SlideShare a Scribd company logo
Sentiment-Driven Financial Intelligence
By John Liu, Ph.D, CFA
1
• Introduction
• Financial Intelligence
• Behavioral Approach
• Key Takeaways
• Questions
2/9/2017 2
2/9/2017 3
Machine Learning
platform that
understands
human
communication
Nashville
Washington
New York
London
Goldman Sachs
Credit Suisse
In-Q-Tel
Silver Lake
(individuals)
National Security
Financial Services
Health Analytics
Data Science
CONFIDENTIAL 3
DIGITAL REASONING |
CONFIDENTIAL
Prepared Exclusively for
Intel Capital
Digital Reasoning
Trusted Cognitive Computing For A Better World
DR Platform
2/9/2017 4
• Scalable platform designed to analyze human communications
What is Financial Intelligence?
2/9/2017 5
Customer
Insight
Market
Intelligence
Investment
Research
Risk &
Compliance
Predict client interests
and behavior from
communications and
interactions
Uncover investment
opportunities through
insights derived from
public and private
data
Extract key market
themes and monitor
risk metrics from
structured and
unstructured data
Monitor AML, SAR,
misconduct,
manipulation and
unauthorized trading,
trade reconstruction
Customer Insight
• Goal: leverage client communications to predict client
preferences and behavior, extract client holdings
• CRM data, emails, documents, phone calls, chat
• Example:
• Banking chat mining:
2/9/2017 6
*
*
Bid/Offer
* *
Financial Product Financial Product
*
Bid/Offer
*
*
*
Financial Entity
Financial Benchmark
Financial Benchmark
Financial Benchmark Financial Model Financial Benchmark Bid/Offer
*
Financial Level
Financial Benchmark
** *
*
Risk & Compliance
• Goal: Monitor AML, SAR, misconduct, manipulation and
unauthorized trading, trade reconstruction
2/9/2017 7
Electronic Communications Surveillance
FX Rate
Manipulation
• Reveal collusion and
market manipulation
• "Quid-pro-
quo” exchanges
• Clustered Bid/Ask
quotes
• Order execution
around the benchmark
• Indentify trading
abuse
• Deal related
language
• Abusive/dirty
references
• Improper placement
and execution
Wall Cross Violations
• Uncover insider
trading
• M & A terminology
• Personal trade
execution
• Discussing
Companies on
Restricted list
• Email from/to
sensitive countries
• Bribery & gift
language
• Presence of
attachments
• Deal related language
& order execution
• Use public information
to enhance KYC profiles
• Email to/from
economically sanctioned
countries
• Deal related language
& order execution
• Analyze wire instruction
fields for hidden risks
Conduct Risk / Anti-Bribery Anti-Money LaunderingUnauthorized Trading
Useful Analyst Sentiment?
“The stable outlook reflects our expectations that Apple will
continue to maintain and defend its strong market position
in mobile devices and tablets despite seeing an contraction
in its addressable market.”
2/9/2017 8
Source: Yahoo
Investment Intelligence
• Goal: identify persistent sources of alpha through
sentiment analysis
• Key is “persistent” as sentiment is widely viewed as
transitory and unstable over long-term
• Current approaches incorporate emotional, affect
psychology and intent models that aggregate individual
sentiment to identify short-term group trends
• Incorporate models of investor behavior?
2/9/2017 9
Alpha: the active return above that of a
passive benchmark
2/9/2017 10
Investments
& Finance
Behavioral
Science
Computer
Science Sentiment
Analysis
Algorithmic
Trading
Behavioral
Economics
Cognitive
Alpha
Investment
Intelligence
Traditional vs. Behavioral
Economics
Traditional
• Perfect rationality
• Expected utility theory
• Risk aversion
• Efficient market
hypothesis
• CAPM and APT
Behavioral
• Bounded rationality
• Prospect theory
• Loss aversion
• Adaptive market
hypothesis
• Behavioral Asset Pricing
• Market anomalies
2/9/2017 11
Empirical evidence diverges greatly from classic theory
Why do market anomalies exist?
Drivers of Anomalies
Cognitive Biases
• Conservatism
• Overweight Bayesian priors
• Confirmation
• Selection bias
• Gambler’s Fallacy
• Mean reversion
• Representativeness
• Overweight recent evidence
• Availability
• Familiarity premium
Emotional Biases
• Loss aversion
• Pain > Gain
• Overconfidence
• Underestimate risk
• Endowment
• Sentimental value premium
• Status-Quo
• Regret-aversion
• Herd behavior
2/9/2017 12
Anomalies are drivers of excess return (alpha)
Studies of Market Anomalies
2/9/2017 13
Year Authors Anomaly
1968 Ball & Brown Earnings announcement effect
1975 Haugen & Heins Low volatility effect
1976 Rozeff &Kinney January effect
1977 Basu Low P/E effect
1981 Gibbons &Hess Monday effect
1981 Shiller Excess volatility effect
1981 Banz Size effect
1985 Rosenberg, Reid, Lanstein Value effect
1987 DeBondt & Thaler Over-reaction to bad news
1993 Jegadeesh & Titman Momentum investing
Quantitative Behavioral Finance
• Behavioral asset pricing model:
• This is a linear factor model that includes behavioral
bias sentiment factors
• Exposure to behavioral biases given by weights gi
2/9/2017 14
E r[ ] = rf + bj
j=1
k
å (rj -rf )+ gi
i=1
m
å bi
Expected
Return
Risk-free
Rate
Factor
Beta
Bias
Sentiment
Premium
Risk
Factor
Premiu
m
In Search of Alpha
2/9/2017 15
NLP
Sentiment
Analysis
Behavioral
Bias Factors
Factor
Portfolios
Alpha
1. Context-based sentiment analysis to extract features of
behavioral biases observed in investor commentary
2. Combine these features with structured data to
formulate behavioral bias factors
3. Use the factors to fit regression models for asset returns
4. Construct factor portfolios to monetize market
anomalies by overweight/underweight exposure to
specific behavioral biases
Deep-Learning Sentiment Pipeline
NLP Pipeline
Our Methodology at DR
• Data: public and private investor commentary
2/9/2017 16
TOK
docs
POS
Shallow
Parse
Extract
or
NER
W2V LRDBOWDM Agg
Synthesys Studio
Factor
Constructio
n
Facts
Context
Some Results
Standard Fama-French model (MKT, SMB, HML)
regression with two behavioral factors (UMO, ITF):
2/9/2017 17
Factor
Premium
Standard
Deviation
P-value
Sharpe
Ratio
Corr. Vs.
MKT
MKT 0.47 4.66 0.0262 0.10 1.00
SMB 0.19 3.16 0.1942 0.06 0.28
HML 0.42 3.04 0.0022 0.14 -0.33
UMO 0.32 1.57 0.0001 0.20 -0.12
ITF 0.91 3.06 0.0001 0.30 -0.50
Sun 2014
Key Takeaways
• Intersection between sentiment analysis and behavioral
economics is opening up new opportunities for
investment alpha generation
• DR’s context-based sentiment analysis methodology is
useful for extracting behavioral bias features from public
and private data
• Behavioral bias feature extraction yields factor portfolios
that can take advantage of anomalies manifested from
these biases
• Open research field
2/9/2017 18
Final Words
• We at DR are actively exploring neural embedding and
deep learning methods to enhance feature extraction of
behavioral biases
• Toolbox: Synthesys Studio
• Text analytics
• Model training
• Open platform
• Q4 2015 release
• Freeware
2/9/2017 19
Investments
& Finance
Behavioral
Science
Computer
Science Sentiment
Analysis
Algorithmic
Trading
Behavioral
Economic
s
Cognitive
Alpha

