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News Trading and Speed Thierry Foucault, Johan Hombert, Ioanid Roşu (HEC Paris) 6th Financial Risks International Forum March 25-26, 2013, Paris Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 1 / 23

Introduction - Research questions Plan 1. Introduction - Research questions 2. Model 3. Implications 4. Conclusions Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 2 / 23

Frequency NewsIntroduction Trading - Research questions (HFTNs) Marketable orders from high frequency traders contain High Frequency Trading on News (HFTN) information (e.g., Brogaard, Hendershott, and Riordan (2012)). Which types of information? Marketable orders from high frequency traders contain information 1. (e.g., Mainly Brogaard, publichendershott information: andnews, Riordan, scheduled 2012) macro-economic announcements, Mainly public info: market news, data macro (updates announcements, in limit order market books, data (updates in the trades, limit order market-wide books, trades, returns market-wide etc.), blog returns), posts. blog posts, etc. Source: NYTimes, December 2010 Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 3 / 23

Introduction - Research questions Example Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 4 / 23

Introduction - Research questions High Frequency Trading on News How can it be profitable to trade on public information? 1. Faster access to information (co-location, real-time data feed, etc.) 2. Greater processing capacity of vast amount of information Only computers can process such vast amount of data quickly to generate trading signals Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 5 / 23

Introduction - Research questions Questions What is the optimal trading strategy for a high frequency trader on news (HFTN)? How does it differ from that of traders with only an information processing advantage? Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 6 / 23

Introduction - Research questions Why are these questions important? Many empirical papers relate returns to order flows from HFTs (e.g., Kirilenko et al., 2011; Brogaard, Hendershott and Riordan, 2012; Hirschey, 2011; Zhang, 2012; etc.) 1. How to interpret these findings? What should we expect regarding HFT flows? 2. Need of structural foundations Many debates about the effects of HFT on price discovery and volatility 1. HFT often accused of increasing volatility 2. Is this the case? Is speed associated with greater price volatility, or is it greater information processing? Should trading been slow down or should processing capacity be constrained? Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 7 / 23

Introduction - Research questions Our approach We build on the dynamic version of Kyle (1985) and consider an informed investor with two informational advantages: 1. Greater ability to process information: his forecast of the asset payoff is more precise than that of market-makers (standard) 2. Faster reaction than market-makers to public information (non standard) We compare the equilibrium with and without the speed advantage Main finding: even an infinitesimal speed advantage has large effects on equilibrium strategies and the relationship between trades and returns Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 8 / 23

Model Plan 1. Introduction - Research questions 2. Model 3. Implications 4. Conclusions Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 9 / 23

Model Model Kyle (1985) + public information (news) + speed advantage for the informed investor Continuous time t [0, 1] Fundamental value of the asset, v t = v 0 + t 0 dv t, follows a random walk News = dv t Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 10 / 23

Model Participants One risk-neutral informed trader (the HFTN): observes v 0 and news dv t perfectly 1. Position at date t: x t 2. Strategy: market order for dx t shares traded at date t Noise traders 1. Exogenous trade at date t: du t, contains no info Competitive market-makers 1. Absorb net order imbalance dy t = dx t + du t at a price equal to the expected payoff of the asset conditional of their information 2. Public flow of information: dz t = dv t + de t where de t N (0, σ 2 e dt) σ e > 0: the informed trader has an information processing advantage Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 11 / 23

Model Timing Figure 2: Timing of events during (t, t + dt] in the benchmark and the fast model Informed trader receives signal dv t In benchmark: Market maker receives signal dz t Market maker s quote q t Order flow dx t + du t Execution price p t+dt In fast model: market maker receives signal dz t Benchmark: The market-makers observe news before the informed investor bid-ask canmidpoint trade onjust them: before the theinformed transaction investor at t + dt. only 14 has an information processing advantage As explained in the introduction, our goal is to analyze the effects of granting to the Fast model: The informed investor can trade on news before they are informed investor the possibility to react to news faster than market makers, holding the observed by the market-makers accuracy of his signals (that is, Σ 0 > 0 and σ e > 0) constant. To this end, we consider two different models: the benchmark model and the fast model. They differ in the timing with which the informed investor and the market maker receive news. The sequence of Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 12 / 23

Model Equilibrium trading strategy for the informed investor Informed trader s optimal strategy has two components: dx t = β t (v t q t )dt + γdv t where q t is market-makers expectation of the asset payoff before observing the order flow 1. Pricing error component β t (v q q t )dt: buy (sell) when market-makers undervalue (overvalue) the asset. Standard in Kyle s type of model 2. News trading components γdv t : trade on news because they are correlated with short run returns Result: If the informed investor has no speed advantage (benchmark): γ = 0, even if he has an information processing advantage (σ e > 0) = No HFTN without a speed advantage Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 13 / 23

Model Informed investor s position Informed investor s trades Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 14 / 23

Implications Plan 1. Introduction - Research questions 2. Model 3. Implications 4. Conclusions Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 15 / 23

Implications Implications for the trades of HFTNs High participation rate: Fraction of volume due to informed trader is an order magnitude higher when he has a speed advantage Consistent with the large volume due to HFTs Anticipatory trading: Positive correlation between short run returns and the trade of the informed investor Possibly due to their speed advantage or superior ability to predict price changes, HFTs are able to buy right as the prices are about to increase. (Kirilenko et al., 2012) Zero autocorrelation in trades (dx t ) over short time intervals None of these properties obtain if the informed investor has no speed advantage Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 16 / 23

Implications The effect of HFTN on market performance There are many debates about the effect of HFT on liquidity, price discovery and volatility Causality is difficult to establish empirically Compare the model with and without a speed advantage Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 17 / 23

Implications Liquidity Speed advantage is an additional source of adverse selection Hence, liquidity is smaller with HFTN Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 18 / 23

Implications Price discovery Measure of informational efficiency: E [(v t p t ) 2 ] Two effects of granting a speed advantage to the informed investor: 1. Price changes are more correlated with news: Cov(dp t, dv t ) higher with HFTN 2. but less correlated with pricing error: Cov(dp t, v t p t ) is smaller with HFTN, because the informed investor trades less aggressively on the pricing error when he trade on news Net effect on E [(v t p t ) 2 ] is zero Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 19 / 23

Implications Volatility Volatility of returns can be decomposed in two components (q t =market-makers quote after receiving public info): Var(dp t ) = Var(p t+dt q t ) + } {{ } Var(q t p t ) } {{ } Transactions (dy t ) Public signals (dz t ) The first component is higher in the fast model and the second is smaller. Net effect = zero = HFTN has no effect on volatility However, the contribution of news to volatility is smaller in the fast model Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 20 / 23

Implications Determinants of HFTN Results: When market-makers public information is more precise 1. The informed investor trades more aggressively on news 2. The market is more liquid Yet, liquidity is lower when the informed investor has a speed advantage = Risk of spurious positive correlation between measures of HFTN activity and liquidity Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 21 / 23

Implications Interpreting econometric models Our model can be used to offer structural foundations to econometric models of high frequency trading VAR models State-space models Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 22 / 23

Conclusion Conclusion Speed of access to information has effects distinct from greater processing capacity of information Slowing down HFTs may have no effect on volatility or price discovery (they will simply trade more aggressively on their long-lived information advantage) Dynamic models of HFT help to interpret relationships between HFTs flows and returns Caveat: HFTs strategies are heterogenous. Our results apply only to one specific strategy (High Frequency Trading on News) Johan Hombert (HEC Paris) News Trading and Speed 6th Financial Risks International Forum 23 / 23