Sciweavers

ACL
2008

Learning Document-Level Semantic Properties from Free-Text Annotations

14 years 1 months ago
Learning Document-Level Semantic Properties from Free-Text Annotations
This paper demonstrates a new method for leveraging unstructured annotations to infer semantic document properties. We consider the domain of product reviews, which are often annotated by their authors with free-text keyphrases, such as "a real bargain" or "good value." We leverage these unstructured annotations by clustering them into semantic properties, and then tying the induced clusters to hidden topics in the document text. This allows us to predict relevant properties of unannotated documents. Our approach is implemented in a hierarchical Bayesian model with joint inference, which increases the robustness of the keyphrase clustering and encourages document topics to correlate with semantically meaningful properties. We perform several evaluations of our model, and find that it substantially outperforms alternative approaches.
S. R. K. Branavan, Harr Chen, Jacob Eisenstein, Re
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2008
Where ACL
Authors S. R. K. Branavan, Harr Chen, Jacob Eisenstein, Regina Barzilay
Comments (0)