More Related Content

Viewers also liked

A Way Forward
A Way ForwardA Way Forward
A Way ForwardJohn Liu
 
Naive Bayes for the Superbowl
Naive Bayes for the SuperbowlNaive Bayes for the Superbowl
Naive Bayes for the SuperbowlJohn Liu
 
My Vote My Right Campaign
My Vote My Right CampaignMy Vote My Right Campaign
My Vote My Right CampaignNagarajan M
 
My vote,my right awareness ppt
My vote,my right   awareness pptMy vote,my right   awareness ppt
My vote,my right awareness pptZia Nomani
 
Voting, Your Right, Your Responsibility
Voting, Your Right, Your ResponsibilityVoting, Your Right, Your Responsibility
Voting, Your Right, Your ResponsibilitymsdMel46
 
Voting powerpoint
Voting powerpointVoting powerpoint
Voting powerpointyaisagomez
 
Neural Networks in the Wild: Handwriting Recognition
Neural Networks in the Wild: Handwriting RecognitionNeural Networks in the Wild: Handwriting Recognition
Neural Networks in the Wild: Handwriting RecognitionJohn Liu
 
Artificial Neural Network / Hand written character Recognition
Artificial Neural Network / Hand written character RecognitionArtificial Neural Network / Hand written character Recognition
Artificial Neural Network / Hand written character RecognitionDr. Uday Saikia
 
Handwritten character recognition using artificial neural network
Handwritten character recognition using artificial neural networkHandwritten character recognition using artificial neural network
Handwritten character recognition using artificial neural networkHarshana Madusanka Jayamaha
 
