CONCLUSIONS & CONTRIBUTIONS Ground-truth dataset, simulated search tasks environment Implicit feedback, semi-explicit feedback (annotations), explicit.

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CONTRIBUTIONS Ground-truth dataset Simulated search tasks environment Multiple everyday applications (MS Word, MS PowerPoint, Mozilla Browser) Implicit.
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CONCLUSIONS & CONTRIBUTIONS Ground-truth dataset, simulated search tasks environment Implicit feedback, semi-explicit feedback (annotations), explicit feedback (paragraph relevance score, page relevance score, page readability score) 31 Students (24 male, 7 female) Acknowledgements : This research is supported by NSF grant Improving Web Search by Incorporating User Behavior in Everyday Applications Sampath Jayarathna and Frank Shipman Computer Science & Engineering, Texas A&M University – College Station Improving Web Search by Incorporating User Behavior in Everyday Applications Sampath Jayarathna and Frank Shipman Computer Science & Engineering, Texas A&M University – College Station ABSTRACT AND MOTIVATION We explore novel user interest modeling techniques in order to generate document recommendations to support users during open-ended information gathering tasks. Personalized Information Delivery “Google Personalized Beta” User Query input / Search History Most direct evidence of user need Privacy issues Short, imprecise, and ambiguous We interact with different applications, and have extra information about the content we are interacting with. How can we build more valuable models of a user’s interests based on these prior interactions? Can we find tradeoffs between alternative approaches to recommending documents and document components based on a relevance feedback across multiple applications? Explicit feedback: users explicitly mark relevant and irrelevant documents Implicit feedback: system attempts to infer user intentions based on observable behavior Unified feedback: implicit ratings can be combined with existing explicit ratings to form a hybrid system to predict user satisfaction 1.Unified feedback across multiple applications will result in more accurate and more rapid assessment of documents than available through either implicit or explicit feedback alone. 2.Unified feedback across multiple applications can be used to more accurately and rapidly determine when a user's interest has changed. BACKGROUND Figure 1. IPM System Architecture 4 information summarization tasks 8 web documents per task Use multiple everyday applications (Word, PowerPoint, Firefox web browser) Asked to: Write short summary/answer to task question in Word Generate 2-3 slides on topic/answer in PowerPoint About 30 minutes per task but no limit enforced DATASET AND RESULTS 1.A unified user interest model Classification of documents into different user interests based on combined (implicit + semi-explicit) user expressions 2.Multiple everyday-applications model Examine how inferred models of user interest from different applications may be used in building multi-application environments HYPOTHESIS USER STUDY Model Page-Level RMSE Task-1Task-2Task-3Task-4 baseline-LDA Semi-Explicit Unified REFERENCES 1.Jayarathna, S., A. Patra, and F. Shipman (2015), Unified Relevance Feedback for Multi-Application User Interest Modeling. ACM IEEE JCDL. Nominated for Best Student paper award. 2.Jayarathna, S, A. Patra, and F. Shipman (2013). "Mining user interest from search tasks and annotations." ACM CIKM. PROBLEM STATEMENT Consumption Applications Production Applications FUTURE WORK