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Quantified News based Trading: 
is it the next big thing in algorithmic 
trading ? 
Rajib Ranjan Borah 
Nov 8, 2013 
Princeton – UChicago Quant Trading Conference 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
Contents 
Sr.No Topic Slide No 
1 How is news quantified 5-20 
2 Profitability using quantitative news analysis 22-42 
3 Machine learning techniques for designing quant news 
strategies 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited 
44-47
How is news quantified → Profitability → Machine learning techniques → QA 
Agenda 
Background - how is news quantified 
Profitability using quantitative news analysis 
Machine learning techniques for designing quant news strategies 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Historical Perspective 
1. Rothschild: 
A family network spread across Europe (Frankfurt, London, 
Paris, Naples, Vienna) → enabled obtaining financial 
information before peers 
Knowledge of Battle of Waterloo result one full day before 
others → largest private fortune in the world 
2. Reuters: 
News service used pigeons & telegraph in 1850s to become 
fastest news disseminator 
Continued focus on being the fastest news source → $12.4 
billion conglomerate 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
What is Quantitative News Trading? 
News is the first order factor that affects prices, volume, 
volatility of stocks, currencies, commodities, etc 
Computer programs that scan news articles & quantify them 
-> can respond to price moving factors faster than humans 
-> can monitor a vaster amount of news reports than humans 
This field is known as ‘Quantitative News Trading’ 
Apart from trading, quantification of news is also utilized in 
• Media evaluation 
• Market research 
• Brand & reputation management 
• Political analysis 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
What is Quantitative News Trading? 
• Sample output of a News Analytics feed: News 
represented by numbers 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
What is Quantitative News Trading? 
News is the first order factor that affects prices, volume, 
volatility of stocks, currencies, commodities, etc 
Computer programs that scan news articles & quantify them 
-> can respond to price moving factors faster than humans 
-> can monitor a vaster amount of news reports than humans 
This field is known as ‘Quantitative News Trading’ 
‘‘During the 200 milliseconds a human is reading the latest news headline, a 
trading program will have downloaded the entire article, analyzed its 
meaning, & traded based on the content” 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
What is Quantitative News Trading? 
News is the first order factor that affects prices, volume, 
volatility of stocks, currencies, commodities, etc 
Computer programs that scan news articles & quantify them 
-> can respond to price moving factors faster than humans 
-> can monitor a vaster amount of news reports than humans 
How do you quantify news reports and articles ? 
This field is known as ‘Quantitative News Trading’ 
‘‘During the 200 milliseconds a human is reading the latest news headline, a 
trading program will have downloaded the entire article, analyzed its 
meaning, & traded based on the content” 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - 1. Sentiment 
News articles are assigned a score called ‘sentiment’ 
Sentiment says whether the article has a positive / negative or 
neutral tone 
(Sale of Apple iPhones drop = -ve sentiment) 
Sentiment at document level is different from sentiment at 
entity level 
(Samsung beats Apple in smart phone sales = -ve sentiment for 
entity named Apple, +ve sentiment for Samsung) 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - 1. Sentiment 
How is ‘sentiment’ scored ? 
• Naive parser: based on word count of –ve / +ve keywords 
• Discriminated parser: weighted word count 
• Grammatical parser: which verbs work on which objects. 
check linguistic semantics 
• Machine Learning: From the data and the answers, try to find 
the factors 
– Generate bag-of-words: distance of subject from these sentiment 
words 
– Overfitting (and large vector sets), hitch-hiking and ignorance of 
linguistic structure 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - 1. Sentiment 
Scoring sentiments: grammatical parsing 
• A database of words & phrases against which the article is 
searched 
• Which verbs act on which objects 
• Phrases which use adjectives & adverbs emphasize 
sentiments, therefore greater weightage 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - 2. Relevance 
How is relevance scored ? 
• How many companies are mentioned in the news article 
• Is the company mentioned in the headline as the 
subject/object 
(‘Headline:UBS downgrades HSBC’ is not relevant to UBS) 
• In which sentence number is the company first mentioned 
• Length of the article & how many times is the firm mentioned 
• Number of sentiment words & total words in article 
• Two firms mentioned in a news article can both have a 
relevance of 1.0 (HP & Compaq announce merger) 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - 2. Relevance 
Issues with calculating relevance 
• Requires synonym database: 
– IBM 
– International Business Machines 
– I.B.M. 
– Big Blue 
– BAML 
– Bank of America 
– Merrill Lynch 
– Bank of America Merrill Lynch 
– Merrill 
– BoA 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - 3. Novelty 
How is novelty measured ? 