Machine Learning and Real-World Applications
Machine Learning and Real-World ApplicationsMachine Learning and Real-World Applications
Machine Learning and Real-World ApplicationsMachinePulse
 
Hand Written Character Recognition Using Neural Networks
Hand Written Character Recognition Using Neural Networks Hand Written Character Recognition Using Neural Networks
Hand Written Character Recognition Using Neural Networks Chiranjeevi Adi
 

Viewers also liked (12)

A Way Forward
A Way ForwardA Way Forward
A Way Forward
 
Naive Bayes for the Superbowl
Naive Bayes for the SuperbowlNaive Bayes for the Superbowl
Naive Bayes for the Superbowl
 
My Vote My Right Campaign
My Vote My Right CampaignMy Vote My Right Campaign
My Vote My Right Campaign
 
My vote,my right awareness ppt
My vote,my right   awareness pptMy vote,my right   awareness ppt
My vote,my right awareness ppt
 
Voting, Your Right, Your Responsibility
Voting, Your Right, Your ResponsibilityVoting, Your Right, Your Responsibility
Voting, Your Right, Your Responsibility
 
Voting powerpoint
Voting powerpointVoting powerpoint
Voting powerpoint
 
Neural Networks in the Wild: Handwriting Recognition
Neural Networks in the Wild: Handwriting RecognitionNeural Networks in the Wild: Handwriting Recognition
Neural Networks in the Wild: Handwriting Recognition
 
Artificial Neural Network / Hand written character Recognition
Artificial Neural Network / Hand written character RecognitionArtificial Neural Network / Hand written character Recognition
Artificial Neural Network / Hand written character Recognition
 
Handwritten character recognition using artificial neural network
Handwritten character recognition using artificial neural networkHandwritten character recognition using artificial neural network
Handwritten character recognition using artificial neural network
 
Machine Learning and Real-World Applications
Machine Learning and Real-World ApplicationsMachine Learning and Real-World Applications
Machine Learning and Real-World Applications
 
Text Detection and Recognition
Text Detection and RecognitionText Detection and Recognition
Text Detection and Recognition
 
Hand Written Character Recognition Using Neural Networks
Hand Written Character Recognition Using Neural Networks Hand Written Character Recognition Using Neural Networks
Hand Written Character Recognition Using Neural Networks
 

Similar to Sentiment-Driven Financial Intelligence

Behavioral Analytics for Financial Intelligence
Behavioral Analytics for Financial IntelligenceBehavioral Analytics for Financial Intelligence
Behavioral Analytics for Financial IntelligenceJohn Liu
 
Machine learning for customer classification
Machine learning for customer classificationMachine learning for customer classification
Machine learning for customer classificationAndrew Barnes
 
Behavioral Analysis for Financial Crime Threat Mitigation
Behavioral Analysis for Financial Crime Threat MitigationBehavioral Analysis for Financial Crime Threat Mitigation
Behavioral Analysis for Financial Crime Threat Mitigationaccenture
 
Big Data Analytics Summit - April, 2014
Big Data Analytics Summit - April, 2014Big Data Analytics Summit - April, 2014
Big Data Analytics Summit - April, 2014shankar_radhakrishnan
 
Webinar Presentation- Accelerating Growth through Big Data and Analytics
Webinar Presentation- Accelerating Growth through Big Data and AnalyticsWebinar Presentation- Accelerating Growth through Big Data and Analytics
Webinar Presentation- Accelerating Growth through Big Data and AnalyticsImpetus Technologies
 
Big data: What's the big deal?
Big data: What's the big deal?Big data: What's the big deal?
Big data: What's the big deal?Penser
 
Connecting the dots
Connecting the dotsConnecting the dots
Connecting the dotsTod Frincke
 
Data Science by Chappuis Halder & Co.
Data Science by Chappuis Halder & Co.Data Science by Chappuis Halder & Co.
Data Science by Chappuis Halder & Co.Genest Benoit
 
Innovative Data Leveraging for Procurement Analytics
Innovative Data Leveraging for Procurement AnalyticsInnovative Data Leveraging for Procurement Analytics
Innovative Data Leveraging for Procurement AnalyticsTejari
 
AMM - Full Material.pdf
AMM - Full Material.pdfAMM - Full Material.pdf
AMM - Full Material.pdfjillchanura220
 
1101AIFQA07_AI_in_Finance_and_Quantitative_Analysis.pptx
1101AIFQA07_AI_in_Finance_and_Quantitative_Analysis.pptx1101AIFQA07_AI_in_Finance_and_Quantitative_Analysis.pptx
1101AIFQA07_AI_in_Finance_and_Quantitative_Analysis.pptxhakanemekci
 
