Final Project Presentation. By Amritaansh Verma
|
|
|
- Eugene Garrett
- 10 years ago
- Views:
Transcription
1 Final Project Presentation By Amritaansh Verma
2 Introduction I am making a Virtual Voice Assistant that understands and reacts to emotions The emotions I am targeting are Sarcasm, Happiness, Anger/Aggression and Sadness/Boredom
3 Why is it interesting? Most current virtual assistants like Apple s siri, Samsung s S-Voice, Vlingo etc. disregard the prosodic information of the user s speech Including this capability in Virtual Assistants will make them more life-like and would help them gain more wide spread acceptance
4 Is it really required? Do users really direct Anger/Sarcasm towards Virtual Assistants? Sometimes it is an inevitable, spontaneous natural human reaction
5 Project Description Two Main Components: 1. An emotion detection module (openear) 2. A simple voice assistant
6 Emotion Detection Module openear Toolkit Munich Open-Source Emotion and Affect Recognition Toolkit Open Source, free Provides efficient feature extraction algorithms implemented in C++, classfiers, and pre-trained models on well-k Behaves as an API, takes in user utterances as input and give its classification into the four basic emotional categories as output.
7 openear is ready to use Four ready-to-use classifier model-sets are provided for recognition of basic emotion categories and interest level I am planning to collect some speech data myself pertaining to the four basic emotional categories which arise in a typical interaction with a virtual assistant to train and test my module upon (Anger, Happiness, Sadness, and Sarcasm)
8 Built-in classifier model Sets Berlin Speech Emotion Database (EMO-DB), containing seven classes of basic emotions (Anger, Fear, Happiness, Disgust, Boredom, Sadness, Neutral) enterface corpus with six emotion categories (Anger, Disgust, Fear, Happiness, Sadness, and Surprise) ABC corpus with the classes (Aggressive, Cheerful, Intoxicated, Nervous, Neutral, Tired) Audio Visual Interest Corpus (AVIC) with labels for three levels of interest (-1: disinterest, 0: normal, and 1: high interest).
9
10 How it works? The voice assistant will record user speech (or pipeline real time speech data for faster incremental processing) and forwards it to the openear API to detect its emotional content Upon getting back the prosody information, the virtual assistant responds appropriately based on both the user utterance and the prosody information
11 How It works? Response User Utterance Voice Assistant Prosody Informaiton Utterance openear
12 Some Use Cases Sarcasm Example: Virtual Assistant: Did you mean ( says something which it interpreted incorrectly )? User: (Sarcastically/Angrily) Yes, that s exactly what I meant! Virtual Assistant (appropriate response): I am sorry that I misunderstood can you please provide me with that information again?
13 Some Use Cases Happiness Example: User: (Happily) Remind me to meet Roy tomorrow at 6. Virtual Assistant: I have set at reminder for 6 tomorrow, by the way you seem happy today, what s the good news?
14 Some Use Cases Anger Example: Virtual Assistant: Would you like me to call (Wrong person s name)? User: (Angrily) NO! Virtual Assistant: (Opens up phonebook for manual selection rather than repeating question as a response to anger detection)
15 Some Use Cases Sadness Example: User: (Sad/Bored) What s the weather like today?(or any other task) Virtual Assistant: The weather is, You sound sad today, do you want me to tell you a joke to cheer you up?
16 Evaluation I am planning to do a hands-on approach which involves testing out the application on a number of utterances (from a corpus of real users) belonging to different categories of emotions and see if it can properly classify and respond to them The users would be given a usability questionnaire to restrict the domain of utterances to be more relevant
17 Demonstration openear toolkit Virtual Assistant(Java Application)
18 Lessons Learnt from the Course The papers on Recognition & Understanding prosody helped me out on the basics Current systems are lacking in prosody recognition and response, thus the motivation
19 Future Work: I have to fine tune/debug the integration of my voice assistant and openear Figure out the right choice for the virtual Assistant: npceditor or AIML chatbot OR voicexml, right now I am testing using a simple java application Collect data pertaining to typical interactions of humans with virtual assistants and train openear on it for better accuracy Develop more use cases and implement them Port the application to an Android device (tricky??)