• The keywords in the current news article are compared to 
historical articles about that company for similarity of digital 
fingerprints 
• A linked articles count is generated 
• Novelty is reported for 
– Within same news feed novelty (i.e. all Bloomberg news articles only) 
– Across all news feeds novelty (i.e. across Reuters, Dow Jones, 
Bloomberg articles) 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - 4. Market Impact 
• Different types of news articles have different impacts on the 
price of the asset 
• Another aspect of relevance is the likely market impact of the 
news article 
• Market Impact is therefore a function of the type of news 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - News Types 
Types of news: 
• Accounting news 
– Earnings 
– Trading updates (broker action, market commentary) 
– Guidance 
– Financial issues (buybacks, dividends, equity offerings, etc) 
– Regulatory filings 
• Strategic news 
– M&A 
– Restructuring 
– Product, customer, competition related 
– Corporate Governance 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - 5. Volume 
The number of news articles on the same topic can be a useful 
input to validate the impact 
• Volume of news in Social Media also checked sometimes 
• News Analytics strategies also check market based qualitative 
parameters along with news -> these help check if reaction to 
news is not already factored in 
– Trading Volume in last 24 hours (and historical average volume) 
– Price change in last 24 hours 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - 6. Social Media 
Long term trading strategies try to gauge market sentiment from 
the plethora of information in the social media front 
• Search engine volume counts (e.g. Google Trends) - global 
search for news keywords. 
Can be used to confirm market impact of news 
• Facebook, Twitter - user sentiment evaluated at macro level. 
Many tools use certified twitter/facebook feeds only 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - Key Factors 
While the following are the four key inputs: 
• Sentiment 
• Relevance 
• Novelty 
• Market Impact 
Some news analytics based strategies use other factors as well… 
• Volume 
• Social Media 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News – Market Psyche 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Agenda 
Background - how is news quantified 
Profitability using quantitative news analysis 
Machine learning techniques for designing quant news strategies 
Q&A 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Where Quantified news work 
Machines are faster at responding to events than humans 
Low latency event based trading (first to respond) 
Machines can process a much vaster amount of information 
without any fatigue 
Analyze broad spectrum of news to formulate broad views 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Where Quantified news work 
Analyze broad spectrum of news to formulate broad views 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Where Quantified news work 
Low latency event based trading (first to respond) 
For synchronous (fixed releases) expected events (earnings 
releases/ economic figures) 
• Company figures provided in xml format instead of text 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Where Quantified news work 
Low latency event based trading (first to respond) 
For synchronous (fixed releases) expected events (earnings 
releases/ economic figures) 
• Company figures provided in xml format instead of text 
• Economic figures provided in binary format instead of textual 
news articles 
For asynchronous / unexpected news 
• Are quantification algorithms robust enough to calculate 
trust-worthy sentiment, relevance, novelty scores ? 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Opportunities : initial under-reaction 
Quantified news driven trades work even when the trade is done 
at the end of the day 
(under-reaction to news immediately. Tetlock, et al) 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Late endof day response also profitable 
Trading the news immediately = very profitable 
At a broad level there is underreaction to news => entering into 
trades at the end of the day also makes profits 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Certain sectors more profitable 
Moving from Non-Cyclicals to 
Financials increased the profit 
from 135BP to 147BP 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Sensitivity of different sectors 
Sectors like Pharma, Defense, Auto, Energy, Banking more sensitive to news 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Small cap firms more profitable 
Smaller Cap firms show greater response to extreme sentiment 
news event 
(bigger firms have greater scrutiny) 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Hedged (market-neutral) is better 
• Long +ve sentiment stocks only 
OR 
Short -ve sentiment stocks only. Will fail in different regimes 
• Being long +ve sentiment stocks & short -ve sentiment stocks 
at the same time gives consistent returns 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Surprises are more profitable 
Bigger moves happen when there is news in 
• Stocks with low beta (i.e. surprises happen to sleepy stocks) 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Surprises are more profitable 
Bigger moves happen when there is news in 