Oversear market research
Oversear market researchOversear market research
Oversear market researchStudsPlanet.com
 
Data intelligence for fintech 2019
Data intelligence for fintech 2019Data intelligence for fintech 2019
Data intelligence for fintech 2019iECARUS
 
Capturing_the_data_and_advanced_analytics_opportunity_in_capital_markets_2017...
Capturing_the_data_and_advanced_analytics_opportunity_in_capital_markets_2017...Capturing_the_data_and_advanced_analytics_opportunity_in_capital_markets_2017...
Capturing_the_data_and_advanced_analytics_opportunity_in_capital_markets_2017...ShadiTraboulsi1
 
Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?SAS Canada
 
Competitive Intelligence
Competitive IntelligenceCompetitive Intelligence
Competitive IntelligenceElijah Ezendu
 
Lecture 1 Competitive Intelligence.pptx
Lecture 1 Competitive Intelligence.pptxLecture 1 Competitive Intelligence.pptx
Lecture 1 Competitive Intelligence.pptxRavneet Singh Bhandari
 
A Study on Empirical Testing of Capital Asset Pricing Model
A Study on Empirical Testing of Capital Asset Pricing ModelA Study on Empirical Testing of Capital Asset Pricing Model
A Study on Empirical Testing of Capital Asset Pricing ModelProjects Kart
 

Similar to Sentiment-Driven Financial Intelligence (20)

Behavioral Analytics for Financial Intelligence
Behavioral Analytics for Financial IntelligenceBehavioral Analytics for Financial Intelligence
Behavioral Analytics for Financial Intelligence
 
Abstract
AbstractAbstract
Abstract
 
Machine learning for customer classification
Machine learning for customer classificationMachine learning for customer classification
Machine learning for customer classification
 
Behavioral Analysis for Financial Crime Threat Mitigation
Behavioral Analysis for Financial Crime Threat MitigationBehavioral Analysis for Financial Crime Threat Mitigation
Behavioral Analysis for Financial Crime Threat Mitigation
 
Big Data Analytics Summit - April, 2014
Big Data Analytics Summit - April, 2014Big Data Analytics Summit - April, 2014
Big Data Analytics Summit - April, 2014
 
Webinar Presentation- Accelerating Growth through Big Data and Analytics
Webinar Presentation- Accelerating Growth through Big Data and AnalyticsWebinar Presentation- Accelerating Growth through Big Data and Analytics
Webinar Presentation- Accelerating Growth through Big Data and Analytics
 
Big data: What's the big deal?
Big data: What's the big deal?Big data: What's the big deal?
Big data: What's the big deal?
 
Connecting the dots
Connecting the dotsConnecting the dots
Connecting the dots
 
Data Science by Chappuis Halder & Co.
Data Science by Chappuis Halder & Co.Data Science by Chappuis Halder & Co.
Data Science by Chappuis Halder & Co.
 
Innovative Data Leveraging for Procurement Analytics
Innovative Data Leveraging for Procurement AnalyticsInnovative Data Leveraging for Procurement Analytics
Innovative Data Leveraging for Procurement Analytics
 
1000 track1 Ramirez
1000 track1 Ramirez1000 track1 Ramirez
1000 track1 Ramirez
 
AMM - Full Material.pdf
AMM - Full Material.pdfAMM - Full Material.pdf
AMM - Full Material.pdf
 
1101AIFQA07_AI_in_Finance_and_Quantitative_Analysis.pptx
1101AIFQA07_AI_in_Finance_and_Quantitative_Analysis.pptx1101AIFQA07_AI_in_Finance_and_Quantitative_Analysis.pptx
1101AIFQA07_AI_in_Finance_and_Quantitative_Analysis.pptx
 
Oversear market research
Oversear market researchOversear market research
Oversear market research
 
Data intelligence for fintech 2019
Data intelligence for fintech 2019Data intelligence for fintech 2019
Data intelligence for fintech 2019
 
Capturing_the_data_and_advanced_analytics_opportunity_in_capital_markets_2017...
Capturing_the_data_and_advanced_analytics_opportunity_in_capital_markets_2017...Capturing_the_data_and_advanced_analytics_opportunity_in_capital_markets_2017...
Capturing_the_data_and_advanced_analytics_opportunity_in_capital_markets_2017...
 
Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?
 
