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Thurstonian Boltzmann machines: learning from multiple inequalities

Version 2 2024-06-04, 11:43
Version 1 2015-07-28, 09:29
conference contribution
posted on 2024-06-04, 11:43 authored by Truyen TranTruyen Tran, D Phung, Svetha VenkateshSvetha Venkatesh
We introduce Thurstonian Boltzmann Machines (TBM), a unified architecture that can naturally incorporate a wide range of data inputs at the same time. Our motivation rests in the Thurstonian view that many discrete data types can be considered as being generated from a subset of underlying latent continuous variables, and in the observation that each realisation of a discrete type imposes certain inequalities on those variables. Thus learning and inference in TBM reduce to making sense of a set of inequalities. Our proposed TBM naturally supports the following types: Gaussian, intervals, censored, binary, categorical, muticategorical, ordinal, (in)-complete rank with and without ties. We demonstrate the versatility and capacity of the proposed model on three applications of very different natures; namely handwritten digit recognition, collaborative filtering and complex social survey analysis. Copyright 2013 by the author(s).

History

Volume

28

Pagination

46-54

Location

Atlanta, Ga.

Start date

2013-06-16

End date

2013-06-21

Language

eng

Publication classification

E Conference publication, E1.1 Full written paper - refereed

Copyright notice

2013, IMLS

Editor/Contributor(s)

Dasgupta S, McAllester D

Title of proceedings

ICML 2013 : Proceedings of the Machine Learning 2013 International Conference

Event

Machine Learning. International Conference (30th : 2013 : Atlanta, Ga.)

Issue

2

Publisher

International Machine Learning Society (IMLS)

Place of publication

[Atlanta, Ga.]

Series

JMLR workshop and conference proceeding

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