• Stocks with low beta (i.e. surprises happen to sleepy stocks) 
• VIX is low (i.e. surprises during calm times) 
• When markets are improving (i.e. surprise to mostly long 
position holders) 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Strategy variation - sentiment changes 
• Instead of absolute sentiment scores, look at changes in 
sentiment scores of firms 
• Bought stocks with highest increase in sentiment 
• Shorted stocks with highest decrease in sentiment 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Strategy variation - bottom fishing 
• Bottom - fishing / turnaround stories 
• Buying stocks with reversal in sentiment from grossly 
negative (a lot of the stocks turned out to be buybacks) 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Generating Alpha 
• Soft (opinion based) vs. Hard (fact based) news 
Hard news has a stronger short term reaction than soft news 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited 
Source: RavenPack, FactSet, Macquarie Research, September 2012
How is news quantified → Profitability → Machine learning techniques → QA 
Generating Alpha 
• Scheduled/expected vs. Unscheduled/unexpected 
Investors react more strongly to unscheduled/ unexpected 
news than scheduled/ expected 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited 
Source: RavenPack, FactSet, Macquarie Research, September 2012
How is news quantified → Profitability → Machine learning techniques → QA 
Generating Alpha 
• Forecast vs Actual earnings 
Investors react more strongly to forecasts than actual earnings 
news 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited 
Source: RavenPack, FactSet, Macquarie Research, September 2012
How is news quantified → Profitability → Machine learning techniques → QA 
To summarize 
News Analytics works best with 
• Small cap stocks 
• Sectors like pharma, banking, etc 
• Stocks with low beta 
• When VIX is low 
• When markets are improving 
• Hard news (vis-a-vis Soft news) 
• Unscheduled news events (vis-a-vis scheduled news events) 
• Being market-neutral 
• Doing fewer stocks, but those with stronger signals 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - Where it fails ? 
• On Sep. 7, 2008 Google’s newsbots picked up an old 2002 
story about United Airlines possibly filing for bankruptcy 
• UAL stock dived immediately 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News - Where it fails? 
• News analytics were taught that ‘Osama-Bin-Laden’, and 
‘killed’ had -ve sentiments for the markets 
• On May 2 2012 when news reporting “Osama Bin-Landen 
killed” were published, news bots treated this as a negative 
news article and sold stocks 
• The two examples cited and their impacts show the extent to 
which people have embraced news analytics to automate 
trading 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Quantifying News – challenges 
• Languages like Chinese and Japanese with large number of 
alphabetic symbols and complex grammar 
However, there is a lot of development in this domain already 
• The ever increasing volume of news articles from increased 
news sources, and from increased volumes in social media 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Agenda 
Background - how is news quantified 
Profitability using quantitative news analysis 
Machine learning techniques for designing quant news strategies 
Q&A 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Machine Learning methodologies 
Traditional approach => formulate hypothesis based on 
experience/expertise, validate statistically using historical data 
Machine learning approach => output + raw data fed into a 
system. System reports factors within data that lead to output 
Three broad approaches 
• Tree 
• Forest 
• Planet 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Machine Learning - TREE method 
Output: Post-event abnormal results 
Input: Quantitative news analytics 
Issues: Overfitting 
(works with training data 
does not work on real data) 
Solution: Pruning 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Machine Learning - FOREST method 
Multiple factors might impact output 
Instead of one tree to solve everything, 
have a forest of trees 
Each tree has a vote in the output. 
Weightage of vote depends on accuracy 
of that tree 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Machine Learning - PLANET method 
Instead of linear relationships between input and output, 
Planet breaks the variable space into sections, fits linear 
functions within those sections 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Agenda 
Background - how is news quantified 
Profitability using quantitative news analysis 
Machine learning techniques for designing quant news strategies 
Q&A 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
How is news quantified → Profitability → Machine learning techniques → QA 
Contacts 
For 4-month Executive Program in Algorithmic Trading: 
contact@quantinsti.com 
E-PAT: 4 month weekend online program (3hrs every Sat + Sun) 
• Statistics 
• Quant Strategies 
• Technology (coding on algorithmic trading platform) 
For algorithmic trading advisory: contact@iragecapital.com 
To reach me directly: rajib.borah@iragecapital.com 
© Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited

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Quantified News Based Trading: Is it the next big thing in algorithmic trading?

