Interactive Modeling of Concept Drift and Errors in Relevance Feedback
March 08, 2016 Β· Declared Dead Β· π User Modeling, Adaptation, and Personalization
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Authors
Antti KangasrÀÀsiΓΆ, Yi Chen, Dorota GΕowacka, Samuel Kaski
arXiv ID
1603.02609
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.IR
Citations
14
Venue
User Modeling, Adaptation, and Personalization
Last Checked
4 months ago
Abstract
Users giving relevance feedback in exploratory search are often uncertain about the correctness of their feedback, which may result in noisy or even erroneous feedback. Additionally, the search intent of the user may be volatile as the user is constantly learning and reformulating her search hypotheses during the search. This may lead to a noticeable concept drift in the feedback. We formulate a Bayesian regression model for predicting the accuracy of each individual user feedback and thus find outliers in the feedback data set. Additionally, we introduce a timeline interface that visualizes the feedback history to the user and gives her suggestions on which past feedback is likely in need of adjustment. This interface also allows the user to adjust the feedback accuracy inferences made by the model. Simulation experiments demonstrate that the performance of the new user model outperforms a simpler baseline and that the performance approaches that of an oracle, given a small amount of additional user interaction. A user study shows that the proposed modelling technique, combined with the timeline interface, makes it easier for the users to notice and correct mistakes in their feedback, and to discover new items.
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