Abstract

Sentiment analysis, stance detection, and intent detection on social media texts are all significant research problems with several application opportunities. In this chapter, the authors explore the possible contribution of sentiment and intent information to machine learning-based stance detection on tweets. They first annotate a Turkish tweet dataset with sentiment and proprietary intent labels, where the dataset was already annotated with stance labels. Next, they perform stance detection experiments on the dataset using sentiment and intent labels as additional features. The experiments with SVM classifiers show that using sentiment and intent labels as additional features improves stance detection performance considerably. The final form of the dataset is made publicly available for research purposes. The findings reveal the contribution of sentiment and intent information to the solution of stance detection task on the Turkish tweet dataset employed. Yet, further studies on other datasets are needed to confirm that our findings are generalizable to other languages and on other topics.

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