Gradient Boosting for Conditional Random Fields

Abstract

In this paper, we present a gradient boosting algorithm for tree-shaped conditional random fields (CRF). Conditional random fields are an important class of models for accurate structured prediction, but effective design of the feature functions is a major challenge when applying CRF models to real world data. Gradient boosting, which can induce and select functions, is a natural candidate solution for the problem. However, it is non-trivial to derive gradient boosting algorithms for CRFs, due to the dense Hessian matrices introduced by variable dependencies. We address this challenge by deriving a Markov Chain mixing rate bound to quantify the dependencies, and introduce a gradient boosting algorithm that iteratively optimizes an adaptive upper bound of the objective function. The resulting algorithm induces and selects features for CRFs via functional space optimization, with provable convergence guarantees. Experimental results on three real world datasets demonstrate that the mixing rate based upper bound is effective for training CRFs with non-linear potentials.

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Document Details

Document Type
Technical Report
Publication Date
Sep 23, 2014
Accession Number
ADA612906

Entities

People

  • Carlos Guestrin
  • Sameer Singh
  • Tianqi Chen

Organizations

  • University of Washington

Tags

Communities of Interest

  • Autonomy

DTIC Thesaurus Topics

  • Algorithms
  • Artificial Intelligence Software
  • Bayesian Networks
  • Computer Languages
  • Computer Programming
  • Computers
  • Data Sets
  • Dynamic Programming
  • Information Science
  • Language
  • Machine Learning
  • Markov Chains
  • Models
  • Network Science
  • Neural Networks
  • Probabilistic Models
  • Recognition

Fields of Study

  • Computer science

Readers

  • Computational Modeling and Simulation
  • Mathematical Modeling and Probability Theory.
  • Operations Research

Technology Areas

  • AI & ML
  • AI & ML - Machine Learning Algorithms
  • Space