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  4. Mallows models for top-k lists
 
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Mallows models for top-k lists

Source
Advances in Neural Information Processing Systems
ISSN
10495258
Date Issued
2018-01-01
Author(s)
Chierichetti, Flavio
Haddadan, Shahrzad
Dasgupta, Anirban  
Kumar, Ravi
Lattanzi, Silvio
Volume
2018-December
Abstract
The classic Mallows model is a widely-used tool to realize distributions on permutations. Motivated by common practical situations, in this paper, we generalize Mallows to model distributions on top-k lists by using a suitable distance measure between top-k lists. Unlike many earlier works, our model is both analytically tractable and computationally efficient. We demonstrate this by studying two basic problems in this model, namely, sampling and reconstruction, from both algorithmic and experimental points of view.
URI
https://d8.irins.org/handle/IITG2025/23472
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