Literature DB >> 25927015

An Optimization-based Framework to Learn Conditional Random Fields for Multi-label Classification.

Mahdi Pakdaman Naeini1, Iyad Batal2, Zitao Liu3, CharmGil Hong3, Milos Hauskrecht3.   

Abstract

This paper studies multi-label classification problem in which data instances are associated with multiple, possibly high-dimensional, label vectors. This problem is especially challenging when labels are dependent and one cannot decompose the problem into a set of independent classification problems. To address the problem and properly represent label dependencies we propose and study a pairwise conditional random Field (CRF) model. We develop a new approach for learning the structure and parameters of the CRF from data. The approach maximizes the pseudo likelihood of observed labels and relies on the fast proximal gradient descend for learning the structure and limited memory BFGS for learning the parameters of the model. Empirical results on several datasets show that our approach outperforms several multi-label classification baselines, including recently published state-of-the-art methods.

Entities:  

Year:  2014        PMID: 25927015      PMCID: PMC4410807          DOI: 10.1137/1.9781611973440.113

Source DB:  PubMed          Journal:  Proc SIAM Int Conf Data Min


  1 in total

1.  A Mixtures-of-Trees Framework for Multi-Label Classification.

Authors:  Charmgil Hong; Iyad Batal; Milos Hauskrecht
Journal:  Proc ACM Int Conf Inf Knowl Manag       Date:  2014
  1 in total

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