Literature DB >> 28229132

Representing Documents via Latent Keyphrase Inference.

Jialu Liu1, Xiang Ren1, Jingbo Shang1, Taylor Cassidy2, Clare R Voss2, Jiawei Han1.   

Abstract

Many text mining approaches adopt bag-of-words or n-grams models to represent documents. Looking beyond just the words, i.e., the explicit surface forms, in a document can improve a computer's understanding of text. Being aware of this, researchers have proposed concept-based models that rely on a human-curated knowledge base to incorporate other related concepts in the document representation. But these methods are not desirable when applied to vertical domains (e.g., literature, enterprise, etc.) due to low coverage of in-domain concepts in the general knowledge base and interference from out-of-domain concepts. In this paper, we propose a data-driven model named Latent Keyphrase Inference (LAKI) that represents documents with a vector of closely related domain keyphrases instead of single words or existing concepts in the knowledge base. We show that given a corpus of in-domain documents, topical content units can be learned for each domain keyphrase, which enables a computer to do smart inference to discover latent document keyphrases, going beyond just explicit mentions. Compared with the state-of-art document representation approaches, LAKI fills the gap between bag-of-words and concept-based models by using domain keyphrases as the basic representation unit. It removes dependency on a knowledge base while providing, with keyphrases, readily interpretable representations. When evaluated against 8 other methods on two text mining tasks over two corpora, LAKI outperformed all.

Entities:  

Year:  2016        PMID: 28229132      PMCID: PMC5318165          DOI: 10.1145/2872427.2883088

Source DB:  PubMed          Journal:  Proc Int World Wide Web Conf


  1 in total

1.  Mining Quality Phrases from Massive Text Corpora.

Authors:  Jialu Liu; Jingbo Shang; Chi Wang; Xiang Ren; Jiawei Han
Journal:  Proc ACM SIGMOD Int Conf Manag Data       Date:  2015 May-Jun
  1 in total
  2 in total

1.  Unsupervised low-dimensional vector representations for words, phrases and text that are transparent, scalable, and produce similarity metrics that are not redundant with neural embeddings.

Authors:  Neil R Smalheiser; Aaron M Cohen; Gary Bonifield
Journal:  J Biomed Inform       Date:  2019-01-14       Impact factor: 6.317

2.  Data-Driven Contextual Valence Shifter Quantification for Multi-Theme Sentiment Analysis.

Authors:  Hongkun Yu; Jingbo Shang; Meichun Hsu; Malú Castellanos; Jiawei Han
Journal:  Proc ACM Int Conf Inf Knowl Manag       Date:  2016-10
  2 in total

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