Competitive Intelligence
Competitive IntelligenceCompetitive Intelligence
Competitive Intelligence
 
Lecture 1 Competitive Intelligence.pptx
Lecture 1 Competitive Intelligence.pptxLecture 1 Competitive Intelligence.pptx
Lecture 1 Competitive Intelligence.pptx
 
A Study on Empirical Testing of Capital Asset Pricing Model
A Study on Empirical Testing of Capital Asset Pricing ModelA Study on Empirical Testing of Capital Asset Pricing Model
A Study on Empirical Testing of Capital Asset Pricing Model
 

More from John Liu

Kubeflow and Data Science in Kubernetes
Kubeflow and Data Science in KubernetesKubeflow and Data Science in Kubernetes
Kubeflow and Data Science in KubernetesJohn Liu
 
Artificial Intelligence As a Service
Artificial Intelligence As a ServiceArtificial Intelligence As a Service
Artificial Intelligence As a ServiceJohn Liu
 
Machine Learning with Small Data
Machine Learning with Small DataMachine Learning with Small Data
Machine Learning with Small DataJohn Liu
 
Data Analytics in Computational Law
Data Analytics in Computational LawData Analytics in Computational Law
Data Analytics in Computational LawJohn Liu
 
AI & Machine Learning: Business Transformation
AI & Machine Learning: Business TransformationAI & Machine Learning: Business Transformation
AI & Machine Learning: Business TransformationJohn Liu
 
Social Network Analysis for Healthcare
Social Network Analysis for HealthcareSocial Network Analysis for Healthcare
Social Network Analysis for HealthcareJohn Liu
 
Healthy Competition: How Adversarial Reasoning is Leading the Next Wave of In...
Healthy Competition: How Adversarial Reasoning is Leading the Next Wave of In...Healthy Competition: How Adversarial Reasoning is Leading the Next Wave of In...
Healthy Competition: How Adversarial Reasoning is Leading the Next Wave of In...John Liu
 
I2P and the Dark Web
I2P and the Dark WebI2P and the Dark Web
I2P and the Dark WebJohn Liu
 
Beyond Machine Learning: The New Generation of Learning Algorithms Coming to ...
Beyond Machine Learning: The New Generation of Learning Algorithms Coming to ...Beyond Machine Learning: The New Generation of Learning Algorithms Coming to ...
Beyond Machine Learning: The New Generation of Learning Algorithms Coming to ...John Liu
 
Role of Data Science in ERM @ Nashville Analytics Summit Sep 2014
Role of Data Science in ERM @ Nashville Analytics Summit Sep 2014Role of Data Science in ERM @ Nashville Analytics Summit Sep 2014
Role of Data Science in ERM @ Nashville Analytics Summit Sep 2014John Liu
 

More from John Liu (11)

Kubeflow and Data Science in Kubernetes
Kubeflow and Data Science in KubernetesKubeflow and Data Science in Kubernetes
Kubeflow and Data Science in Kubernetes
 
Artificial Intelligence As a Service
Artificial Intelligence As a ServiceArtificial Intelligence As a Service
Artificial Intelligence As a Service
 
Machine Learning with Small Data
Machine Learning with Small DataMachine Learning with Small Data
Machine Learning with Small Data
 
Data Analytics in Computational Law
Data Analytics in Computational LawData Analytics in Computational Law
Data Analytics in Computational Law
 
AI & Machine Learning: Business Transformation
AI & Machine Learning: Business TransformationAI & Machine Learning: Business Transformation
AI & Machine Learning: Business Transformation
 
DeepREM
DeepREMDeepREM
DeepREM
 
Social Network Analysis for Healthcare
Social Network Analysis for HealthcareSocial Network Analysis for Healthcare
Social Network Analysis for Healthcare
 
Healthy Competition: How Adversarial Reasoning is Leading the Next Wave of In...
Healthy Competition: How Adversarial Reasoning is Leading the Next Wave of In...Healthy Competition: How Adversarial Reasoning is Leading the Next Wave of In...
Healthy Competition: How Adversarial Reasoning is Leading the Next Wave of In...
 
I2P and the Dark Web
I2P and the Dark WebI2P and the Dark Web
I2P and the Dark Web
 
Beyond Machine Learning: The New Generation of Learning Algorithms Coming to ...
Beyond Machine Learning: The New Generation of Learning Algorithms Coming to ...Beyond Machine Learning: The New Generation of Learning Algorithms Coming to ...
Beyond Machine Learning: The New Generation of Learning Algorithms Coming to ...
 