20 Open Questions? Some good follow-up projects might be extending the openear implementation itself to detect new emotions Making this a pluggable module which can be integrated into existing virtual assistants to give them the capability to recognize emotions
Emotion Detection from Speech
Emotion Detection from Speech 1. Introduction Although emotion detection from speech is a relatively new field of research, it has many potential applications. In human-computer or human-human interaction
Guide to Knowledge Elicitation Interviews
Guide to Knowledge Elicitation Interviews Purpose Gather knowledge from individuals in a manner that others will find useful. Description Knowledge interviews are conversations between people who have
New Beginnings: Managing the Emotional Impact of Diabetes Module 1
New Beginnings: Managing the Emotional Impact of Diabetes Module 1 ALEXIS (AW): Welcome to New Beginnings: Managing the Emotional Impact of Diabetes. MICHELLE (MOG): And I m Dr. Michelle Owens-Gary. AW:
Lesson One: Introduction to Customer Service
Student s Name: Date: / / Lesson One: Introduction to Customer Service 1. Customer service is a relatively complex puzzle. While engaging customers, we are attempting to offer services in a manner that
Recognition of Emotions in Interactive Voice Response Systems
Recognition of Emotions in Interactive Voice Response Systems Sherif Yacoub, Steve Simske, Xiaofan Lin, John Burns HP Laboratories Palo Alto HPL-2003-136 July 2 nd, 2003* E-mail: {sherif.yacoub, steven.simske,
Open-Source, Cross-Platform Java Tools Working Together on a Dialogue System
Open-Source, Cross-Platform Java Tools Working Together on a Dialogue System Oana NICOLAE Faculty of Mathematics and Computer Science, Department of Computer Science, University of Craiova, Romania [email protected]
Vocal Emotion Recognition
Vocal Emotion Recognition State-of-the-Art in Classification of Real-Life Emotions October 26, 2010 Stefan Steidl International Computer Science Institute (ICSI) at Berkeley, CA Overview 2 / 49 1 Different
1 Introduction. An Emotion-Aware Voice Portal
An Emotion-Aware Voice Portal Felix Burkhardt*, Markus van Ballegooy*, Roman Englert**, Richard Huber*** T-Systems International GmbH*, Deutsche Telekom Laboratories**, Sympalog Voice Solutions GmbH***
Ammar Ahmad Awan, Muhammad Aamir Saleem, Sungyoung Lee
Ofisina : Kinect based Virtual Office Assistant Ammar Ahmad Awan, Muhammad Aamir Saleem, Sungyoung Lee Dept. of Computer Engineering, Kyung Hee University, Yongin, South Korea {ammar, aamir, sylee}@oslab.khu.ac.kr
BPMN TRAINING COURSE:
BPMN TRAINING COURSE: INSTRUCTIONAL DESIGN DOCUMENT Julie Kenney BPMN Training Course: NEEDS ASSESSMENT: The following is the needs assessment for the BPMN training course: Training Goal: The SAP Business
Speech Analytics. Whitepaper
Speech Analytics Whitepaper This document is property of ASC telecom AG. All rights reserved. Distribution or copying of this document is forbidden without permission of ASC. 1 Introduction Hearing the
60 Daily Social Skills Lessons for the Intermediate Classroom (Grades 3-6)
60 Daily Social Skills Lessons for the Intermediate Classroom (Grades 3-6) Terms of Use: The materials within this manual were created to assist staff in the school-wide implementation of social skills
Speech Recognition Software Review
Contents 1 Abstract... 2 2 About Recognition Software... 3 3 How to Choose Recognition Software... 4 3.1 Standard Features of Recognition Software... 4 3.2 Definitions... 4 3.3 Models... 5 3.3.1 VoxForge...
Fuzzy Emotion Recognition in Natural Speech Dialogue
Fuzzy Emotion Recognition in Natural Speech Dialogue Anja Austermann University of Paderborn Paderborn, Germany [email protected] Natascha Esau, Lisa Kleinjohann and Bernd Kleinjohann C-LAB University
Automatic Evaluation Software for Contact Centre Agents voice Handling Performance
International Journal of Scientific and Research Publications, Volume 5, Issue 1, January 2015 1 Automatic Evaluation Software for Contact Centre Agents voice Handling Performance K.K.A. Nipuni N. Perera,
Their stories are tragic. A new chapter starts now. now.
! Their stories are tragic. A new chapter starts now. now.! Bully is a movie that tells powerful stories about children and their families dealing with extreme pain and tragic consequences related to bullying.
I want you to know how to use Android accessibility features with accessible instructional materials.
Hello, my name is John Paul Harris and I am the Wyoming AIM Clearinghouse project coordinator at the Wyoming Institute for Disabilities. Thank you for joining us for this webinar series focusing on technology
Are your employees: Miss Miller s Institute will train your employees in: huge benefits for your company.
