Author: Joseph, Kenneth; Shugars, Sarah; Gallagher, Ryan; Green, Jon; Math'e, Alexi Quintana; An, Zijian; Lazer, David
                    Title: (Mis)alignment Between Stance Expressed in Social Media Data and Public Opinion Surveys  Cord-id: 0gzfxft0  Document date: 2021_9_4
                    ID: 0gzfxft0
                    
                    Snippet: Stance detection, which aims to determine whether an individual is for or against a target concept, promises to uncover public opinion from large streams of social media data. Yet even human annotation of social media content does not always capture"stance"as measured by public opinion polls. We demonstrate this by directly comparing an individual's self-reported stance to the stance inferred from their social media data. Leveraging a longitudinal public opinion survey with respondent Twitter ha
                    
                    
                    
                     
                    
                    
                    
                    
                        
                            
                                Document: Stance detection, which aims to determine whether an individual is for or against a target concept, promises to uncover public opinion from large streams of social media data. Yet even human annotation of social media content does not always capture"stance"as measured by public opinion polls. We demonstrate this by directly comparing an individual's self-reported stance to the stance inferred from their social media data. Leveraging a longitudinal public opinion survey with respondent Twitter handles, we conducted this comparison for 1,129 individuals across four salient targets. We find that recall is high for both"Pro"and"Anti"stance classifications but precision is variable in a number of cases. We identify three factors leading to the disconnect between text and author stance: temporal inconsistencies, differences in constructs, and measurement errors from both survey respondents and annotators. By presenting a framework for assessing the limitations of stance detection models, this work provides important insight into what stance detection truly measures.
 
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