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Learning personalized topical compositions with item response theory
Lu Lin
, Lin Gong
, Hongning Wang
College of Information Sciences and Technology
Research output
:
Chapter in Book/Report/Conference proceeding
›
Conference contribution
4
Scopus citations
Overview
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Dive into the research topics of 'Learning personalized topical compositions with item response theory'. Together they form a unique fingerprint.
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Keyphrases
Item Response Theory
100%
Review Documents
100%
Intrinsic Properties
50%
Performance Improvement
25%
Two-component
25%
Unseen
25%
Large Collection
25%
Predictive Power
25%
Text-dependent
25%
User Feeling
25%
Text Mining
25%
Topic Space
25%
User Understanding
25%
Posterior Inference
25%
User-generated Data
25%
Item Recommendation
25%
Item Properties
25%
Amazon Reviews
25%
Computer Science
Response Theory
100%
Intrinsic Property
50%
Text Mining
25%
Predictive Power
25%