  • 1. Quantified News based Trading: is it the next big thing in algorithmic trading ? Rajib Ranjan Borah Nov 8, 2013 Princeton – UChicago Quant Trading Conference © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 2. Contents Sr.No Topic Slide No 1 How is news quantified 5-20 2 Profitability using quantitative news analysis 22-42 3 Machine learning techniques for designing quant news strategies © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited 44-47
  • 3. How is news quantified → Profitability → Machine learning techniques → QA Agenda Background - how is news quantified Profitability using quantitative news analysis Machine learning techniques for designing quant news strategies © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 4. How is news quantified → Profitability → Machine learning techniques → QA Historical Perspective 1. Rothschild: A family network spread across Europe (Frankfurt, London, Paris, Naples, Vienna) → enabled obtaining financial information before peers Knowledge of Battle of Waterloo result one full day before others → largest private fortune in the world 2. Reuters: News service used pigeons & telegraph in 1850s to become fastest news disseminator Continued focus on being the fastest news source → $12.4 billion conglomerate © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 5. How is news quantified → Profitability → Machine learning techniques → QA What is Quantitative News Trading? News is the first order factor that affects prices, volume, volatility of stocks, currencies, commodities, etc Computer programs that scan news articles & quantify them -> can respond to price moving factors faster than humans -> can monitor a vaster amount of news reports than humans This field is known as ‘Quantitative News Trading’ Apart from trading, quantification of news is also utilized in • Media evaluation • Market research • Brand & reputation management • Political analysis © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 6. How is news quantified → Profitability → Machine learning techniques → QA What is Quantitative News Trading? • Sample output of a News Analytics feed: News represented by numbers © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 7. How is news quantified → Profitability → Machine learning techniques → QA What is Quantitative News Trading? News is the first order factor that affects prices, volume, volatility of stocks, currencies, commodities, etc Computer programs that scan news articles & quantify them -> can respond to price moving factors faster than humans -> can monitor a vaster amount of news reports than humans This field is known as ‘Quantitative News Trading’ ‘‘During the 200 milliseconds a human is reading the latest news headline, a trading program will have downloaded the entire article, analyzed its meaning, & traded based on the content” © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 8. How is news quantified → Profitability → Machine learning techniques → QA What is Quantitative News Trading? News is the first order factor that affects prices, volume, volatility of stocks, currencies, commodities, etc Computer programs that scan news articles & quantify them -> can respond to price moving factors faster than humans -> can monitor a vaster amount of news reports than humans How do you quantify news reports and articles ? This field is known as ‘Quantitative News Trading’ ‘‘During the 200 milliseconds a human is reading the latest news headline, a trading program will have downloaded the entire article, analyzed its meaning, & traded based on the content” © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 9. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - 1. Sentiment News articles are assigned a score called ‘sentiment’ Sentiment says whether the article has a positive / negative or neutral tone (Sale of Apple iPhones drop = -ve sentiment) Sentiment at document level is different from sentiment at entity level (Samsung beats Apple in smart phone sales = -ve sentiment for entity named Apple, +ve sentiment for Samsung) © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 10. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - 1. Sentiment How is ‘sentiment’ scored ? • Naive parser: based on word count of –ve / +ve keywords • Discriminated parser: weighted word count • Grammatical parser: which verbs work on which objects. check linguistic semantics • Machine Learning: From the data and the answers, try to find the factors – Generate bag-of-words: distance of subject from these sentiment words – Overfitting (and large vector sets), hitch-hiking and ignorance of linguistic structure © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 11. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - 1. Sentiment Scoring sentiments: grammatical parsing • A database of words & phrases against which the article is searched • Which verbs act on which objects • Phrases which use adjectives & adverbs emphasize sentiments, therefore greater weightage © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 12. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - 2. Relevance How is relevance scored ? • How many companies are mentioned in the news article • Is the company mentioned in the headline as the subject/object (‘Headline:UBS downgrades HSBC’ is not relevant to UBS) • In which sentence number is the company first mentioned • Length of the article & how many times is the firm mentioned • Number of sentiment words & total words in article • Two firms mentioned in a news article can both have a relevance of 1.0 (HP & Compaq announce merger) © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 13. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - 2. Relevance Issues with calculating relevance • Requires synonym database: – IBM – International Business Machines – I.B.M. – Big Blue – BAML – Bank of America – Merrill Lynch – Bank of America Merrill Lynch – Merrill – BoA © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 14. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - 3. Novelty How is novelty measured ? • The keywords in the current news article are compared to historical articles about that company for similarity of digital fingerprints • A linked articles count is generated • Novelty is reported for – Within same news feed novelty (i.e. all Bloomberg news articles only) – Across all news feeds novelty (i.e. across Reuters, Dow Jones, Bloomberg articles) © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 15. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - 4. Market Impact • Different types of news articles have different impacts on the price of the asset • Another aspect of relevance is the likely market impact of the news article • Market Impact is therefore a function of the type of news © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 16. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - News Types Types of news: • Accounting news – Earnings – Trading updates (broker action, market commentary) – Guidance – Financial issues (buybacks, dividends, equity offerings, etc) – Regulatory filings • Strategic news – M&A – Restructuring – Product, customer, competition related – Corporate Governance © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 17. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - 5. Volume The number of news articles on the same topic can be a useful input to validate the impact • Volume of news in Social Media also checked sometimes • News Analytics strategies also check market based qualitative parameters along with news -> these help check if reaction to news is not already factored in – Trading Volume in last 24 hours (and historical average volume) – Price change in last 24 hours © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 18. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - 6. Social Media Long term trading strategies try to gauge market sentiment from the plethora of information in the social media front • Search engine volume counts (e.g. Google Trends) - global search for news keywords. Can be used to confirm market impact of news • Facebook, Twitter - user sentiment evaluated at macro level. Many tools use certified twitter/facebook feeds only © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 19. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - Key Factors While the following are the four key inputs: • Sentiment • Relevance • Novelty • Market Impact Some news analytics based strategies use other factors as well… • Volume • Social Media © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 20. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News – Market Psyche © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 21. How is news quantified → Profitability → Machine learning techniques → QA Agenda Background - how is news quantified Profitability using quantitative news analysis Machine learning techniques for designing quant news strategies Q&A © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 22. How is news quantified → Profitability → Machine learning techniques → QA Where Quantified news work Machines are faster at responding to events than humans Low latency event based trading (first to respond) Machines can process a much vaster amount of information without any fatigue Analyze broad spectrum of news to formulate broad views © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 23. How is news quantified → Profitability → Machine learning techniques → QA Where Quantified news work Analyze broad spectrum of news to formulate broad views © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 24. How is news quantified → Profitability → Machine learning techniques → QA Where Quantified news work Low latency event based trading (first to respond) For synchronous (fixed releases) expected events (earnings releases/ economic figures) • Company figures provided in xml format instead of text © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 25. How is news quantified → Profitability → Machine learning techniques → QA Where Quantified news work Low latency event based trading (first to respond) For synchronous (fixed releases) expected events (earnings releases/ economic figures) • Company figures provided in xml format instead of text • Economic figures provided in binary format instead of textual news articles For asynchronous / unexpected news • Are quantification algorithms robust enough to calculate trust-worthy sentiment, relevance, novelty scores ? © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 26. How is news quantified → Profitability → Machine learning techniques → QA Opportunities : initial under-reaction Quantified news driven trades work even when the trade is done at the end of the day (under-reaction to news immediately. Tetlock, et al) © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 27. How is news quantified → Profitability → Machine learning techniques → QA Late endof day response also profitable Trading the news immediately = very profitable At a broad level there is underreaction to news => entering into trades at the end of the day also makes profits © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 28. How is news quantified → Profitability → Machine learning techniques → QA Certain sectors more profitable Moving from Non-Cyclicals to Financials increased the profit from 135BP to 147BP © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 29. How is news quantified → Profitability → Machine learning techniques → QA Sensitivity of different sectors Sectors like Pharma, Defense, Auto, Energy, Banking more sensitive to news © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 30. How is news quantified → Profitability → Machine learning techniques → QA Small cap firms more profitable Smaller Cap firms show greater response to extreme sentiment news event (bigger firms have greater scrutiny) © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 31. How is news quantified → Profitability → Machine learning techniques → QA Hedged (market-neutral) is better • Long +ve sentiment stocks only OR Short -ve sentiment stocks only. Will fail in different regimes • Being long +ve sentiment stocks & short -ve sentiment stocks at the same time gives consistent returns © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 32. How is news quantified → Profitability → Machine learning techniques → QA Surprises are more profitable Bigger moves happen when there is news in • Stocks with low beta (i.e. surprises happen to sleepy stocks) © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 33. How is news quantified → Profitability → Machine learning techniques → QA Surprises are more profitable Bigger moves happen when there is news in • Stocks with low beta (i.e. surprises happen to sleepy stocks) • VIX is low (i.e. surprises during calm times) • When markets are improving (i.e. surprise to mostly long position holders) © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 