Role of Data Science in ERM @ Nashville Analytics Summit Sep 2014
Role of Data Science in ERM @ Nashville Analytics Summit Sep 2014Role of Data Science in ERM @ Nashville Analytics Summit Sep 2014
Role of Data Science in ERM @ Nashville Analytics Summit Sep 2014
 

Recently uploaded

Business update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMIBusiness update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMIAlejandraGmez176757
 
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单ewymefz
 
Criminal IP - Threat Hunting Webinar.pdf
Criminal IP - Threat Hunting Webinar.pdfCriminal IP - Threat Hunting Webinar.pdf
Criminal IP - Threat Hunting Webinar.pdfCriminal IP
 
一比一原版(QU毕业证)皇后大学毕业证成绩单
一比一原版(QU毕业证)皇后大学毕业证成绩单一比一原版(QU毕业证)皇后大学毕业证成绩单
一比一原版(QU毕业证)皇后大学毕业证成绩单enxupq
 
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单ewymefz
 
Investigate & Recover / StarCompliance.io / Crypto_Crimes
Investigate & Recover / StarCompliance.io / Crypto_CrimesInvestigate & Recover / StarCompliance.io / Crypto_Crimes
Investigate & Recover / StarCompliance.io / Crypto_CrimesStarCompliance.io
 
Professional Data Engineer Certification Exam Guide  _  Learn  _  Google Clou...
Professional Data Engineer Certification Exam Guide  _  Learn  _  Google Clou...Professional Data Engineer Certification Exam Guide  _  Learn  _  Google Clou...
Professional Data Engineer Certification Exam Guide  _  Learn  _  Google Clou...Domenico Conte
 
Q1’2024 Update: MYCI’s Leap Year Rebound
Q1’2024 Update: MYCI’s Leap Year ReboundQ1’2024 Update: MYCI’s Leap Year Rebound
Q1’2024 Update: MYCI’s Leap Year ReboundOppotus
 
Computer Presentation.pptx ecommerce advantage s
Computer Presentation.pptx ecommerce advantage sComputer Presentation.pptx ecommerce advantage s
Computer Presentation.pptx ecommerce advantage sMAQIB18
 
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单ukgaet
 
How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?DOT TECH
 
社内勉強会資料_LLM Agents                              .
社内勉強会資料_LLM Agents                              .社内勉強会資料_LLM Agents                              .
社内勉強会資料_LLM Agents                              .NABLAS株式会社
 
Using PDB Relocation to Move a Single PDB to Another Existing CDB
Using PDB Relocation to Move a Single PDB to Another Existing CDBUsing PDB Relocation to Move a Single PDB to Another Existing CDB
Using PDB Relocation to Move a Single PDB to Another Existing CDBAlireza Kamrani
 
Opendatabay - Open Data Marketplace.pptx
Opendatabay - Open Data Marketplace.pptxOpendatabay - Open Data Marketplace.pptx
Opendatabay - Open Data Marketplace.pptxOpendatabay
 
standardisation of garbhpala offhgfffghh
standardisation of garbhpala offhgfffghhstandardisation of garbhpala offhgfffghh
standardisation of garbhpala offhgfffghhArpitMalhotra16
 
一比一原版(ArtEZ毕业证)ArtEZ艺术学院毕业证成绩单
一比一原版(ArtEZ毕业证)ArtEZ艺术学院毕业证成绩单一比一原版(ArtEZ毕业证)ArtEZ艺术学院毕业证成绩单
一比一原版(ArtEZ毕业证)ArtEZ艺术学院毕业证成绩单vcaxypu
 
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...correoyaya
 
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单ewymefz
 
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPsWebinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPsCEPTES Software Inc
 

Recently uploaded (20)

Business update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMIBusiness update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMI
 
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
一比一原版(IIT毕业证)伊利诺伊理工大学毕业证成绩单
 
Criminal IP - Threat Hunting Webinar.pdf
Criminal IP - Threat Hunting Webinar.pdfCriminal IP - Threat Hunting Webinar.pdf
Criminal IP - Threat Hunting Webinar.pdf
 
一比一原版(QU毕业证)皇后大学毕业证成绩单
一比一原版(QU毕业证)皇后大学毕业证成绩单一比一原版(QU毕业证)皇后大学毕业证成绩单
一比一原版(QU毕业证)皇后大学毕业证成绩单
 
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
一比一原版(UPenn毕业证)宾夕法尼亚大学毕业证成绩单
 
Investigate & Recover / StarCompliance.io / Crypto_Crimes
Investigate & Recover / StarCompliance.io / Crypto_CrimesInvestigate & Recover / StarCompliance.io / Crypto_Crimes
Investigate & Recover / StarCompliance.io / Crypto_Crimes
 
Professional Data Engineer Certification Exam Guide  _  Learn  _  Google Clou...
Professional Data Engineer Certification Exam Guide  _  Learn  _  Google Clou...Professional Data Engineer Certification Exam Guide  _  Learn  _  Google Clou...
Professional Data Engineer Certification Exam Guide  _  Learn  _  Google Clou...
 