CORPORATE SOLUTIONS My sincere goal as an educator is to strengthen and refine talent. At MMI we meet this goal through effective and engaging training tailored to the needs of each company. Miss Miller
Applying Machine Learning to Stock Market Trading Bryce Taylor
Applying Machine Learning to Stock Market Trading Bryce Taylor Abstract: In an effort to emulate human investors who read publicly available materials in order to make decisions about their investments,
Overview of PEAR and NIOST Measurement Tools. Tool HSA HSA-R SAYO-T APT SAYO-Y. Survey of Academic and Youth Outcomes: Teacher Version
Overview of PEAR and NIOST Measurement Tools Skill Development Program Quality Tool HSA HSA-R SAYO-T APT SAYO-Y What is it? Holistic Student Assessment: Diagnostic Tool Holistic Student Assessment: Retrospective
DESCRIBING OUR COMPETENCIES. new thinking at work
DESCRIBING OUR COMPETENCIES new thinking at work OUR COMPETENCIES - AT A GLANCE 2 PERSONAL EFFECTIVENESS Influencing Communicating Self-development Decision-making PROVIDING EXCELLENT CUSTOMER SERVICE
Applications of speech-to-text in customer service. Dr. Joachim Stegmann Deutsche Telekom AG, Laboratories
Applications of speech-to-text in customer service. Dr. Joachim Stegmann Deutsche Telekom AG, Laboratories Contents. 1. Motivation 2. Scenarios 2.1 Voice box / call-back 2.2 Quality management 3. Technology
Computer-Based Text- and Data Analysis Technologies and Applications. Mark Cieliebak 9.6.2015
Computer-Based Text- and Data Analysis Technologies and Applications Mark Cieliebak 9.6.2015 Data Scientist analyze Data Library use 2 About Me Mark Cieliebak + Software Engineer & Data Scientist + PhD
Specialty Answering Service. All rights reserved.
0 Contents 1 Introduction... 2 1.1 Types of Dialog Systems... 2 2 Dialog Systems in Contact Centers... 4 2.1 Automated Call Centers... 4 3 History... 3 4 Designing Interactive Dialogs with Structured Data...
Voice Driven Animation System
Voice Driven Animation System Zhijin Wang Department of Computer Science University of British Columbia Abstract The goal of this term project is to develop a voice driven animation system that could take
Module 3. Ways of Finding Answers to Research Questions
Module 3 Ways of Finding Answers to Research Questions Module 3: Ways of Finding Answers to Research Questions 3: 1 Module 3: Ways of Finding Answers to Research Questions (How are you going to answer
1. Introduction to Spoken Dialogue Systems
SoSe 2006 Projekt Sprachdialogsysteme 1. Introduction to Spoken Dialogue Systems Walther v. Hahn, Cristina Vertan {vhahn,vertan}@informatik.uni-hamburg.de Content What are Spoken dialogue systems? Types
Showing Interest and Expressing Appreciation
Showing Interest and Expressing Appreciation Starting Point 29 Showing Interest and Expressing Appreciation Section 1 Starting Point: Treating people well A. Warm Up: Discuss the following questions with
Emotion Recognition Using Blue Eyes Technology
Emotion Recognition Using Blue Eyes Technology Prof. Sudan Pawar Shubham Vibhute Ashish Patil Vikram More Gaurav Sane Abstract We cannot measure the world of science in terms of progress and fact of development.
