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Title: The More Who Die, the Less We Care: Evidence from Natural Language Analysis of Online News Articles and Social Media Posts
Considerable amount of laboratory and survey‐based research finds that people show disproportional compassionate and affective response to the scope of human mortality risk. According to research on “psychic numbing,” it is often the case that the more who die, the less we care. In the present article, we examine the extent of this phenomenon in verbal behavior, using large corpora of natural language to quantify the affective reactions to loss of life. We analyze valence, arousal, and specific emotional content of over 100,000 mentions of death in news articles and social media posts, and find that language shows an increase in valence (i.e., decreased negative affect) and a decrease in arousal when describing mortality of larger numbers of people. These patterns are most clearly reflected in specific emotions of joy and (in a reverse fashion) of fear and anger. Our results showcase a novel methodology for studying affective decision making, and highlight the robustness and real‐world relevance of psychic numbing. They also offer new insights regarding the psychological underpinnings of psychic numbing, as well as possible interventions for reducing psychic numbing and overcoming social and psychological barriers to action in the face of the world's most serious threats.  more » « less
Award ID(s):
1847794
PAR ID:
10213230
Author(s) / Creator(s):
; ; ;
Date Published:
Journal Name:
Risk Analysis
ISSN:
0272-4332
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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