Scalable Optimization of Multivariate Performance Measures in Multi-instance Multi-label Learning

Authors

  • Apoorv Aggarwal Indian Institute of Technology Bombay
  • Sandip Ghoshal Indian Institute of Technology Bombay
  • Ankith Shetty Indian Institute of Technology Bombay
  • Suhit Sinha Indian Institute of Technology Bombay
  • Ganesh Ramakrishnan Indian Institute of Technology Bombay
  • Purushottam Kar Indian Institute of Technology Kanpur
  • Prateek Jain Microsoft Research

DOI:

https://doi.org/10.1609/aaai.v31i1.10947

Keywords:

Distant Supervision, Relation Extraction, Multi-instance Learning, Macro-F Measure, Plug-in Classifiers

Abstract

The problem of multi-instance multi-label learning (MIML) requires a bag of instances to be assigned a set of labels most relevant to the bag as a whole. The problem finds numerous applications in machine learning, computer vision, and natural language processing settings where only partial or distant supervision is available. We present a novel method for optimizing multivariate performance measures in the MIML setting. Our approach MIML-perf uses a novel plug-in technique and offers a seamless way to optimize a vast variety of performance measures such as macro and micro-F measure, average precision, which are performance measures of choice in multi-label learning domains. MIML-perf offers two key benefits over the state of the art. Firstly, across a diverse range of benchmark tasks, ranging from relation extraction to text categorization and scene classification, MIML-perf offers superior performance as compared to state of the art methods designed specifically for these tasks. Secondly, MIML-perf operates with significantly reduced running times as compared to other methods, often by an order of magnitude or more.

Downloads

Published

2017-02-13

How to Cite

Aggarwal, A., Ghoshal, S., Shetty, A., Sinha, S., Ramakrishnan, G., Kar, P., & Jain, P. (2017). Scalable Optimization of Multivariate Performance Measures in Multi-instance Multi-label Learning. Proceedings of the AAAI Conference on Artificial Intelligence, 31(1). https://doi.org/10.1609/aaai.v31i1.10947