 Parameterizing A Random Price Walk The actual price of E-mini futures has a minimum price change of one tick or $1250 Let a virtual price take continuous values between the bid-ask spread and exhibit Brownian motion The realized price is the virtual price rounded to the nearest tick Changes in the actual price occur when the realized price crosses the spread Brownian motion is characterized by the probability density function (11) where p is the price The value t is a proxy for time elapsed: the trade number (trade time) The parameter D is expected to follow (12) D is determined with an iterative search For each trial value of D, the virtual price evolves as follows: the price changes by increments drawn from a normal distribution with standard deviation (2D)1/2, equation (11) The total number of trade time steps is set equal to the number of trades for each period of high and low volatility: August 5th 7th and August 20th 22th, 2014 D is chosen so that the evolution of the actual prices produced have the greatest correlation to the data obtained from equation (7) in Section 3 For the high volatility days, D = (480 ± 202) dollars 2/trade For the low volatility days, D = (421 ± 071) dollars 2/trade To a first approximation, the spread = one tick = $1250 Due to rounding, for the realized price to cross the spread, the virtual price must change by half the spread According to Equation (12), D 15
24 (spread/2)2/2t0 where t0 is the average number of trades before a price change For the high volatility days, t0 = 345 trades, so that D 566 dollars2/trade Figures 11 through 13 plot ΔF(nxy) for trades prior to reversive, same price, and trending trades respectively, simulated using the D values obtained from the iterative search Figures 17 through 19 in the Appendix are the same plots, with error bars obtained from the upper and lower D bounds Figure 11: Brownian motion simulation: frequency of trade types preceding reversive trades, difference between high volatility and low volatility Figure 12: Brownian motion simulation: frequency of trade types preceding same price trades, difference between high volatility and low volatility 16
25 Figure 13: Brownian motion simulation: frequency of trade types preceding trending trades, difference between high volatility and low volatility 17
26 5 Conclusion The trade direction analysis looks at consecutive past trades to predict the next trade type of the E-mini S&P 500 Futures Current trades are either at the same price, trending, or reversive relative to the previous trade The millisecond trade data used in the analysis represents periods of relatively high and low volatility: August 5th 7th and August 20th 22th, 2014 respectively Let ΔF(nxy) be the difference between the relative frequencies with which n consecutive trades of type y precede a trade of type x in the high and low volatility periods Figures 4 through 6 plot ΔF(nxy) vs n for each trade type The volatility is determined from the direction of price movement Trade time is used as a proxy for clock time A virtual price, simulated with Brownian motion, takes continuous values between the bid-ask spread The realized price is the virtual price rounded to the nearest tick Changes in the actual price occur when the realized price crosses the spread The volatility parameter of the Brownian probability density function is determined so that the model has the greatest correlation to the observed directions of price movement The volatilities obtained for the high and low volatility periods are (480 ± 202) dollars2/trade and (421 ± 071) dollars2/trade respectively As a check, equation (12) gives an estimate for the volatility of 566 dollars2/trade Figures 12 and 13 plot the modeled ΔF(nxy) vs n for trades prior to same price and trending trades respectively Qualitatively, these subplots are similar to their realdata counterparts in Figures 5 and 6 in both magnitude of ΔF(nxy) and the flip 18
