Abstract
The dataset provided with this article is related to “Lowering Barriers to Plant-based Diets: The Effect of Human and Non-Human Animal Self-Similarity on Meat Avoidance Intent and Sensory Food Satisfaction” [1]. The connection between compassion and adherence to plant-based diets is intuitive. The first dataset is a sample of 372 participants in the United States that was collected online. Trait compassion, measured using the Santa Clara Brief Compassion Scale [2], is positively associated with intent to avoid dietary meat consumption. The second set of data, collected online from 131 participants in the United States, provides evidence for the underlying psychological process: the relationship between trait compassion and meat avoidance intent is serially mediated by perceived similarity to other human animals and non-human animals. Similarity scores were measured inversely as perceived distance using heat-map type questionnaire items based on inclusion-of-other-in-the-self (IOS, [3]) and relational closeness scales [4]. Demographic information, physical characteristics, and measurement of athletic identity are provided [5]. These data can be used in psychology research on food studies specifically and to glean more insight on human's connection with other animals in general [6,7]. The supplementary data on participants’ physical characteristics such as BMI, combined with measurement of athletic identity, can inform sports and nutrition science. Survey print-outs, two datasets including scale items, and scripts for analysis are provided.
| Original language | English |
|---|---|
| Article number | 107318 |
| Journal | Data in Brief |
| Volume | 38 |
| DOIs | |
| State | Published - Oct 2021 |
Keywords
- Carnism
- Compassion
- Human animal connection
- Moral self-concept
- Plant-based diet
- Psychological connection
- Self-other similarity
- Veganism
- Vegetarianism
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