Mobile Accessibility. Jan Richards Project Manager Inclusive Design Research Centre OCAD University
Mobile Accessibility Jan Richards Project Manager Inclusive Design Research Centre OCAD University Overview I work at the Inclusive Design Research Centre (IDRC). Located at OCAD University in downtown
GRAPHICAL USER INTERFACE, ACCESS, SEARCH AND REPORTING
MEDIA MONITORING AND ANALYSIS GRAPHICAL USER INTERFACE, ACCESS, SEARCH AND REPORTING Searchers Reporting Delivery (Player Selection) DATA PROCESSING AND CONTENT REPOSITORY ADMINISTRATION AND MANAGEMENT
An Application of Data Leakage Prevention System based on Biometrics Signals Recognition Technology
Vol.63 (NT 2014), pp.1-5 http://dx.doi.org/10.14257/astl.2014.63.01 An Application of Data Leakage Prevention System based on Biometrics Signals Recognition Technology Hojae Lee 1, Junkwon Jung 1, Taeyoung
Abstract. Avaya Solution & Interoperability Test Lab
Avaya Solution & Interoperability Test Lab Application Notes for LumenVox Automated Speech Recognizer, LumenVox Text-to-Speech Server and Call Progress Analysis with Avaya Aura Experience Portal Issue
A secure face tracking system
International Journal of Information & Computation Technology. ISSN 0974-2239 Volume 4, Number 10 (2014), pp. 959-964 International Research Publications House http://www. irphouse.com A secure face tracking
Global Pre-intermediate CEF descriptors
Global Pre-intermediate Listening A2 Unit Page I can understand what is said clearly, slowly and directly to me in simple everyday conversation; it is possible to make me understand, if the speaker can
Before we get started
Continuous Program Improvement (CPI) CPI Support Call Analyzing CPI Qualitative Data Wednesday February 11 th & Thursday February 12 th, 2009 ETR Associates BA Laris, Lisa Unti, Kris Freiwald, Gina Lepore
Smartphone Overview for the Blind and Visually Impaired
Smartphone Overview for the Blind and Visually Impaired The smartphone has become a primary technology for many people who are blind or have low vision. A smartphone provides a multi-purpose toolkit like
Predicting the Stock Market with News Articles
Predicting the Stock Market with News Articles Kari Lee and Ryan Timmons CS224N Final Project Introduction Stock market prediction is an area of extreme importance to an entire industry. Stock price is
Using coping statements to avoid common thinking traps
Using coping statements to avoid common thinking traps Did you know that your thoughts affect how you see yourself and the world around you? You may look at a situation one way, even though there are many
FPGA Implementation of Human Behavior Analysis Using Facial Image
RESEARCH ARTICLE OPEN ACCESS FPGA Implementation of Human Behavior Analysis Using Facial Image A.J Ezhil, K. Adalarasu Department of Electronics & Communication Engineering PSNA College of Engineering
White paper. Axis Video Analytics. Enhancing video surveillance efficiency
White paper Axis Video Analytics Enhancing video surveillance efficiency Table of contents 1. What is video analytics? 3 2. Why use video analytics? 3 2.1 Efficient use of manpower 3 2.2 Reduced network
Web page creation using VoiceXML as Slot filling task. Ravi M H
Web page creation using VoiceXML as Slot filling task Ravi M H Agenda > Voice XML > Slot filling task > Web page creation for user profile > Applications > Results and statistics > Language model > Future
Owner's Manual for Voice Control. The Convenient Alternative to Manual Control.
Owner's Manual for Voice Control. The Convenient Alternative to Manual Control. 2000 BMW AG Munich/Germany Reprinting, including excerpts, only with the written consent of BMW AG, Munich. Part number 01
Building a Question Classifier for a TREC-Style Question Answering System
Building a Question Classifier for a TREC-Style Question Answering System Richard May & Ari Steinberg Topic: Question Classification We define Question Classification (QC) here to be the task that, given
VoiceXML Tutorial. Part 1: VoiceXML Basics and Simple Forms
VoiceXML Tutorial Part 1: VoiceXML Basics and Simple Forms What is VoiceXML? XML Application W3C Standard Integration of Multiple Speech and Telephony Related Technologies Automated Speech Recognition
Porting VNC to Mobile Platforms
Porting VNC to Mobile Platforms Technical and Political Challenges Dr Andy Harter What is VNC? The VNC viewer application takes remote control of a device using the VNC server application on the device
ARTIFICIALLY INTELLIGENT COLLEGE ORIENTED VIRTUAL ASSISTANT
ARTIFICIALLY INTELLIGENT COLLEGE ORIENTED VIRTUAL ASSISTANT Vishmita Yashwant Shetty, Nikhil Uday Polekar, Sandipan Utpal Das, Prof. Suvarna Pansambal Department of Computer Engineering, Atharva College
Voice User Interfaces (CS4390/5390)
Revised Syllabus February 17, 2015 Voice User Interfaces (CS4390/5390) Spring 2015 Tuesday & Thursday 3:00 4:20, CCS Room 1.0204 Instructor: Nigel Ward Office: CCS 3.0408 Phone: 747-6827 E-mail [email protected]
zen Platform technical white paper
zen Platform technical white paper The zen Platform as Strategic Business Platform The increasing use of application servers as standard paradigm for the development of business critical applications meant
Dealing with problems and complaints
47 6 Dealing with problems and complaints STARTER Look at this list of things that customers complain about. Which three things annoy you the most as a customer? Compare your answers with a partner. a
wishpond EBOOK Easter: A Guide to
Easter: A Guide to Social Media Marketing for Businesses Table of Contents Chapter 1 Content Marketing on Social Networks During Easter Holidays 6 Chapter 2 Which Industries Capitalize Most on the Easter?