27 behavior at n 5 in the Same Price Preceding Same Price and n 10 in the Same Price Preceding Trending subplots This flip is due to F(n xy) on the low volatility days exceeding F(nxy) on the high volatility days at higher n This simple Brownian model has limitations The Same Price Preceding Reversive subplot of Figure 11 fails to reproduce Figure 4 because the model does not include bid-ask bounce Additionally, in Figure 11, and the subplots involving reversive trades in Figures 12 and 13, reversive behavior at low n is not captured It is evident from the middle subplot of Figures 4 through 6 that reversive trades preceded each trade type more frequently in the low volatility period than the high volatility period The Brownian motion simulation failed to replicate this The Commodity Futures Trading Commission (CFTC) recently filed a complaint against Navinder Sarao and his company Nav Saro Futures limited, alleging price manipulation and spoofing (CFTC Press Release 2015) Spoofing involves a trader putting in larger orders without the intention to fulfill to move the price in a way that is advantageous for the spoofer (Hope et al 2015) The CFTC complaint alleges that, in June 2009, the defendants used a modified trading platform to layer four to six large sell orders into the E-mini S&P central limit order book This Layering Algorithm modified the price of the orders to stay three or four levels away from the best asking price, and eventually most orders were canceled The complaint goes on to state that on May 6, 2010, the day of the Flash Crash, the defendants used the Layer Algorithm for over two hours before 19
28 the crash According to the complaint, the defendants activities applied close to $200 million worth of downward pressure on the E-mini S&P price and contributed to an extreme order book imbalance which led to the Flash Crash (CFTC Press Release 2015) The E-mini S&P order book imbalance caused by the spoofing for over two hours prior to the crash was not picked up by the VPIN metric on May 6, 2014 As shown in Figure 1, VPIN begins its ascent about 20 minutes prior to the crash at 2:32pm Easley et al (2011) find that the CDF(VPIN) exceeds 95% at 1:08pm Because it is alleged that the spoofing began half an hour or more prior to this, it is not clear that Sarao's activities were a factor in the flash crash 20
29 Appendix Figure 14: Frequency of trade types preceding reversive trades, difference between high VIX and low VIX for E-Mini S&P 500 in August 2014 Error bars in Figures 14 to 16 are obtained from the 15th and 85th percentiles of 100 bootstrap resamples Figure 15: Frequency of trade types preceding same price trades, difference between high VIX and low VIX for E-Mini S&P 500 in August 2014 Figure 16: Frequency of trade types preceding trending trades, difference between high VIX and low VIX for E-Mini S&P 500 in August
30 Figure 17: Brownian motion simulation: frequency of trade types preceding reversive trades, difference between high volatility and low volatility Figure 18: Brownian motion simulation: frequency of trade types preceding same price trades, difference between high volatility and low volatility Figure 19: Brownian motion simulation: frequency of trade types preceding trending trades, difference between high volatility and low volatility 22
31 References Abad, D; Yagüe, J 2012 From PIN to VPIN: An introduction to order flow toxicity The Spanish Review of Financial Economics 102, Andersen, T; Bondarenko, O 2014 Assessing Measures of Order Flow Toxicity and Early Warning Signals for Market Turbulence Review of Finance, Forthcoming CFTC Press Release Commodity Futures Trading Commission Web 2015 < CME DataMine CME Group Web 2015 < Easley, D; Kiefer, N; O'Hara, M; Paperman, J 1996 Liquidity, Information, and Infrequently Traded Stocks Journal of Finance 51, Easley, D; Lopez de Prado, M; O'Hara, M 2011 The Microstructure of the Flash Crash : Flow Toxicity, Liquidity Crashes and the Probability of Informed Trading The Journal of Portfolio Management 372, Easley, D; Lopez de Prado, M; O'Hara, M 2012 Flow Toxicity and Liquidity in a High Frequency World Review of Financial Studies 255, Easley, D; Lopez de Prado, M; O'Hara, M Bulk Classification of Trading Activity 2012 Johnson School Research Paper Series 8 Hasbrouck, J 2003 Intraday Price Formation in US Equity Index Market Journal of Finance, 58(6), Hope, B; Albanese, C; Viswanatha, A 2015 Navinder Sarao's 'Flash Crash' Case Highlights Problem of 'Spoofing' in Complex Markets The Wall Street Journal Web < Hull, J 2012 Options, Futures, and Other Derivatives Upper Saddle River, NJ: Pearson/Prentice Hall 23
32 NYSE Custom TAQ NYSE Market Data Web 2014 < Sussman, A; Tabb, L; Iati, R US Equity High Frequency Trading: Strategies, Sizing and Market Structure 2009 Tabb Group Yahoo Finance! Volatility S&P 500 (VIX) Web 2014 < 24
Flow Toxicity and Liquidity in a High Frequency World
Flow Toxicity and Liquidity in a High Frequency World David Easley Scarborough Professor and Donald C. Opatrny Chair Department of Economics Cornell University [email protected] Marcos M. Lopez de Prado
