Litcius/Paper detail

Deep Persian sentiment analysis: Cross-lingual training for low-resource languages

Rouzbeh Ghasemi, Seyed Arad Ashrafi Asli, Saeedeh Momtazi

2020Journal of Information Science49 citationsDOI

Abstract

With the advent of deep neural models in natural language processing tasks, having a large amount of training data plays an essential role in achieving accurate models. Creating valid training data, however, is a challenging issue in many low-resource languages. This problem results in a significant difference between the accuracy of available natural language processing tools for low-resource languages compared with rich languages. To address this problem in the sentiment analysis task in the Persian language, we propose a cross-lingual deep learning framework to benefit from available training data of English. We deployed cross-lingual embedding to model sentiment analysis as a transfer learning model which transfers a model from a rich-resource language to low-resource ones. Our model is flexible to use any cross-lingual word embedding model and any deep architecture for text classification. Our experiments on English Amazon dataset and Persian Digikala dataset using two different embedding models and four different classification networks show the superiority of the proposed model compared with the state-of-the-art monolingual techniques. Based on our experiment, the performance of Persian sentiment analysis improves 22% in static embedding and 9% in dynamic embedding. Our proposed model is general and language-independent; that is, it can be used for any low-resource language, once a cross-lingual embedding is available for the source–target language pair. Moreover, by benefitting from word-aligned cross-lingual embedding, the only required data for a reliable cross-lingual embedding is a bilingual dictionary that is available between almost all languages and the English language, as a potential source language.

Topics & Concepts

Computer scienceWord embeddingNatural language processingSentiment analysisArtificial intelligenceEmbeddingDeep learningTransfer of learningWord (group theory)Resource (disambiguation)LinguisticsPhilosophyComputer networkSentiment Analysis and Opinion MiningTopic ModelingNatural Language Processing Techniques