English

Utility-Theoretic Ranking for Semi-Automated Text Classification

Machine Learning 2021-09-21 v1

Abstract

\emph{Semi-Automated Text Classification} (SATC) may be defined as the task of ranking a set D\mathcal{D} of automatically labelled textual documents in such a way that, if a human annotator validates (i.e., inspects and corrects where appropriate) the documents in a top-ranked portion of D\mathcal{D} with the goal of increasing the overall labelling accuracy of D\mathcal{D}, the expected increase is maximized. An obvious SATC strategy is to rank D\mathcal{D} so that the documents that the classifier has labelled with the lowest confidence are top-ranked. In this work we show that this strategy is suboptimal. We develop new utility-theoretic ranking methods based on the notion of \emph{validation gain}, defined as the improvement in classification effectiveness that would derive by validating a given automatically labelled document. We also propose a new effectiveness measure for SATC-oriented ranking methods, based on the expected reduction in classification error brought about by partially validating a list generated by a given ranking method. We report the results of experiments showing that, with respect to the baseline method above, and according to the proposed measure, our utility-theoretic ranking methods can achieve substantially higher expected reductions in classification error.

Keywords

Cite

@article{arxiv.1503.00491,
  title  = {Utility-Theoretic Ranking for Semi-Automated Text Classification},
  author = {Giacomo Berardi and Andrea Esuli and Fabrizio Sebastiani},
  journal= {arXiv preprint arXiv:1503.00491},
  year   = {2021}
}

Comments

Forthcoming on ACM Transactions on Knowledge Discovery from Data

R2 v1 2026-06-22T08:41:39.261Z