The Potential of Learned Index Structures for Index Compression

Authors
Publication date 2018
Host editors
  • B. Koopman
  • A. Trotman
  • P. Thomas
Book title ADCS 2018
Book subtitle proceedings of the 23rd Australasian Document Computing Symposium : Dunedin, New Zealand, December 11-12, 2018
ISBN (electronic)
  • 9781450365499
Event 23rd Australasian Document Computing Symposium
Article number 7
Number of pages 4
Publisher New York, NY: ACM
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Inverted indexes are vital in providing fast key-word-based search. For every term in the document collection, a list of identifiers of documents in which the term appears is stored, along with auxiliary information such as term frequency, and position offsets. While very effective, inverted indexes have large memory requirements for web-sized collections. Recently, the concept of learned index structures was introduced, where machine learned models replace common index structures such as B-tree-indexes, hash-indexes, and bloom-filters. These learned index structures require less memory, and can be computationally much faster than their traditional counterparts. In this paper, we consider whether such models may be applied to conjunctive Boolean querying. First, we investigate how a learned model can replace document postings of an inverted index, and then evaluate the compromises such an approach might have. Second, we evaluate the potential gains that can be achieved in terms of memory requirements. Our work shows that learned models have great potential in inverted indexing, and this direction seems to be a promising area for future research.
Document type Conference contribution
Language English
Published at https://doi.org/10.1145/3291992.3291993
Other links http://adcs-conference.org/2018/
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