LGMLFeb 24, 2016

Asymptotic consistency and order specification for logistic classifier chains in multi-label learning

arXiv:1602.07466v11 citations
Originality Incremental advance
AI Analysis

This work addresses theoretical gaps in multi-label learning for researchers, though it is incremental as it builds on existing classifier chain methods.

The paper tackles the asymptotic consistency of logistic classifier chains in multi-label learning, establishing conditions for convergence to the true mode and proposing a method to determine optimal label ordering, with numerical experiments validating the theoretical findings.

Classifier chains are popular and effective method to tackle a multi-label classification problem. The aim of this paper is to study the asymptotic properties of the chain model in which the conditional probabilities are of the logistic form. In particular we find conditions on the number of labels and the distribution of feature vector under which the estimated mode of the joint distribution of labels converges to the true mode. Best of our knowledge, this important issue has not yet been studied in the context of multi-label learning. We also investigate how the order of model building in a chain influences the estimation of the joint distribution of labels. We establish the link between the problem of incorrect ordering in the chain and incorrect model specification. We propose a procedure of determining the optimal ordering of labels in the chain, which is based on using measures of correct specification and allows to find the ordering such that the consecutive logistic models are best possibly specified. The other important question raised in this paper is how accurately can we estimate the joint posterior probability when the ordering of labels is wrong or the logistic models in the chain are incorrectly specified. The numerical experiments illustrate the theoretical results.

Foundations

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