Advances in Psychological Science ›› 2024, Vol. 32 ›› Issue (1): 162-176.doi: 10.3724/SP.J.1042.2024.00162
• Regular Articles • Previous Articles Next Articles
Received:
2023-03-28
Online:
2024-01-15
Published:
2023-10-25
Contact:
YIN Meng
E-mail:yinmeng1231@qq.com
CLC Number:
YIN Meng, NIU Xiongying. Dancing with AI: AI-employee collaboration in the systemic view[J]. Advances in Psychological Science, 2024, 32(1): 162-176.
要点 | 详情 |
---|---|
最后检索时间 | 2023年5月15日 |
数据来源 | (1)Web of Science核心合集SSCI数据库 (2)中国知网CSSCI数据库 |
检索语句 | TS = (Artificial intelligence OR Human-AI collaboration OR Human-AI interaction OR Human-robot collaboration), 中文检索词一致 |
筛选依据 | (1)将研究方向限定为商业(business)、管理(management)、应用心理学(applied psychology)的相关方向; (2)由于初筛获得了超过两千条结果, 本文进一步筛查了管理学、人力资源管理与组织行为学、应用心理学、管理信息系统领域的重点期刊, 共38本; (3)逐个阅读检索文章的标题、摘要, 进一步剔除重复和不相关的文献; (4)采用“滚雪球”的检索方法, 仔细查阅已筛选出来的文献, 对引用的重要研究进行整理, 收集遗漏文献作为补充 |
筛选结果 | 合计109篇相关文献 |
要点 | 详情 |
---|---|
最后检索时间 | 2023年5月15日 |
数据来源 | (1)Web of Science核心合集SSCI数据库 (2)中国知网CSSCI数据库 |
检索语句 | TS = (Artificial intelligence OR Human-AI collaboration OR Human-AI interaction OR Human-robot collaboration), 中文检索词一致 |
筛选依据 | (1)将研究方向限定为商业(business)、管理(management)、应用心理学(applied psychology)的相关方向; (2)由于初筛获得了超过两千条结果, 本文进一步筛查了管理学、人力资源管理与组织行为学、应用心理学、管理信息系统领域的重点期刊, 共38本; (3)逐个阅读检索文章的标题、摘要, 进一步剔除重复和不相关的文献; (4)采用“滚雪球”的检索方法, 仔细查阅已筛选出来的文献, 对引用的重要研究进行整理, 收集遗漏文献作为补充 |
筛选结果 | 合计109篇相关文献 |
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