Intraday Trading Invariance. E-Mini S&P 500 Futures Market
in the E-Mini S&P 500 Futures Market University of Illinois at Chicago Joint with Torben G. Andersen, Pete Kyle, and Anna Obizhaeva R/Finance 2015 Conference University of Illinois at Chicago May 29-30,
1. Section 747 of the Dodd-Frank Wall Street Reform and Consumer Protection Act of
Case: 1:15-cv-09196 Document#: 1 Filed: 10/19/15 Page 1 of 36 PageiD #:1 UNITED STATES DISTRICT COURT FOR THE NORTHERN DISTRICT OF ILLINOIS, EASTERN DIVISION U.S. COMMODITY FUTURES TRADING COMMISSION,
Pivot Trading the FOREX Markets
Pivot Trading the FOREX Markets A report by Jim White April, 2004 Pivot Research & Trading Co. 3203 Provence Place Thousand Oaks, Ca. 91362 Phone: 805-493-4221 FAX: 805-493-4349 Email: [email protected]
BEAR: A person who believes that the price of a particular security or the market as a whole will go lower.
Trading Terms ARBITRAGE: The simultaneous purchase and sale of identical or equivalent financial instruments in order to benefit from a discrepancy in their price relationship. More generally, it refers
Financial Markets and Institutions Abridged 10 th Edition
Financial Markets and Institutions Abridged 10 th Edition by Jeff Madura 1 12 Market Microstructure and Strategies Chapter Objectives describe the common types of stock transactions explain how stock transactions
Financial Econometrics and Volatility Models Introduction to High Frequency Data
Financial Econometrics and Volatility Models Introduction to High Frequency Data Eric Zivot May 17, 2010 Lecture Outline Introduction and Motivation High Frequency Data Sources Challenges to Statistical
Decimalization and market liquidity
Decimalization and market liquidity Craig H. Furfine On January 29, 21, the New York Stock Exchange (NYSE) implemented decimalization. Beginning on that Monday, stocks began to be priced in dollars and
Algorithmic Trading Session 1 Introduction. Oliver Steinki, CFA, FRM
Algorithmic Trading Session 1 Introduction Oliver Steinki, CFA, FRM Outline An Introduction to Algorithmic Trading Definition, Research Areas, Relevance and Applications General Trading Overview Goals
Turk s ES ZigZag Day Trading Strategy
Turk s ES ZigZag Day Trading Strategy User Guide 11/15/2013 1 Turk's ES ZigZag Strategy User Manual Table of Contents Disclaimer 3 Strategy Overview.. 4 Strategy Detail.. 6 Data Symbol Setup 7 Strategy
Sensex Realized Volatility Index
Sensex Realized Volatility Index Introduction: Volatility modelling has traditionally relied on complex econometric procedures in order to accommodate the inherent latent character of volatility. Realized
Toxic Arbitrage. Abstract
Toxic Arbitrage Thierry Foucault Roman Kozhan Wing Wah Tham Abstract Arbitrage opportunities arise when new information affects the price of one security because dealers in other related securities are
Forecasting Trade Direction and Size of Future Contracts Using Deep Belief Network
Forecasting Trade Direction and Size of Future Contracts Using Deep Belief Network Anthony Lai (aslai), MK Li (lilemon), Foon Wang Pong (ppong) Abstract Algorithmic trading, high frequency trading (HFT)
CFDs and Liquidity Provision
2011 International Conference on Financial Management and Economics IPEDR vol.11 (2011) (2011) IACSIT Press, Singapore CFDs and Liquidity Provision Andrew Lepone and Jin Young Yang Discipline of Finance,
SARAO and The E-Mini Trading System
AO 91(Rev.11/11) Criminal Complaint UNITED STATES OF AMERICA v. NAVINDER SINGH SARAO and belief. DOJ Fraud Section Assistant Chief Brent S. Wible (202) 257-4592 and DOJ Fraud Section Trial Attorney Michael
Implied Matching. Functionality. One of the more difficult challenges faced by exchanges is balancing the needs and interests of
Functionality In Futures Markets By James Overdahl One of the more difficult challenges faced by exchanges is balancing the needs and interests of different segments of the market. One example is the introduction
Market Microstructure: An Interactive Exercise
Market Microstructure: An Interactive Exercise Jeff Donaldson, University of Tampa Donald Flagg, University of Tampa ABSTRACT Although a lecture on microstructure serves to initiate the inspiration of
Investing In Volatility
Investing In Volatility By: Anish Parvataneni, CFA Portfolio Manager LJM Partners Ltd. LJM Partners, Ltd. is issuing a series a white papers on the subject of investing in volatility as an asset class.
