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Bag-of-Concepts: Comprehending Document Representation through Clustering Words in Distributed Representation : Bag-of-Concepts: 단어에 대한 분산표상의 군집화를 통한 해석 가능한 문서 표현법

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Authors

Han Kyul Kim

Advisor
조성준
Major
공과대학 산업공학과
Issue Date
2016-08
Publisher
서울대학교 대학원
Keywords
bag-of-conceptsinterpretable document representationword2vec clustering
Description
학위논문 (석사)-- 서울대학교 대학원 : 산업공학과 데이터마이닝전공, 2016. 8. 조성준.
Abstract
Two document representation methods are mainly used in solving text mining problems. Known for its intuitive and simple interpretability, the bag-of-words method represents a document vector by its word frequencies. However, this method suffers from the curse of dimensionality, and fails to preserve accurate proximity information when the number of unique words increases. Furthermore, this method assumes every word to be independent, disregarding the impact of semantically similar words on preserving document proximity. On the other hand, doc2vec, a basic neural network model, creates low dimensional vectors that successfully preserve the proximity information. However, it loses the interpretability as meanings behind each feature is indescribable. This paper proposes the bag-of-concepts method as an alternative document representation method that overcomes the weaknesses of these two methods. This proposed method creates concepts through clustering word vectors generated from word2vec, and uses the frequencies of these concept clusters to represent document vectors. Through these data-driven concepts, the proposed method incorporates the impact of semantically similar words on preserving document proximity effectively. With appropriate weighting scheme such as concept frequency-inverse document frequency, the proposed method provides better document representation than previously suggested methods, and also offers intuitive interpretability behind the generated document vectors. Based on the proposed method, subsequently constructed text mining models, such as decision tree, can also provide interpretable and intuitive reasons on why certain collections of documents are different from others.
Language
English
URI
https://hdl.handle.net/10371/123602
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