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Text Analytics World Future Directions of Text Analytics: Smarter, Bigger, and Better

Explore the current state and future trends in text analytics at Text Analytics World. Learn about new techniques, applications, and directions in social media and enterprise text analytics. Hear from leading experts, visit sponsors, and attend workshops.

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Text Analytics World Future Directions of Text Analytics: Smarter, Bigger, and Better

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  1. Text Analytics World Future Directions of Text Analytics:Smarter, Bigger, and Better Tom ReamyChief Knowledge Architect KAPS Group Program Chair – Text Analytics World Knowledge Architecture Professional Services http://www.kapsgroup.com

  2. Text Analytics World Highlights • Keynote – Peter Morville, Information Architecture+ • Keynote – Future of Text Analytics – Bigger, Better, Smarter • Social Media and Enterprise Text Analytics – new techniques, new applications, new directions - Integration • Two Panels– leading TA experts: Interactive: What you always wanted to know about TA, but were afraid to ask. • Great Companies: Visit Sponsors & hear great case studies • Text Analytics Workshop – Thursday • Logistics

  3. Agenda • Introduction: • Current State of Text Analytics • Survey / Report • Enterprise Text Analytics - Search – still fundamental • Shift from information to business • Social Media – Next Generation • Different World: Content, Structures, Applications • Future of Text Analytics • Roadblocks, Deep Vision • Questions

  4. Introduction: KAPS Group • Knowledge Architecture Professional Services – Network of Consultants • Applied Theory – Faceted taxonomies, complexity theory, natural categories, emotion taxonomies • Services: • Strategy – IM & KM - Text Analytics, Social Media, Integration • Taxonomy/Text Analytics development, consulting, customization • Text Analytics Quick Start – Audit, Evaluation, Pilot • Social Media: Text based applications – design & development • Partners – SAS, Smart Logic, Expert Systems, SAP, IBM, FAST, Concept Searching, Attensity, Clarabridge, Lexalytics • Projects – Portals, taxonomy, Text analytics – news, expertise location, information strategy, text analytics evaluation, Quick Start in Text A. • Clients: Genentech, Novartis, Northwestern Mutual Life, Financial Times, Hyatt, Home Depot, Harvard Business Library, British Parliament, Battelle, Amdocs, FDA, GAO, World Bank, etc. • Presentations, Articles, White Papers – www.kapsgroup.com

  5. Introduction: Coming Soon • New Book: Text Analytics: How to Conquer Information Overload and Get Real Value from Social Media • Due end of May • Free Copy to Workshop Attendees • One randomly selected person at the conference will receive a free copy – stay tuned!

  6. Text Analytics WorldCurrent State of Text Analytics • History – academic research, focus on NLP • Inxight –out of ZeroxParc • Moved TA from academic and NLP to auto-categorization, entity extraction, and Search-Meta Data • Explosion of companies – many based on Inxight extraction with some analytical-visualization front ends • Half from 2008 are gone - Lucky ones got bought • Early applications – News aggregation and Enterprise Search – • Second Wave = shift to sentiment analysis • Third Wave = Multiple Enterprise & Social Applications • Watson = New Levels of Excitement • Need practical version

  7. Text Analytics WorldCurrent State of Text Analytics: Vendor Space • Taxonomy Management – SchemaLogic, Pool Party • Taxonomy& Semantic Networks - Text Analytics Solutions • Access Innovation, Luminoso • Extraction and Analytics • Linguamatics (Pharma), Temis, whole range of companies • Business Intelligence – Clear Forest, Inxight • Sentiment Analysis – Attensity, Lexalytics, Clarabridge • Open Source – GATE • Stand alone text analytics platforms – IBM, SAS, SAP, Smart Logic, Expert System, Basis, Open Text, Megaputer, Temis, Concept Searching • Embedded in Content Management, Search • Autonomy, FAST, Endeca, Exalead, etc. • Market Mindshare – IBM, SAS, Clarabridge, Lexalytics

  8. Current Market: Text AnalyticsSurveys, Seth Grimes Report • Market – 2014 - $2Bil • Enterprise search – 30-50% of market ($1Bil) • Text Analytics is growing 20% a year, 10% of analytics • Fragmented market – no clear leader • Social and Voice of Customer is huge • Money (investor) is still mostly social • Cloud-based Software as Service continues to grow • Growth as a market – slowed, as a technique – expanding • (Me – time for new direction, characterization of field, etc.) • US market different than Europe/Asia – project oriented

  9. Seth Grimes Report + Interviews Leading Analysts:Current Trends • From Mundane to Advanced – reducing manual labor to “Cognitive Computing” • Enterprise – Shift from Information to Business – cost cutting rather than productivity gains • Embedded solutions – not called TA (but should be because they suffer from weak TA) • Graph databases (saying since 2010 – he’ll be right one of these years: Open Knowledge Graphs • Human-Machine – still need human hybrid • Rules – hard to maintain and new text (wrong kind of rules)