Daytrading Stock Pairs
TRADING TECHNIQUES Using Volatility And Correlation Daytrading Stock Pairs Tired of trading Level II quotes and one-minute charts? Try a market-neutral strategy. by Mark Conway and Aaron Behle I t can
STATEMENT OF GARY GENSLER CHAIRMAN, COMMODITY FUTURES TRADING COMMISSION BEFORE THE HOUSE OF REPRESENTATIVES COMMITTEE ON FINANCIAL SERVICES
STATEMENT OF GARY GENSLER CHAIRMAN, COMMODITY FUTURES TRADING COMMISSION BEFORE THE HOUSE OF REPRESENTATIVES COMMITTEE ON FINANCIAL SERVICES SUBCOMMITTEE ON CAPITAL MARKETS, INSURANCE, AND GOVERNMENT SPONSORED
Liquidity in U.S. Treasury spot and futures markets
Liquidity in U.S. Treasury spot and futures markets Michael Fleming and Asani Sarkar* Federal Reserve Bank of New York 33 Liberty Street New York, NY 10045 (212) 720-6372 (Fleming) (212) 720-8943 (Sarkar)
About Volatility Index. About India VIX
About Volatility Index Volatility Index is a measure of market s expectation of volatility over the near term. Volatility is often described as the rate and magnitude of changes in prices and in finance
a. CME Has Conducted an Initial Review of Detailed Trading Records
TESTIMONY OF TERRENCE A. DUFFY EXECUTIVE CHAIRMAN CME GROUP INC. BEFORE THE Subcommittee on Capital Markets, Insurance and Government Sponsored Enterprises of the HOUSE COMMITTEE ON FINANCIAL SERVICES
Analysis of High-frequency Trading at Tokyo Stock Exchange
This article was translated by the author and reprinted from the June 2014 issue of the Securities Analysts Journal with the permission of the Securities Analysts Association of Japan (SAAJ). Analysis
10 knacks of using Nikkei Volatility Index Futures
10 knacks of using Nikkei Volatility Index Futures 10 KNACKS OF USING NIKKEI VOLATILITY INDEX FUTURES 1. Nikkei VI is an index indicating how the market predicts the market volatility will be in one month
Hedging Borrowing Costs with Eurodollar Futures
Hedging Borrowing Costs with Eurodollar Futures DTN/The Progressive Farmer 2010 Ag Summit December 9, 2010 James Boudreault, CFA Financial Research & Product Development CME Group Agenda 1. Introduction
Assessing Measures of Order Flow Toxicity via Perfect Trade Classification. Torben G. Andersen and Oleg Bondarenko. CREATES Research Paper 2013-43
Assessing Measures of Order Flow Toxicity via Perfect Trade Classification Torben G. Andersen and Oleg Bondarenko CREATES Research Paper 213-43 Department of Economics and Business Aarhus University Fuglesangs
Model Validation Turtle Trading System. Submitted as Coursework in Risk Management By Saurav Kasera
Model Validation Turtle Trading System Submitted as Coursework in Risk Management By Saurav Kasera Instructors: Professor Steven Allen Professor Ken Abbott TA: Tom Alberts TABLE OF CONTENTS PURPOSE:...