A New Age for Advertising Copy Testing Facial Expression Measurement Technology. Brian Sheehan Newhouse School, Syracuse University
A New Age for Advertising Copy Testing Facial Expression Measurement Technology Brian Sheehan Newhouse School, Syracuse University Age- old problems with copy testing Advertising copy testing has always
Thai Language Self Assessment
The following are can do statements in four skills: Listening, Speaking, Reading and Writing. Put a in front of each description that applies to your current Thai proficiency (.i.e. what you can do with
McGILL QUALITY OF LIFE QUESTIONNAIRE
McGILL QUALITY OF LIFE QUESTIONNAIRE STUDY IDENTIFICATION #: DATE: Instructions The questions in this questionnaire begin with a statement followed by two opposite answers. Numbers extend from one extreme
Automated News Item Categorization
Automated News Item Categorization Hrvoje Bacan, Igor S. Pandzic* Department of Telecommunications, Faculty of Electrical Engineering and Computing, University of Zagreb, Croatia {Hrvoje.Bacan,Igor.Pandzic}@fer.hr
Virtual Personal Assistant
Virtual Personal Assistant Peter Imire 1 and Peter Bednar 2 Abstract This report discusses ways in which new technology could be harnessed to create an intelligent Virtual Personal Assistant (VPA) with
I start work at 8:30. Unit aims. Getting started
I start work at 8:0 Unit aims In Unit, students learn about: Saying where you re from Reflecting and reaching Describing readiness Describing schedules Viewpoints: Working hours In business: Describe your
Communication Process
Welcome and Introductions Lesson 7 Communication Process Overview: This lesson teaches learners to define the elements of effective communication and its process. It will focus on communication as the
CASE STUDY. Trapeze Group (UK) Ltd. www.future-processing.com
CASE STUDY Trapeze Group (UK) Ltd TABLE OF CONTENTS #1 ABOUT THE CLIENT #2 OUR ROLE #3 EFFECTS OF OUR COOPERATION #4 BUSINESS PROBLEM THAT WE SOLVED #5 CHALLENGES #6 WHAT HAVE WE LEARNT? #7 PLANS FOR THE
American Gestures. A lesson for Elementary Students
American Gestures A lesson for Elementary Students Gestures Every culture has its own unique set of gestures and facial expression. Gestures and facial expressions are part of what is called non-verbal
Imagine It! ICEBREAKER:
ICEBREAKER: Imagine It! FOCUS: To develop creativity and increase participants comfort with acting in front of a group PURPOSE: To help participants relax before working on their public presentation skills
Virtual Patients: Assessment of Synthesized Versus Recorded Speech
Virtual Patients: Assessment of Synthesized Versus Recorded Speech Robert Dickerson 1, Kyle Johnsen 1, Andrew Raij 1, Benjamin Lok 1, Amy Stevens 2, Thomas Bernard 3, D. Scott Lind 3 1 Department of Computer
Kore Bots Platform Competitive Comparison Overview Kore Bots Platform Competitive Comparison Overview
Kore Bots Competitive Comparison Overview Kore Bots Competitive Comparison Overview 1 Kore Bots Competitive Comparison Overview Kore The intelligent Bots for the Enterprise Introduction Bots have officially
TRAINING NEEDS ANALYSIS
TRAINING NEEDS ANALYSIS WHAT IS A NEEDS ANALYSIS? It is a systematic means of determining what training programs are needed. Specifically, when you conduct a needs analysis, you Gather facts about training
About Sectra Communications
Panthon About Sectra Communications We provide secure communication solutions for European government authorities, defence departments and other critical functions of society. We have a solid core expertise
Communication levels. Levels of communication
Communication levels People have different ways of expressing their feelings. One person lets you see immediately how s/he feels in a particular situation, while it is much more difficult to detect in
Big Data and Opinion Mining: Challenges and Opportunities
Big Data and Opinion Mining: Challenges and Opportunities Dr. Nikolaos Korfiatis Director Frankfurt Big Data Lab JW Goethe University Frankfurt, Germany /~nkorf Agenda Opinion Mining and Sentiment Analysis
SIPAC. Signals and Data Identification, Processing, Analysis, and Classification
SIPAC Signals and Data Identification, Processing, Analysis, and Classification Framework for Mass Data Processing with Modules for Data Storage, Production and Configuration SIPAC key features SIPAC is
