A Review of Sentiment Analysis for Non-English Language

Recent researches show extensive progresses in integration of sentiment analysis in the English language. On the other hand, the development of sentiment analysis for non-English languages is still infancy. The article discusses non-English language as an object to review the sentiment analysis process. As a result, this article provides and evaluates information on what process that should be considered, what the recent workshops on sentiment analysis, and what challenges that should be solved in non-English sentiment analysis.

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