This paper is not to be removed from the Examination Halls
~~FN3023 ZB d0 This paper is not to be removed from the Examination Halls UNIVERSITY OF LONDON FN3023 ZB BSc degrees and Diplomas for Graduates in Economics, Management, Finance and the Social Sciences,
Pattern Recognition and Prediction in Equity Market
Pattern Recognition and Prediction in Equity Market Lang Lang, Kai Wang 1. Introduction In finance, technical analysis is a security analysis discipline used for forecasting the direction of prices through
SAXO BANK S BEST EXECUTION POLICY
SAXO BANK S BEST EXECUTION POLICY THE SPECIALIST IN TRADING AND INVESTMENT Page 1 of 8 Page 1 of 8 1 INTRODUCTION 1.1 This policy is issued pursuant to, and in compliance with, EU Directive 2004/39/EC
Introduction to Equity Derivatives on Nasdaq Dubai NOT TO BE DISTRIUTED TO THIRD PARTIES WITHOUT NASDAQ DUBAI S WRITTEN CONSENT
Introduction to Equity Derivatives on Nasdaq Dubai NOT TO BE DISTRIUTED TO THIRD PARTIES WITHOUT NASDAQ DUBAI S WRITTEN CONSENT CONTENTS An Exchange with Credentials (Page 3) Introduction to Derivatives»
TMX TRADING SIMULATOR QUICK GUIDE. Reshaping Canada s Equities Trading Landscape
TMX TRADING SIMULATOR QUICK GUIDE Reshaping Canada s Equities Trading Landscape OCTOBER 2014 Markets Hours All market data in the simulator is delayed by 15 minutes (except in special situations as the
SMG... 2 3 4 SMG WORLDWIDE
U S E R S G U I D E Table of Contents SMGWW Homepage........... Enter The SMG............... Portfolio Menu Page........... 4 Changing Your Password....... 5 Steps for Making a Trade....... 5 Investor
An Unconventional View of Trading Volume
An Unconventional View of Trading Volume With all the talk about the decline in trading volume (over 30% on a year- over- year basis for most of the third quarter) you would think that no one is playing
Discussions of Monte Carlo Simulation in Option Pricing TIANYI SHI, Y LAURENT LIU PROF. RENATO FERES MATH 350 RESEARCH PAPER
Discussions of Monte Carlo Simulation in Option Pricing TIANYI SHI, Y LAURENT LIU PROF. RENATO FERES MATH 350 RESEARCH PAPER INTRODUCTION Having been exposed to a variety of applications of Monte Carlo
Understanding Margins
Understanding Margins Frequently asked questions on margins as applicable for transactions on Cash and Derivatives segments of NSE and BSE Jointly published by National Stock Exchange of India Limited
Cluster Analysis for Evaluating Trading Strategies 1
CONTRIBUTORS Jeff Bacidore Managing Director, Head of Algorithmic Trading, ITG, Inc. [email protected] +1.212.588.4327 Kathryn Berkow Quantitative Analyst, Algorithmic Trading, ITG, Inc. [email protected]
How To Classify Trade Data
DISCERNING INFORMATION FROM TRADE DATA David Easley 1 [email protected] Marcos López de Prado 2 marcos.lopezdeprado@ guggemheimpartners.com Maureen O Hara 3 [email protected] February 2015 ABSTRACT How best
Stock Index Futures Spread Trading
S&P 500 vs. DJIA Stock Index Futures Spread Trading S&P MidCap 400 vs. S&P SmallCap 600 Second Quarter 2008 2 Contents Introduction S&P 500 vs. DJIA Introduction Index Methodology, Calculations and Weightings
CME Group 2012 Commodities Trading Challenge. Competition Rules and Procedures
Competition Rules and Procedures CME Group with assistance from CQG and the University of Houston, is sponsoring a commodities trading competition among colleges and universities. Students will compete
Department of Economics and Related Studies Financial Market Microstructure. Topic 1 : Overview and Fixed Cost Models of Spreads
Session 2008-2009 Department of Economics and Related Studies Financial Market Microstructure Topic 1 : Overview and Fixed Cost Models of Spreads 1 Introduction 1.1 Some background Most of what is taught
Understanding Margins. Frequently asked questions on margins as applicable for transactions on Cash and Derivatives segments of NSE and BSE
Understanding Margins Frequently asked questions on margins as applicable for transactions on Cash and Derivatives segments of NSE and BSE Jointly published by National Stock Exchange of India Limited
VOLATILITY AND DEVIATION OF DISTRIBUTED SOLAR
VOLATILITY AND DEVIATION OF DISTRIBUTED SOLAR Andrew Goldstein Yale University 68 High Street New Haven, CT 06511 [email protected] Alexander Thornton Shawn Kerrigan Locus Energy 657 Mission St.
