AI-enabled investment advice: will users buy it?
The objective of this paper is to develop and empirically validate a conceptual model that explains individuals' behavioral intention to accept AI-based recommendations as a function of attitude toward AI, trust, perceived accuracy and uncertainty level. The conceptual model was tested through...
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sg-ntu-dr.10356-1632162022-11-29T02:15:39Z AI-enabled investment advice: will users buy it? Chua, Alton Yeow Kuan Pal, Anjan Banerjee, Snehasish Wee Kim Wee School of Communication and Information Social sciences::Communication AI-Based Recommendation Decision Sciences The objective of this paper is to develop and empirically validate a conceptual model that explains individuals' behavioral intention to accept AI-based recommendations as a function of attitude toward AI, trust, perceived accuracy and uncertainty level. The conceptual model was tested through a between-participants experiment using a simulated AI-enabled investment recommendation system. A total of 368 participants were randomly and evenly assigned to one of the two experimental conditions, one depicting low-uncertainty investment recommendation involving blue-chip stocks while the other depicting high-uncertainty investment recommendation involving penny stocks. Results show that attitude toward AI was positively associated with behavioral intention to accept AI-based recommendations, trust in AI, and perceived accuracy of AI. Furthermore, uncertainty level moderated how attitude, trust and perceived accuracy varied with behavioral intention to accept AI-based recommendations. When uncertainty was low, a favorable attitude toward AI seemed sufficient to promote reliance on automation. However, when uncertainty was high, a favorable attitude toward AI was a necessary but no longer sufficient condition for AI acceptance. Thus, the paper contributes to the human-AI interaction literature by not only shedding light on the underlying psychological mechanism of how users decide to accept AI-enabled advice but also adding to the scholarly understanding of AI recommendation systems in tasks that call for intuition in high involvement services. 2022-11-29T02:15:38Z 2022-11-29T02:15:38Z 2023 Journal Article Chua, A. Y. K., Pal, A. & Banerjee, S. (2023). AI-enabled investment advice: will users buy it?. Computers in Human Behavior, 138, 107481-. https://dx.doi.org/10.1016/j.chb.2022.107481 0747-5632 https://hdl.handle.net/10356/163216 10.1016/j.chb.2022.107481 2-s2.0-85137728976 138 107481 en Computers in Human Behavior © 2022 Elsevier Ltd. All rights reserved. |
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Social sciences::Communication AI-Based Recommendation Decision Sciences Chua, Alton Yeow Kuan Pal, Anjan Banerjee, Snehasish AI-enabled investment advice: will users buy it? |
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The objective of this paper is to develop and empirically validate a conceptual model that explains individuals' behavioral intention to accept AI-based recommendations as a function of attitude toward AI, trust, perceived accuracy and uncertainty level. The conceptual model was tested through a between-participants experiment using a simulated AI-enabled investment recommendation system. A total of 368 participants were randomly and evenly assigned to one of the two experimental conditions, one depicting low-uncertainty investment recommendation involving blue-chip stocks while the other depicting high-uncertainty investment recommendation involving penny stocks. Results show that attitude toward AI was positively associated with behavioral intention to accept AI-based recommendations, trust in AI, and perceived accuracy of AI. Furthermore, uncertainty level moderated how attitude, trust and perceived accuracy varied with behavioral intention to accept AI-based recommendations. When uncertainty was low, a favorable attitude toward AI seemed sufficient to promote reliance on automation. However, when uncertainty was high, a favorable attitude toward AI was a necessary but no longer sufficient condition for AI acceptance. Thus, the paper contributes to the human-AI interaction literature by not only shedding light on the underlying psychological mechanism of how users decide to accept AI-enabled advice but also adding to the scholarly understanding of AI recommendation systems in tasks that call for intuition in high involvement services. |
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Wee Kim Wee School of Communication and Information |
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Wee Kim Wee School of Communication and Information Chua, Alton Yeow Kuan Pal, Anjan Banerjee, Snehasish |
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Article |
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Chua, Alton Yeow Kuan Pal, Anjan Banerjee, Snehasish |
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Chua, Alton Yeow Kuan |
title |
AI-enabled investment advice: will users buy it? |
title_short |
AI-enabled investment advice: will users buy it? |
title_full |
AI-enabled investment advice: will users buy it? |
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AI-enabled investment advice: will users buy it? |
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AI-enabled investment advice: will users buy it? |
title_sort |
ai-enabled investment advice: will users buy it? |
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2022 |
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https://hdl.handle.net/10356/163216 |
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1751548516740628480 |