2017
Conference article  Open Access

Upper bound approximations for BlockMaxWand

Macdonald C., Tonellotto N.

BlockMaxWand  Wand  Upper-bounds approximations 

BlockMaxWand is a recent advance on the Wand dynamic pruning technique, which allows efficient retrieval without any e.ectiveness degradation to rank K. However, while BMW uses docid-sorted indices, it relies on recording the upper bound of the term weighting model scores for each block of postings in the inverted index. Such a requirement can be disadvantageous in situations such as when an index must be updated. In this work, we examine the appropriateness of upper-bound approximation - which have previously been shown suitable for Wand- in providing efficient retrieval for BMW. Experiments on the ClueWeb12 category B13 corpus using 5000 queries from a real search engine's query log demonstrate that BMW still provides benefits w.r.t. Wand when approximate upper bounds are used, and that, if approximations on upper bounds are tight, BMW with approximate upper bounds can provide eficiency gains w.r.t. Wand with exact upper bounds, in particular for queries of short to medium length.

Source: ICTIR 2017 - 3rd ACM International Conference on the Theory of Information Retrieval, pp. 273–276, Amsterdam, The Netherlands, 1-4 October, 2017


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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:384714,
	title = {Upper bound approximations for BlockMaxWand},
	author = {Macdonald C. and Tonellotto N.},
	doi = {10.1145/3121050.3121094},
	booktitle = {ICTIR 2017 - 3rd ACM International Conference on the Theory of Information Retrieval, pp. 273–276, Amsterdam, The Netherlands, 1-4 October, 2017},
	year = {2017}
}