INCORPORATION OF LIQUIDITY RISKS INTO EQUITY PORTFOLIO RISK ESTIMATES. Dan dibartolomeo September 2010
INCORPORATION OF LIQUIDITY RISKS INTO EQUITY PORTFOLIO RISK ESTIMATES Dan dibartolomeo September 2010 GOALS FOR THIS TALK Assert that liquidity of a stock is properly measured as the expected price change,
The (implicit) cost of equity trading at the Oslo Stock Exchange. What does the data tell us?
The (implicit) cost of equity trading at the Oslo Stock Exchange. What does the data tell us? Bernt Arne Ødegaard Sep 2008 Abstract We empirically investigate the costs of trading equity at the Oslo Stock
How To Set A Futures Price Limit
Chapter 356 S&P 500 Value Index Futures 35600. SCOPE OF CHAPTER This chapter is limited in application to S&P 500 Value Index futures ( futures ). In addition to this chapter, futures shall be subject
CFDs YOUR STARTER KIT
CFDs YOUR STARTER KIT Risk Warning: Forex and CFDs are leveraged products and you may lose your initial deposit as well as substantial amounts of your investment. Trading leveraged products carries a high
Animated example of Mr Coscia s trading
1 Animated example of Mr Coscia s trading 4 An example of Mr Coscia's trading (::. to ::.69) 3 2 The chart explained: horizontal axis shows the timing of the trades in milliseconds right hand vertical
Trading Tutorial. Microstructure 2 Liquidity. Rotman School of Management http://rit.rotman.utoronto.ca Page 1 of 9
Microstructure 2 Tutorial Introduction Welcome to Rotman Interactive Trader (RIT). This document begins assuming that you have installed and run the Rotman Interactive Trader client application (RIT Client).
CBOT Precious Metals AN INTRODUCTION TO TRADING CBOT ELECTRONIC GOLD AND SILVER
CBOT Precious Metals AN INTRODUCTION TO TRADING CBOT ELECTRONIC GOLD AND SILVER Introduction The Chicago Board of Trade offers electronic trading on two of the world s most actively traded precious metals
Technical analysis is one of the most popular methods
Comparing Profitability of Day Trading Using ORB Strategies on Index Futures Markets in Taiwan, Hong-Kong, and USA Yi-Cheng Tsai, Mu-En Wu, Chin-Laung Lei, Chung-Shu Wu, and Jan-Ming Ho Abstract In literature,
INTRODUCTION TO COTTON FUTURES Blake K. Bennett Extension Economist/Management Texas Cooperative Extension, The Texas A&M University System
INTRODUCTION TO COTTON FUTURES Blake K. Bennett Extension Economist/Management Texas Cooperative Extension, The Texas A&M University System Introduction For well over a century, industry representatives
UNITED STATES DISTRICT Magistrate Judge Michael T. Mason FOR THE NORTHER DISTRICT U.li IL.LJ.t~v.1b ) ) )
1 : 15-cv-03398 Judge Andrea R. Wood UNITED STATES DISTRICT Magistrate Judge Michael T. Mason FOR THE NORTHER DISTRICT U.li IL.LJ.t~v.1b U.S. COMMODITY FUTURES TRADING COMMISSION, v. Plaintiff, NA V SARAO
The Foreign Exchange Market Not As Liquid As You May Think
06.09.2012 Seite 1 / 5 The Foreign Exchange Market Not As Liquid As You May Think September 6 2012 1 23 AM GMT By Loriano Mancini Angelo Ranaldo and Jan Wrampelmeyer The foreign exchange market facilitates
Comparing E-minis and ETFs
