BackgroundWhile research has documented negative social and academic consequences that occur when students experience peer exclusion, few studies have been conducted to investigate teachers’ evaluations of peer exclusion. AimsThis study investigated whether ethnic and gender biases enter teachers’ evaluations of classroom peer exclusion that met criteria for bullying. SampleTeachers (N = 740; 77% female) of early and middle adolescents participated in the study. Participants were recruited from 118 elementary and secondary schools across the Czech Republic. MethodsUsing a between‐subjects design, teachers evaluated a scenario of classroom peer exclusion initiated by majority ethnic (Czech) students. The scenarios varied contextual characteristics: target’s ethnicity (majority Czech vs. minority Arab), target’s gender, and excluders’ gender. ResultsAnalyses revealed several subtle contextual effects. Although teachers viewed exclusion as having a more negative impact for the fair treatment of Arab targets than for Czech targets, their reasoning about the wrongfulness of such exclusion was less focused on the moral concerns about fairness for Arab than for Czech targets. In contrast to girl targets, teachers were less concerned about the harmful impact on exclusion for boy targets when considering intervention. Excluders’ gender had significant interactions with the target’s gender on reasoning about wrongfulness of exclusion and the target’s ethnicity for viewing exclusion as impairing the target’s academic engagement. ConclusionsThe findings of subtle ethnic and gender biases underscore the need for research on teacher perspectives on peer exclusion and for training teachers how to address peer exclusion in the classroom across various contexts.
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Selection of and Response to Physical Activity–Based Social Comparisons in a Digital Environment: Series of Daily Assessment Studies
BackgroundInnovative approaches are needed to understand barriers to and facilitators of physical activity among insufficiently active adults. Although social comparison processes (ie, self-evaluations relative to others) are often used to motivate physical activity in digital environments, user preferences and responses to comparison information are poorly understood. ObjectiveWe used an iterative approach to better understand users’ selection of comparison targets, how they interacted with their selected targets, and how they responded to these targets. MethodsAcross 3 studies, different samples of insufficiently active college students used the Fitbit system (Fitbit LLC) to track their steps per day as well as a separate, adaptive web platform each day for 7 to 9 days (N=112). The adaptive platform was designed with different layouts for each study; each allowed participants to select their preferred comparison target from various sets of options, view the desired amount of information about their selected target, and rate their physical activity motivation before and after viewing information about their selected target. Targets were presented as achieving physical activity at various levels below and above their own, which were accessed via the Fitbit system each day. We examined the types of comparison target selections, time spent viewing and number of elements viewed for each type of target, and day-level associations between comparison selections and physical activity outcomes (motivation and behavior). ResultsStudy 1 (n=5) demonstrated that the new web platform could be used as intended and that participants’ interactions with the platform (ie, the type of target selected, the time spent viewing the selected target’s profile, and the number of profile elements viewed) varied across the days. Studies 2 (n=53) and 3 (n=54) replicated these findings; in both studies, age was positively associated with time spent viewing the selected target’s profile and the number of profile elements viewed. Across all studies, upward targets (who had more steps per day than the participant) were selected more often than downward targets (who had fewer steps per day than the participant), although only a subset of either type of target selection was associated with benefits for physical activity motivation or behavior. ConclusionsCapturing physical activity–based social comparison preferences is feasible in an adaptive digital environment, and day-to-day differences in preferences for social comparison targets are associated with day-to-day changes in physical activity motivation and behavior. Findings show that participants only sometimes focus on the comparison opportunities that support their physical activity motivation or behavior, which helps explain previous, equivocal findings regarding the benefits of physical activity–based comparisons. Additional investigation of day-level determinants of comparison selections and responses is needed to fully understand how best to harness comparison processes in digital tools to promote physical activity.
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- Award ID(s):
- 1816470
- PAR ID:
- 10482035
- Publisher / Repository:
- JMIR Publications
- Date Published:
- Journal Name:
- JMIR Human Factors
- Volume:
- 10
- ISSN:
- 2292-9495
- Page Range / eLocation ID:
- e41239
- Format(s):
- Medium: X
- Sponsoring Org:
- National Science Foundation
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