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Probabilistic models over ordered partitions with application in learning to rank

Version 2 2024-06-03, 17:51
Version 1 2011-01-01, 00:00
conference contribution
posted on 2024-06-03, 17:51 authored by Tran The Truyen, Dinh Q Phung, Svetha VenkateshSvetha Venkatesh
This paper addresses the general problem of modelling and learning rank data with ties. We propose a probabilistic generative model, that models the process as permutations over partitions. This results in super-exponential combinatorial state space with unknown numbers of partitions and unknown ordering among them. We approach the problem from the discrete choice theory, where subsets are chosen in a stagewise manner, reducing the state space per each stage significantly. Further, we show that with suitable parameterisation, we can still learn the models in linear time. We evaluate the proposed models on the problem of learning to rank with the data from the recently held Yahoo! challenge, and demonstrate that the models are competitive against well-known rivals.

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Location

Mesa, Arizona

Language

eng

Publication classification

EN.1 Other conference paper

Copyright notice

2011, SIAM

Start date

2011-04-28

End date

2011-04-30

ISBN-13

9780898719925

Title of proceedings

SIAM 2011 : Proceedings of the 11th SIAM International Conference on Data Mining

Event

Data Mining. International Conference (11th : 2011 : Mesa, Arizona)

Publisher

SIAM

Place of publication

[Mesa, Arizona]

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