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An index-based algorithm for fast on-line query processing of latent semantic analysis

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  • Mingxi Zhang
  • Pohan Li
  • Wei Wang

Abstract

Latent Semantic Analysis (LSA) is widely used for finding the documents whose semantic is similar to the query of keywords. Although LSA yield promising similar results, the existing LSA algorithms involve lots of unnecessary operations in similarity computation and candidate check during on-line query processing, which is expensive in terms of time cost and cannot efficiently response the query request especially when the dataset becomes large. In this paper, we study the efficiency problem of on-line query processing for LSA towards efficiently searching the similar documents to a given query. We rewrite the similarity equation of LSA combined with an intermediate value called partial similarity that is stored in a designed index called partial index. For reducing the searching space, we give an approximate form of similarity equation, and then develop an efficient algorithm for building partial index, which skips the partial similarities lower than a given threshold θ. Based on partial index, we develop an efficient algorithm called ILSA for supporting fast on-line query processing. The given query is transformed into a pseudo document vector, and the similarities between query and candidate documents are computed by accumulating the partial similarities obtained from the index nodes corresponds to non-zero entries in the pseudo document vector. Compared to the LSA algorithm, ILSA reduces the time cost of on-line query processing by pruning the candidate documents that are not promising and skipping the operations that make little contribution to similarity scores. Extensive experiments through comparison with LSA have been done, which demonstrate the efficiency and effectiveness of our proposed algorithm.

Suggested Citation

  • Mingxi Zhang & Pohan Li & Wei Wang, 2017. "An index-based algorithm for fast on-line query processing of latent semantic analysis," PLOS ONE, Public Library of Science, vol. 12(5), pages 1-23, May.
  • Handle: RePEc:plo:pone00:0177523
    DOI: 10.1371/journal.pone.0177523
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    References listed on IDEAS

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    1. Andri Mirzal, 2016. "Clustering and latent semantic indexing aspects of the singular value decomposition," International Journal of Information and Decision Sciences, Inderscience Enterprises Ltd, vol. 8(1), pages 53-72.
    2. Scott Deerwester & Susan T. Dumais & George W. Furnas & Thomas K. Landauer & Richard Harshman, 1990. "Indexing by latent semantic analysis," Journal of the American Society for Information Science, Association for Information Science & Technology, vol. 41(6), pages 391-407, September.
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