STOCK INDEXES Comparing E-minis and ETFs SEPTEMBER 15, 2012 John W. Labuszewski Managing Director Research & Product Development 312-466-7469 [email protected] CME Group E-mini stock index futures and
G100 VIEWS HIGH FREQUENCY TRADING. Group of 100
G100 VIEWS ON HIGH FREQUENCY TRADING DECEMBER 2012 -1- Over the last few years there has been a marked increase in media and regulatory scrutiny of high frequency trading ("HFT") in Australia. HFT, a subset
FTS Real Time System Project: Stock Index Futures
FTS Real Time System Project: Stock Index Futures Question: How are stock index futures traded? In a recent Barron s article (September 20, 2010) titled Futures Are the New Options it was noted that there
Effects of Limit Order Book Information Level on Market Stability Metrics
14-09 November 25, 2014 Effects of Limit Order Book Information Level on Market Stability Metrics Mark Paddrik Office of Financial Research [email protected] Roy Hayes University of Virginia [email protected]
Noble DraKoln. metals products Gold Futures vs. Gold ETFs: Understanding the Differences and Opportunities.
metals products Gold Futures vs. Gold ETFs: Understanding the Differences and Opportunities. Noble DraKoln Founder of Speculator Academy and author of Winning the Trading Game and Trade Like a Pro cmegroup.com/metals
An analysis of price impact function in order-driven markets
Available online at www.sciencedirect.com Physica A 324 (2003) 146 151 www.elsevier.com/locate/physa An analysis of price impact function in order-driven markets G. Iori a;, M.G. Daniels b, J.D. Farmer
High-frequency trading: towards capital market efficiency, or a step too far?
Agenda Advancing economics in business High-frequency trading High-frequency trading: towards capital market efficiency, or a step too far? The growth in high-frequency trading has been a significant development
Introduction to Futures Contracts
Introduction to Futures Contracts September 2010 PREPARED BY Eric Przybylinski Research Analyst Gregory J. Leonberger, FSA Director of Research Abstract Futures contracts are widely utilized throughout
Financial Market Microstructure Theory
The Microstructure of Financial Markets, de Jong and Rindi (2009) Financial Market Microstructure Theory Based on de Jong and Rindi, Chapters 2 5 Frank de Jong Tilburg University 1 Determinants of the
The SPX Size Advantage
SPX (SM) vs. SPY Advantage Series- Part II The SPX Size Advantage September 18, 2013 Presented by Marty Kearney @MartyKearney Disclosures Options involve risks and are not suitable for all investors. Prior
General Forex Glossary
General Forex Glossary A ADR American Depository Receipt Arbitrage The simultaneous buying and selling of a security at two different prices in two different markets, with the aim of creating profits without
Introduction to Foreign Exchange. Andrew Wilkinson
Introduction to Foreign Exchange Andrew Wilkinson Risk Disclosure Options and Futures are not suitable for all investors. The amount you may lose may be greater than your initial investment. Before trading
A powerful dashboard utility to improve situational awareness of the markets, place precise orders, and graphically monitor trading positions.
