| Literature DB >> 33575985 |
Miriam Koschate1,2, Elahe Naserian3, Luke Dickens4, Avelie Stuart3, Alessandra Russo5, Mark Levine3,6.
Abstract
The various group and category memberships that we hold are at the heart of who we are. They have been shown to affect our thoughts, emotions, behavior, and social relations in a variety of social contexts, and have more recently been linked to our mental and physical well-being. Questions remain, however, over the dynamics between different group memberships and the ways in which we cognitively and emotionally acquire these. In particular, current assessment methods are missing that can be applied to naturally occurring data, such as online interactions, to better understand the dynamics and impact of group memberships in naturalistic settings. To provide researchers with a method for assessing specific group memberships of interest, we have developed ASIA (Automated Social Identity Assessment), an analytical protocol that uses linguistic style indicators in text to infer which group membership is salient in a given moment, accompanied by an in-depth open-source Jupyter Notebook tutorial ( https://github.com/Identity-lab/Tutorial-on-salient-social-Identity-detection-model ). Here, we first discuss the challenges in the study of salient group memberships, and how ASIA can address some of these. We then demonstrate how our analytical protocol can be used to create a method for assessing which of two specific group memberships-parents and feminists-is salient using online forum data, and how the quality (validity) of the measurement and its interpretation can be tested using two further corpora as well as an experimental study. We conclude by discussing future developments in the field.Entities:
Keywords: Natural language processing; Psychological assessment; Social categorization; Social identity; Social media data
Mesh:
Year: 2021 PMID: 33575985 PMCID: PMC8367904 DOI: 10.3758/s13428-020-01511-3
Source DB: PubMed Journal: Behav Res Methods ISSN: 1554-351X
Fig. 1Predictive performance (AUC) by word count cutoff for Study 1 (Mumsnet data); the hyphenated vertical line indicates Quartile 1
Fig. 2Predictive performance (mean AUC) for training and test data (Mumsnet), cross-platform test (Reddit), and experimental data; error bars show 95% confidence intervals, the dotted horizontal line indicates no class separation (i.e., “guessing accuracy”)
Fig. 3Standardized coefficients with standard error for Study 1 training data (Mumsnet); negative coefficients (on the left) indicate parent identity salience, positive coefficients (on the right) indicate feminist identity salience
Fig. 4ROC for cross-platform testing (Study 3)
Predictive accuracy for three topics with experimentally manipulated social identity
| Topic | AUC | Asymptotic 95% | |
|---|---|---|---|
| Identity neutral | .71 | .080 | .554; .866 |
| Feminist | .68 | .082 | .518; .841 |
| Parent | .69 | .082 | .529; .850 |
Fig. 5ROC for Studies 3 and 4
Number of participants for PND and no PND groups across four time points
| Groups | ||||
|---|---|---|---|---|
| PND (max | 47 (92%) | 34 (67%) | 30 (59%) | 29 (57%) |
| No PND (max | 233 (94%) | 168 (68%) | 157 (64%) | 144 (58%) |
Fig. 6Parent identity salience after birth to three months postnatally for primiparous mothers with postnatal mental health difficulties (PND true) and those who do not report such difficulties (PND false); gray shading indicates uncertainty in the estimate