English

Cross-Lingual Sentiment Quantification

Machine Learning 2021-09-22 v2 Information Retrieval Machine Learning

Abstract

\emph{Sentiment Quantification} (i.e., the task of estimating the relative frequency of sentiment-related classes -- such as \textsf{Positive} and \textsf{Negative} -- in a set of unlabelled documents) is an important topic in sentiment analysis, as the study of sentiment-related quantities and trends across a population is often of higher interest than the analysis of individual instances. In this work we propose a method for \emph{Cross-Lingual Sentiment Quantification}, the task of performing sentiment quantification when training documents are available for a source language S\mathcal{S} but not for the target language T\mathcal{T} for which sentiment quantification needs to be performed. Cross-lingual sentiment quantification (and cross-lingual \emph{text} quantification in general) has never been discussed before in the literature; we establish baseline results for the binary case by combining state-of-the-art quantification methods with methods capable of generating cross-lingual vectorial representations of the source and target documents involved. We present experimental results obtained on publicly available datasets for cross-lingual sentiment classification; the results show that the presented methods can perform cross-lingual sentiment quantification with a surprising level of accuracy.

Keywords

Cite

@article{arxiv.1904.07965,
  title  = {Cross-Lingual Sentiment Quantification},
  author = {Andrea Esuli and Alejandro Moreo and Fabrizio Sebastiani},
  journal= {arXiv preprint arXiv:1904.07965},
  year   = {2021}
}

Comments

Identical to previous version, but for the abstract, which is now identical to the one in the published version

R2 v1 2026-06-23T08:42:01.015Z