A powerful dashboard utility to improve situational awareness of the markets, place precise orders, and graphically monitor trading positions. Position DashBoard Powered by BAR ANALYZER Position DashBoard
Client Software Feature Guide
RIT User Guide Build 1.00 Client Software Feature Guide Introduction Welcome to Rotman Interactive Trader 2.0 (RIT 2.0). This document assumes that you have installed the Rotman Interactive Trader 2.0
Learning Curve Interest Rate Futures Contracts Moorad Choudhry
Learning Curve Interest Rate Futures Contracts Moorad Choudhry YieldCurve.com 2004 Page 1 The market in short-term interest rate derivatives is a large and liquid one, and the instruments involved are
How to Value Employee Stock Options
John Hull and Alan White One of the arguments often used against expensing employee stock options is that calculating their fair value at the time they are granted is very difficult. This article presents
Hedging Strategies Using Futures. Chapter 3
Hedging Strategies Using Futures Chapter 3 Fundamentals of Futures and Options Markets, 8th Ed, Ch3, Copyright John C. Hull 2013 1 The Nature of Derivatives A derivative is an instrument whose value depends
Naïve Bayes Classifier And Profitability of Options Gamma Trading
Naïve Bayes Classifier And Profitability of Options Gamma Trading HYUNG SUP LIM [email protected] Abstract At any given time during the lifetime of financial options, one can set up a variety of delta-neutral
Virtual Stock Market Game Glossary
Virtual Stock Market Game Glossary American Stock Exchange-AMEX An open auction market similar to the NYSE where buyers and sellers compete in a centralized marketplace. The AMEX typically lists small
Asymmetric Information (2)
Asymmetric nformation (2) John Y. Campbell Ec2723 November 2013 John Y. Campbell (Ec2723) Asymmetric nformation (2) November 2013 1 / 24 Outline Market microstructure The study of trading costs Bid-ask
STT315 Chapter 4 Random Variables & Probability Distributions KM. Chapter 4.5, 6, 8 Probability Distributions for Continuous Random Variables
Chapter 4.5, 6, 8 Probability Distributions for Continuous Random Variables Discrete vs. continuous random variables Examples of continuous distributions o Uniform o Exponential o Normal Recall: A random
CFD & FOREX TRADING RULES
CFD & FOREX TRADING RULES WHS TRADING RULES Version: JAN. 2016 WH SELFINVEST Est. 1998 Luxembourg, France, Belgium, Switzerland, Germany, Netherlands Copyright 2007-2016 all rights attached to this guide
CS 522 Computational Tools and Methods in Finance Robert Jarrow Lecture 1: Equity Options
CS 5 Computational Tools and Methods in Finance Robert Jarrow Lecture 1: Equity Options 1. Definitions Equity. The common stock of a corporation. Traded on organized exchanges (NYSE, AMEX, NASDAQ). A common
WORKING WORKING PAPER PAPER
Japan Exchange Group, Inc. Visual Identity Design System Manual Japan Exchange Group, Inc. Japan Exchange Group, Inc. Visual Identity Design System Manual Visual Identity Design System Manual JPX JPX 17
HFT and the Hidden Cost of Deep Liquidity
HFT and the Hidden Cost of Deep Liquidity In this essay we present evidence that high-frequency traders ( HFTs ) profits come at the expense of investors. In competing to earn spreads and exchange rebates
White Paper Electronic Trading- Algorithmic & High Frequency Trading. PENINSULA STRATEGY, Namir Hamid
White Paper Electronic Trading- Algorithmic & High Frequency Trading PENINSULA STRATEGY, Namir Hamid AUG 2011 Table Of Contents EXECUTIVE SUMMARY...3 Overview... 3 Background... 3 HIGH FREQUENCY ALGORITHMIC
OPTIONS EDUCATION GLOBAL
OPTIONS EDUCATION GLOBAL TABLE OF CONTENTS Introduction What are FX Options? Trading 101 ITM, ATM and OTM Options Trading Strategies Glossary Contact Information 3 5 6 8 9 10 16 HIGH RISK WARNING: Before
FORWARDS AND EUROPEAN OPTIONS ON CDO TRANCHES. John Hull and Alan White. First Draft: December, 2006 This Draft: March 2007
FORWARDS AND EUROPEAN OPTIONS ON CDO TRANCHES John Hull and Alan White First Draft: December, 006 This Draft: March 007 Joseph L. Rotman School of Management University of Toronto 105 St George Street
The Impact of Co-Location of Securities Exchanges and Traders Computer Servers on Market Liquidity
The Impact of Co-Location of Securities Exchanges and Traders Computer Servers on Market Liquidity Alessandro Frino European Capital Markets CRC Vito Mollica Macquarie Graduate School of Management Robert