Q1’2024 Update: MYCI’s Leap Year Rebound
Q1’2024 Update: MYCI’s Leap Year ReboundQ1’2024 Update: MYCI’s Leap Year Rebound
Q1’2024 Update: MYCI’s Leap Year Rebound
 
Computer Presentation.pptx ecommerce advantage s
Computer Presentation.pptx ecommerce advantage sComputer Presentation.pptx ecommerce advantage s
Computer Presentation.pptx ecommerce advantage s
 
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
一比一原版(UVic毕业证)维多利亚大学毕业证成绩单
 
How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?
 
社内勉強会資料_LLM Agents                              .
社内勉強会資料_LLM Agents                              .社内勉強会資料_LLM Agents                              .
社内勉強会資料_LLM Agents                              .
 
Using PDB Relocation to Move a Single PDB to Another Existing CDB
Using PDB Relocation to Move a Single PDB to Another Existing CDBUsing PDB Relocation to Move a Single PDB to Another Existing CDB
Using PDB Relocation to Move a Single PDB to Another Existing CDB
 
Opendatabay - Open Data Marketplace.pptx
Opendatabay - Open Data Marketplace.pptxOpendatabay - Open Data Marketplace.pptx
Opendatabay - Open Data Marketplace.pptx
 
standardisation of garbhpala offhgfffghh
standardisation of garbhpala offhgfffghhstandardisation of garbhpala offhgfffghh
standardisation of garbhpala offhgfffghh
 
一比一原版(ArtEZ毕业证)ArtEZ艺术学院毕业证成绩单
一比一原版(ArtEZ毕业证)ArtEZ艺术学院毕业证成绩单一比一原版(ArtEZ毕业证)ArtEZ艺术学院毕业证成绩单
一比一原版(ArtEZ毕业证)ArtEZ艺术学院毕业证成绩单
 
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
Innovative Methods in Media and Communication Research by Sebastian Kubitschk...
 
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
 
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPsWebinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
 
Slip-and-fall Injuries: Top Workers' Comp Claims
Slip-and-fall Injuries: Top Workers' Comp ClaimsSlip-and-fall Injuries: Top Workers' Comp Claims
Slip-and-fall Injuries: Top Workers' Comp Claims
 

