TY - JOUR JF - ITRC JO - VL - 14 IS - 4 PY - 2022 Y1 - 2022/12/01 TI - Stance Detection Dataset for Persian Tweets TT - N2 - Stance detection aims to identify an author's stance towards a specific topic which has become a critical component in applications such as fake news detection, claim validation, author profiling, etc. However, while the stance is easily detected by humans, machine learning models are falling short of this task. In the English language, due to having large and appropriate e datasets, relatively good accuracy has been achieved in this field, but in the Persian language, due to the lack of data, we have not made significant progress in stance detection. So, in this paper, we present a stance detection dataset that contains 3813 labeled tweets. We provide a detailed description of the newly created dataset and develop deep learning models on it. Our best model achieves a macro-average F1-score of 58%. Moreover, our dataset can facilitate research in some fields in Persian such as cross-lingual stance detection, author profiling, etc. SP - 46 EP - 54 AU - Bokaei, Mohammad Hadi AU - Farhoodi, Mojgan AU - Davoudi, Mona AD - ICT Research Institute (ITRC) Tehran, Iran KW - stance detection KW - fake news KW - social media KW - twitter KW - Persian dataset KW - author profiling UR - http://ijict.itrc.ac.ir/article-1-544-en.html DO - 10.52547/itrc.14.4.46 ER -