款待
恐怖谷理论
旅游
机器人
解释水平理论
心理学
潜意识
含蓄的态度
服务(商务)
酒店业
社会心理学
计算机科学
认知心理学
知识管理
营销
人工智能
业务
政治学
法学
精神分析
作者
Khaoula Akdim,Daniel Belanche,Marta Flavián
出处
期刊:International Journal of Contemporary Hospitality Management
[Emerald (MCB UP)]
日期:2021-10-13
卷期号:35 (8): 2816-2837
被引量:81
标识
DOI:10.1108/ijchm-12-2020-1406
摘要
Purpose Building on both the uncanny valley and construal level theories, the analyses detailed in this paper aims to address customers’ explicit and implicit attitudes toward various service robots, categorized by the degree of their human-like appearance, namely, mechanoids (low human-likeness), humanoids (medium human-likeness) and realistic robots (high human-likeness). Design/methodology/approach The analyses reflect a mixed-method approach, across three studies. A qualitative study uses focus groups to identify consensual attitudes. An experiment measures self-reported, explicit attitudes toward the three categories of robots. Another experiment explores customers’ implicit attitudes (unconscious and unintentional) toward robots, using three implicit association tests. Findings Customers express both positive and negative attitudes toward service robots. The realistic robots lead to both explicit and implicit negative attitudes, suggesting that customers tend to reject these robots in frontline service settings. Robots with lower human-likeness levels generate relatively more positive attitudes and are accepted to nearly the same extent as human employees in hospitality and tourism contexts. Practical implications Because customers reject, both consciously and unconsciously, very human-like robots in service encounters, managers should leverage this key finding, along with the more detailed results, to inform their strategic introduction of robots into hospitality frontline service settings. Originality/value The combined qualitative and quantitative studies specify and clarify customers’ implicit and explicit attitudes toward robots with different levels of human-likeness, in the real-world setting of hospitality and tourism services. Such insights can inform continued research into the effects of these service innovations.
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