“…Information to Extract. Based on the large textual corpora, NLP models can be used to extract information that are useful for political decision-making, ranging from information about people, such as sentiment (Thelwall et al, 2011;Rosenthal et al, 2015), stance (Thomas et al, 2006;Gottipati et al, 2013;Stefanov et al, 2020;Luo et al, 2020), ideology (Hirst et al, 2010;Iyyer et al, 2014;Preoţiuc-Pietro et al, 2017), and reasoning on certain topics (Egami et al, 2018;Demszky et al, 2019;Camp et al, 2021), to factual information, such as main topics (Gottipati et al, 2013), events (Trappl, 2006;Mitamura et al, 2017;Ding and Riloff, 2018;Ding et al, 2019), andneeds (Sarol et al, 2020;Crayton et al, 2020;Paul and Frank, 2019) expressed in the data. The extracted information cannot only be about people, but also about political entities, such as the left-right political scales of parties and political actors (Slapin and Proksch, 2008;Glavaš et al, 2017b), which claims are raised by which politicians , and the legislative body's vote breakdown for state bills by backgrounds such as gender, rural-urban and ideological splits Davoodi et al (2020).…”