  10. Seth Grimes ReportCurrent and Future Trends • Top four in Grimes survey: • Ability to generate taxonomies (64%) • Ability to use specialized, taxonomies, ontologies, etc. (54%) • Broad information extraction (53%) • Document Classification (53%) • Top business applications • Brand/product/reputation management (38%) • Voice of the Customer (39%) • Competitive Intelligence (33%) • Search, Info Access, etc. (29%) • (Research 38% - not listed as a choice)

  11. Seth Grimes ReportCurrent and Future Trends • Current extract more, more diverse types of info, applying insights in new ways and for new purposes – yet user satisfaction still lagging- accuracy and ease of use • 74% satisfied with TA – only 4% disappointed • Most dissatisfaction – ease of use (29%) and availability of professional services/support (50%) • 48% likely to recommend their provider – 36% would recommend against

  12. Enterprise Text Analytics • Search is still #1 = 30-50% of applications • New Standard Search – facets (more and more metadata), auto-categorization built on taxonomies, clustering • Trend = Text Analytics/Search as Semantic Infrastructure • Platform for Info Apps (Search-based applications) • SharePoint – Major focus of TA companies – fix problems with taxonomy/folksonomy • Hybrid workflow – Publish document -> TA analysis -> suggestions for categorization, entities, metadata -> present to author • External information = more automation, extraction – precision more important

  13. Enterprise Text AnalyticsAdding Structure to Unstructured Content • Beyond Documents – categorization by corpus, by page, sections or even sentence or phrase • Documents are not unstructured – variety of structures • Sections – Specific - “Abstract” to Function “Evidence” • Corpus – document types/purpose • Textual complexity, level of generality • Need to develop flexible categorization and taxonomy – tweets to 200 page PDF • Applications require sophisticated rules, not just categorization by similarity

  14. Enterprise Text AnalyticsDocument Type Rules • (START_2000, (AND, (OR, _/article:"[Abstract]", _/article:"[Methods]“), (OR,_/article:"clinical trial*", _/article:"humans", • (NOT, (DIST_5, (OR,_/article:"approved", _/article:"safe", _/article:"use", _/article:"animals"), • If the article has sections like Abstract or Methods • AND has phrases around “clinical trials / Humans” and not words like “animals” within 5 words of “clinical trial” words – count it and add up a relevancy score • Primary issue – major mentions, not every mention • Combination of noun phrase extraction and categorization • Results – virtually 100%

  15. Enterprise Text AnalyticsBuilding on the Foundation: Applications • Focus on business value, cost cutting • Enhancing information access is means, not an end • Governance, Records Management, Doc duplication, Compliance • Applications – Business Intelligence, CI, Behavior Prediction • eDiscovery, litigation support • Risk Management • Productivity / Portals – spider and categorize, extract – KM communities & knowledge bases • New sources – field notes into expertise, knowledge base – capture real time, own language-concepts

  16. Enterprise Text Analytics: ApplicationsPronoun Analysis: Fraud Detection; Enron Emails • Function words = pronouns, articles, prepositions, conjunctions, etc. • Used at a high rate, short and hard to detect, very social, processed in the brain differently than content words • Patterns of “Function” words reveal wide range of insights • Areas: sex, age, power-status, personality – individuals and groups • Lying / Fraud detection: Documents with lies have: • Fewer, shorter words, fewer conjunctions, more positive emotion words • More use of “if, any, those, he, she, they, you”, less “I” • Current research – 76% accuracy in some contexts • Text Analytics can improve accuracy and utilize new sources • Combine with Data analytics can improve accuracy

  17. Social Media: Next GenerationBeyond Simple Sentiment • Beyond Good and Evil (positive and negative) • Degrees of intensity, complexity of emotions and documents • Importance of Context – around positive and negative words • Rhetorical reversals – “I was expecting to love it” • Issues of sarcasm, (“Really Great Product”), slanguage • Essential – need full categorization and concept extraction • Voice of the Customer: Must Have • Need full Text Analytics to do well • New conceptual models, models of users, communities

  18. New Content CharacteristicsIt’s a Very Different World • Scale – orders of magnitude – 100’s of millions, Billions • Speed – 20-100 million a day • Size – Twitter, Blogs, forums, email • 140 characters to a few sentences • Quality – misspellings, lack of structure, incoherence • Conversations – not stand alone docs • Can’t tell what a “document” is about without reference to previous threads • Purpose – communicate - social grooming, rant • Not exchange of ideas, policies, etc. • Simple Content Complexity – single thoughts, simplicity of emotion

  19. New Content CharacteristicsIt’s a Very Different World – Search and Taxonomy • i tried very slow, NO GOOGLE search, some apps not working.. This is not a "with GOOGLE" My friend has incredible, that is much batter.. Anyways i returned samsung, replace incredible. What's great about it:  4" LCD What's not so great:  NOT A GOOGLE PHONE • (nt 2.0)willie John ci to/for: wanted to know about charges for pic mail for ;bill date 4/5/2010 | repeat: no | auth: pin | ptns affected: 7777777777 | information/instructions given: sup gave pic mail for free and gave adj for $ 2.40 new bal is $ 147.53 | any mobile, anytime: n | ir: yes | ir-email: n |