Sentiment-Driven Financial Intelligence

  • 2. • Introduction • Financial Intelligence • Behavioral Approach • Key Takeaways • Questions 2/9/2017 2
  • 3. 2/9/2017 3 Machine Learning platform that understands human communication Nashville Washington New York London Goldman Sachs Credit Suisse In-Q-Tel Silver Lake (individuals) National Security Financial Services Health Analytics Data Science CONFIDENTIAL 3 DIGITAL REASONING | CONFIDENTIAL Prepared Exclusively for Intel Capital Digital Reasoning Trusted Cognitive Computing For A Better World
  • 4. DR Platform 2/9/2017 4 • Scalable platform designed to analyze human communications
  • 5. What is Financial Intelligence? 2/9/2017 5 Customer Insight Market Intelligence Investment Research Risk & Compliance Predict client interests and behavior from communications and interactions Uncover investment opportunities through insights derived from public and private data Extract key market themes and monitor risk metrics from structured and unstructured data Monitor AML, SAR, misconduct, manipulation and unauthorized trading, trade reconstruction
  • 6. Customer Insight • Goal: leverage client communications to predict client preferences and behavior, extract client holdings • CRM data, emails, documents, phone calls, chat • Example: • Banking chat mining: 2/9/2017 6 * * Bid/Offer * * Financial Product Financial Product * Bid/Offer * * * Financial Entity Financial Benchmark Financial Benchmark Financial Benchmark Financial Model Financial Benchmark Bid/Offer * Financial Level Financial Benchmark ** * *
  • 7. Risk & Compliance • Goal: Monitor AML, SAR, misconduct, manipulation and unauthorized trading, trade reconstruction 2/9/2017 7 Electronic Communications Surveillance FX Rate Manipulation • Reveal collusion and market manipulation • "Quid-pro- quo” exchanges • Clustered Bid/Ask quotes • Order execution around the benchmark • Indentify trading abuse • Deal related language • Abusive/dirty references • Improper placement and execution Wall Cross Violations • Uncover insider trading • M & A terminology • Personal trade execution • Discussing Companies on Restricted list • Email from/to sensitive countries • Bribery & gift language • Presence of attachments • Deal related language & order execution • Use public information to enhance KYC profiles • Email to/from economically sanctioned countries • Deal related language & order execution • Analyze wire instruction fields for hidden risks Conduct Risk / Anti-Bribery Anti-Money LaunderingUnauthorized Trading
  • 8. Useful Analyst Sentiment? “The stable outlook reflects our expectations that Apple will continue to maintain and defend its strong market position in mobile devices and tablets despite seeing an contraction in its addressable market.” 2/9/2017 8 Source: Yahoo
  • 9. Investment Intelligence • Goal: identify persistent sources of alpha through sentiment analysis • Key is “persistent” as sentiment is widely viewed as transitory and unstable over long-term • Current approaches incorporate emotional, affect psychology and intent models that aggregate individual sentiment to identify short-term group trends • Incorporate models of investor behavior? 2/9/2017 9 Alpha: the active return above that of a passive benchmark
  • 10. 2/9/2017 10 Investments & Finance Behavioral Science Computer Science Sentiment Analysis Algorithmic Trading Behavioral Economics Cognitive Alpha Investment Intelligence
  • 11. Traditional vs. Behavioral Economics Traditional • Perfect rationality • Expected utility theory • Risk aversion • Efficient market hypothesis • CAPM and APT Behavioral • Bounded rationality • Prospect theory • Loss aversion • Adaptive market hypothesis • Behavioral Asset Pricing • Market anomalies 2/9/2017 11 Empirical evidence diverges greatly from classic theory Why do market anomalies exist?
  • 12. Drivers of Anomalies Cognitive Biases • Conservatism • Overweight Bayesian priors • Confirmation • Selection bias • Gambler’s Fallacy • Mean reversion • Representativeness • Overweight recent evidence • Availability • Familiarity premium Emotional Biases • Loss aversion • Pain > Gain • Overconfidence • Underestimate risk • Endowment • Sentimental value premium • Status-Quo • Regret-aversion • Herd behavior 2/9/2017 12 Anomalies are drivers of excess return (alpha)
  • 13. Studies of Market Anomalies 2/9/2017 13 Year Authors Anomaly 1968 Ball & Brown Earnings announcement effect 1975 Haugen & Heins Low volatility effect 1976 Rozeff &Kinney January effect 1977 Basu Low P/E effect 1981 Gibbons &Hess Monday effect 1981 Shiller Excess volatility effect 1981 Banz Size effect 1985 Rosenberg, Reid, Lanstein Value effect 1987 DeBondt & Thaler Over-reaction to bad news 1993 Jegadeesh & Titman Momentum investing
  • 14. Quantitative Behavioral Finance • Behavioral asset pricing model: • This is a linear factor model that includes behavioral bias sentiment factors • Exposure to behavioral biases given by weights gi 2/9/2017 14 E r[ ] = rf + bj j=1 k å (rj -rf )+ gi i=1 m å bi Expected Return Risk-free Rate Factor Beta Bias Sentiment Premium Risk Factor Premiu m
  • 15. In Search of Alpha 2/9/2017 15 NLP Sentiment Analysis Behavioral Bias Factors Factor Portfolios Alpha 1. Context-based sentiment analysis to extract features of behavioral biases observed in investor commentary 2. Combine these features with structured data to formulate behavioral bias factors 3. Use the factors to fit regression models for asset returns 4. Construct factor portfolios to monetize market anomalies by overweight/underweight exposure to specific behavioral biases
  • 16. Deep-Learning Sentiment Pipeline NLP Pipeline Our Methodology at DR • Data: public and private investor commentary 2/9/2017 16 TOK docs POS Shallow Parse Extract or NER W2V LRDBOWDM Agg Synthesys Studio Factor Constructio n Facts Context
  • 17. Some Results Standard Fama-French model (MKT, SMB, HML) regression with two behavioral factors (UMO, ITF): 2/9/2017 17 Factor Premium Standard Deviation P-value Sharpe Ratio Corr. Vs. MKT MKT 0.47 4.66 0.0262 0.10 1.00 SMB 0.19 3.16 0.1942 0.06 0.28 HML 0.42 3.04 0.0022 0.14 -0.33 UMO 0.32 1.57 0.0001 0.20 -0.12 ITF 0.91 3.06 0.0001 0.30 -0.50 Sun 2014
  • 18. Key Takeaways • Intersection between sentiment analysis and behavioral economics is opening up new opportunities for investment alpha generation • DR’s context-based sentiment analysis methodology is useful for extracting behavioral bias features from public and private data • Behavioral bias feature extraction yields factor portfolios that can take advantage of anomalies manifested from these biases • Open research field 2/9/2017 18
  • 19. Final Words • We at DR are actively exploring neural embedding and deep learning methods to enhance feature extraction of behavioral biases • Toolbox: Synthesys Studio • Text analytics • Model training • Open platform • Q4 2015 release • Freeware 2/9/2017 19 Investments & Finance Behavioral Science Computer Science Sentiment Analysis Algorithmic Trading Behavioral Economic s Cognitive Alpha