34. How is news quantified → Profitability → Machine learning techniques → QA Strategy variation - sentiment changes • Instead of absolute sentiment scores, look at changes in sentiment scores of firms • Bought stocks with highest increase in sentiment • Shorted stocks with highest decrease in sentiment © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 35. How is news quantified → Profitability → Machine learning techniques → QA Strategy variation - bottom fishing • Bottom - fishing / turnaround stories • Buying stocks with reversal in sentiment from grossly negative (a lot of the stocks turned out to be buybacks) © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 36. How is news quantified → Profitability → Machine learning techniques → QA Generating Alpha • Soft (opinion based) vs. Hard (fact based) news Hard news has a stronger short term reaction than soft news © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited Source: RavenPack, FactSet, Macquarie Research, September 2012
  • 37. How is news quantified → Profitability → Machine learning techniques → QA Generating Alpha • Scheduled/expected vs. Unscheduled/unexpected Investors react more strongly to unscheduled/ unexpected news than scheduled/ expected © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited Source: RavenPack, FactSet, Macquarie Research, September 2012
  • 38. How is news quantified → Profitability → Machine learning techniques → QA Generating Alpha • Forecast vs Actual earnings Investors react more strongly to forecasts than actual earnings news © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited Source: RavenPack, FactSet, Macquarie Research, September 2012
  • 39. How is news quantified → Profitability → Machine learning techniques → QA To summarize News Analytics works best with • Small cap stocks • Sectors like pharma, banking, etc • Stocks with low beta • When VIX is low • When markets are improving • Hard news (vis-a-vis Soft news) • Unscheduled news events (vis-a-vis scheduled news events) • Being market-neutral • Doing fewer stocks, but those with stronger signals © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 40. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - Where it fails ? • On Sep. 7, 2008 Google’s newsbots picked up an old 2002 story about United Airlines possibly filing for bankruptcy • UAL stock dived immediately © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 41. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News - Where it fails? • News analytics were taught that ‘Osama-Bin-Laden’, and ‘killed’ had -ve sentiments for the markets • On May 2 2012 when news reporting “Osama Bin-Landen killed” were published, news bots treated this as a negative news article and sold stocks • The two examples cited and their impacts show the extent to which people have embraced news analytics to automate trading © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 42. How is news quantified → Profitability → Machine learning techniques → QA Quantifying News – challenges • Languages like Chinese and Japanese with large number of alphabetic symbols and complex grammar However, there is a lot of development in this domain already • The ever increasing volume of news articles from increased news sources, and from increased volumes in social media © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 43. How is news quantified → Profitability → Machine learning techniques → QA Agenda Background - how is news quantified Profitability using quantitative news analysis Machine learning techniques for designing quant news strategies Q&A © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 44. How is news quantified → Profitability → Machine learning techniques → QA Machine Learning methodologies Traditional approach => formulate hypothesis based on experience/expertise, validate statistically using historical data Machine learning approach => output + raw data fed into a system. System reports factors within data that lead to output Three broad approaches • Tree • Forest • Planet © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 45. How is news quantified → Profitability → Machine learning techniques → QA Machine Learning - TREE method Output: Post-event abnormal results Input: Quantitative news analytics Issues: Overfitting (works with training data does not work on real data) Solution: Pruning © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 46. How is news quantified → Profitability → Machine learning techniques → QA Machine Learning - FOREST method Multiple factors might impact output Instead of one tree to solve everything, have a forest of trees Each tree has a vote in the output. Weightage of vote depends on accuracy of that tree © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 47. How is news quantified → Profitability → Machine learning techniques → QA Machine Learning - PLANET method Instead of linear relationships between input and output, Planet breaks the variable space into sections, fits linear functions within those sections © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 48. How is news quantified → Profitability → Machine learning techniques → QA Agenda Background - how is news quantified Profitability using quantitative news analysis Machine learning techniques for designing quant news strategies Q&A © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited
  • 49. How is news quantified → Profitability → Machine learning techniques → QA Contacts For 4-month Executive Program in Algorithmic Trading: contact@quantinsti.com E-PAT: 4 month weekend online program (3hrs every Sat + Sun) • Statistics • Quant Strategies • Technology (coding on algorithmic trading platform) For algorithmic trading advisory: contact@iragecapital.com To reach me directly: rajib.borah@iragecapital.com © Copyright 2010-2014 QuantInsti Quantitative Learning Private Limited

Notes de l'éditeur

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  23. Relating_News_Analytics_to_Stock_Returns
  24. Relating_News_Analytics_to_Stock_Returns
  25. Relating_News_Analytics_to_Stock_Returns
  26. Stony Brook Fig 1
  27. Relating_News_Analytics_to_Stock_Returns
  28. Relating_News_Analytics_to_Stock_Returns
  29. J P Morgan
  30. J P Morgan
  31. 23_Macquarie
  32. 23_Macquarie
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  34. SSRN-id1952914_TRNA_Reuter_Reasearch_Lab_Paper
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