Markov Network Structure Learning: A Randomized Feature Generation Approach

Authors

  • Jan Van Haaren KU Leuven - University of Leuven
  • Jesse Davis KU Leuven - University of Leuven

DOI:

https://doi.org/10.1609/aaai.v26i1.8315

Keywords:

Markov network, Markov random field, log-linear model, structure learning, randomization, specific-to-general search

Abstract

The structure of a Markov network is typically learned in one of two ways. The first approach is to treat this task as a global search problem. However, these algorithms are slow as they require running the expensive operation of weight (i.e., parameter) learning many times. The second approach involves learning a set of local models and then combining them into a global model. However, it can be computationally expensive to learn the local models for datasets that contain a large number of variables and/or examples. This paper pursues a third approach that views Markov network structure learning as a feature generation problem. The algorithm combines a data-driven, specific-to-general search strategy with randomization to quickly generate a large set of candidate features that all have support in the data. It uses weight learning, with L1 regularization, to select a subset of generated features to include in the model. On a large empirical study, we find that our algorithm is equivalently accurate to other state-of-the-art methods while exhibiting a much faster run time.

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Published

2021-09-20

How to Cite

Van Haaren, J., & Davis, J. (2021). Markov Network Structure Learning: A Randomized Feature Generation Approach. Proceedings of the AAAI Conference on Artificial Intelligence, 26(1), 1148-1154. https://doi.org/10.1609/aaai.v26i1.8315

Issue

Section

AAAI Technical Track: Machine Learning