  20. New Content CharacteristicsIt’s a Very Different World – Topical Current Content • Content not archived (for users) • No real need for search (or just very simple search) • Very Poor (if any) metadata – not faceted search • Focus on phrases, sentences – not documents • Little need of a complex subject taxonomy • About emotions, things, products, people • Emotion – simple structures, infinite kinds of expression

  21. It’s a Very Different World • Companies are mining this resource and they need to add structure to get deeper understanding • Varieties of structure: • Simple topical taxonomies 2-3 levels • Emotion taxonomies, Ontologies and Semantic Networks • Dynamic taxonomies – built on public taxonomies, enterprise taxonomy – exposed in hierarchical triples . • Need more automatic / semi-automatic solutions • Advanced text analytics

  22. New Kinds of Social Taxonomies • New Taxonomies – Appraisal • Appraisal Groups – Adjective and modifiers – “not very good” • Four types – Attitude, Orientation, Graduation, Polarity • Supports more subtle distinctions than positive or negative • Emotion taxonomies • Joy, Sadness, Fear, Anger, Surprise, Disgust • New Complex – pride, shame, embarrassment, love, awe • New situational/transient – confusion, concentration, skepticism • Beyond Keywords – Need Text Analytics • Analysis of phrases, multiple contexts – conditionals, oblique • Analysis of conversations – dynamic of exchange, private language • Enterprise taxonomy rolled into a categorization taxonomy

  23. Social Media: Next GenerationVariety of New Applications • Crowd Sourcing Technical Support • User Forums – find problem area, nearby text for solution • Automatic or Human mediated • Legal Review • Significant trend – computer-assisted review (manual =too many) • TA- categorize and filter to smaller, more relevant set • Payoff is big – One firm with 1.6 M docs – saved $2M • Financial Services • Trend – using text analytics with predictive analytics – risk and fraud • Combine unstructured text (why) and transaction data (what) • Customer Relationship Management, Fraud Detection • Stock Market Prediction – Twitter, impact articles

  24. Social Media: Next GenerationVariety of New Applications • Voice of the Customer (Employee, Voter) • Early discovery of issues with product, service, customer issues • Identify opportunities for new products and service, sales or new feature improvements • Enable companies to find and understand correlations between promotional campaigns and customer reactions • It can lead to business or competitor intelligence • Current – better at gathering information than analyzing • Possibilities are (almost) endless • And a little bit scary – deep psychology, conservative-liberal brains

  25. Social Media: Next GenerationBehavior Prediction – Telecom Customer Service • Problem – distinguish customers likely to cancel from mere threats • Basic Rule • (START_20, (AND, (DIST_7,"[cancel]", "[cancel-what-cust]"), • (NOT,(DIST_10, "[cancel]", (OR, "[one-line]", "[restore]", “[if]”))))) • Examples: • customer called to say he will cancell his account if the does not stop receiving a call from the ad agency. • cci and is upset that he has the asl charge and wants it offor her is going to cancel his act • More sophisticated analysis of text and context in text • Combine text analytics with Predictive Analytics and traditional behavior monitoring for new applications

  26. Future of Text AnalyticsObstacles - Survey Results • What factors are holding back adoption of TA? • Lack of clarity about TA and business value - 47% • Lack of senior management buy-in - 8.5% • Need articulated strategic vision and immediate practical win • Issue – TA is strategic, US wants short term projects • Sneak Project in, then build infrastructure – difficulty of speaking enterprise • Integration Issue – who owns infrastructure? IT, Library, ? • IT understands infrastructure, but not text • Need interdisciplinary collaboration – Stanford is offering English-Computer Science Degree – close, but really need a library-computer science degree

  27. Future of Text AnalyticsPrimary Obstacle: Complexity • Usability of software is one element • More important is difficulty of conceptual-document models • Language is easy to learn , hard to understand and model • Need to add more intelligence (semantic networks) and ways for the system to learn – social feedback • Customization – Text Analytics– heavily context dependent • Content, Questions, Taxonomy-Ontology • Level of specificity – Telecommunications • Specialized vocabularies, acronyms

  28. New Directions in Text AnalyticsConclusions • Text Analytics still growing: more mature applications and technique • Find the right balance of infrastructure and application focus • Essential theme – integration – text and data, enterprise and social • Big obstacles remain • Strategic Vision of text analytics in the enterprise • Concrete and quick application to drive acceptance • Future – Women, Fire, and Dangerous Things • Text Analytics and Cognitive Science = Metaphor Analysis, deep language understanding, common sense?

  29. New Directions in Text AnalyticsConclusions • Bigger: • Big Data gets the press, but Big Text is bigger – and potentially more valuable – Needs more systemic solutions • Number and variety of TA Applications still growing • Better: • Libraries of Modules – Ensemble Methods • Cognitive Computing – TA Foundation • Smarter: • Not AI, but smarts without waiting for 50 years • Great Time to get into Text Analytics

  30. Questions? Tom Reamy Program Chair – Text Analytics Worldtomr@kapsgroup.com KAPS Group http://www.kapsgroup.com

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