Chapter 13: Program Development and Programming Languages
15 th Edition Understanding Computers Today and Tomorrow Comprehensive Chapter 13: Program Development and Programming Languages Deborah Morley Charles S. Parker Copyright 2015 Cengage Learning Learning
Nonverbal Communication Human Communication Lecture 26
Nonverbal Communication Human Communication Lecture 26 Mar-14-11 Human Communication 1 1 Nonverbal Communication NVC can be communicated through gestures and touch (Haptic communication), by body language
interviewscribe User s Guide
interviewscribe User s Guide YANASE Inc 2012 Contents 1.Overview! 3 2.Prepare for transcribe! 4 2.1.Assign the audio file! 4 2.2.Playback Operation! 5 2.3.Adjust volume and sound quality! 6 2.4.Adjust
Setting Up Your Android Development Environment. For Mac OS X (10.6.8) v1.0. By GoNorthWest. 3 April 2012
Setting Up Your Android Development Environment For Mac OS X (10.6.8) v1.0 By GoNorthWest 3 April 2012 Setting up the Android development environment can be a bit well challenging if you don t have all
IVR PARTICIPANT MANUAL
IVR PARTICIPANT MANUAL TABLE OF CONTENTS Introduction I. Calling In Pg. 4 II. Using the System Pg. 5-13 A. Entering Your I.D. Number and Password B. Your Calling Record Information C. Entering Amount of
The Visualization Pipeline
The Visualization Pipeline Conceptual perspective Implementation considerations Algorithms used in the visualization Structure of the visualization applications Contents The focus is on presenting the
When Change Goes Wrong
When Change Goes Wrong T he financial cost of ineffectively managing change cannot be overlooked, especially in the current economic climate. Change is not the exception now days, but an ongoing inevitable
Diabetes and Emotions
monitor track manage A TRUEinsight Guide manage Diabetes and Emotions Understanding and Coping With the Emotional Aspects of Diabetes The importance of understanding your emotions A TRUEinsight Guide about
Text of Email Templates
Text of Email Templates After Sale Follow-up Congratulations on the sale of your property! While I'm sure you have many memories there, it's time to open a new chapter in your life. I want you to know
Bayesian Spam Filtering
Bayesian Spam Filtering Ahmed Obied Department of Computer Science University of Calgary [email protected] http://www.cpsc.ucalgary.ca/~amaobied Abstract. With the enormous amount of spam messages propagating
Alcohol and Drugs. 1. When was the first time you consumed alcohol/drugs? What form of substance did you take? Why did you do it?
Alcohol and Drugs 1. When was the first time you consumed alcohol/drugs? What form of substance did you take? Why did you do it? Were you pressured by your friends? Did it make you feel different? How
Emerging technologies - AJAX, VXML SOA in the travel industry
Emerging technologies - AJAX, VXML SOA in the travel industry Siva Kantamneni Executive Architect IBM s SOA Center Of Excellence email: [email protected] Tel: 813-356-4113 Contents Emerging technologies
Introduction Purpose...vii Rationale...xiii How to Use this Book...x Process Essentials...xi
T A B L E O F C O N T E N T S Introduction Purpose...vii Rationale...xiii How to Use this Book...x Process Essentials...xi Lesson 1 What is an Impulse? What is Impulse Control?...1 Reproducible Sheets:
FiliText: A Filipino Hands-Free Text Messaging Application
FiliText: A Filipino Hands-Free Text Messaging Application Jerrick Chua, Unisse Chua, Cesar de Padua, Janelle Isis Tan, Mr. Danny Cheng College of Computer Studies De La Salle University - Manila 1401
A Functional Approach to Functional Analysis. Carla Miller
A Functional Approach to Functional Analysis Carla Miller Why are we here? What brings us to a session on analyzing behavior? What are we hoping to learn? What do we want to walk away with? Functional
Prediction of Stock Market Shift using Sentiment Analysis of Twitter Feeds, Clustering and Ranking
382 Prediction of Stock Market Shift using Sentiment Analysis of Twitter Feeds, Clustering and Ranking 1 Tejas Sathe, 2 Siddhartha Gupta, 3 Shreya Nair, 4 Sukhada Bhingarkar 1,2,3,4 Dept. of Computer Engineering
An Introduction to VoiceXML
An Introduction to VoiceXML ART on Dialogue Models and Dialogue Systems François Mairesse University of Sheffield [email protected] http://www.dcs.shef.ac.uk/~francois Outline What is it? Why
