Exploring consumers' response to text-based chatbots in e-commerce: the moderating role of task complexity and chatbot disclosure
Exploring consumers' response to text-based chatbots in e-commerce: the moderating role of task complexity and chatbot disclosure
Purpose – Artificial intelligence (AI)-based chatbots have brought unprecedented business potential. This study aims to explore consumers’ trust and response to a text-based chatbot in e-commerce, involving the moderating effects of task complexity and chatbot identity disclosure.
Design/methodology/approach – a survey method with 299 useable responses was conducted in this research. This study adopted the ordinary least squares regression to test the hypotheses.
Findings – first, the consumers’ perception of both the empathy and friendliness of the chatbot positively impacts their trust in it. Second, task complexity negatively moderates the relationship between friendliness and consumers’ trust. Third, disclosure of the text-based chatbot negatively moderates the relationship between empathy and consumers’ trust, while it positively moderates the relationship between friendliness and consumers’ trust. Fourth, consumers’ trust in the chatbot increases their reliance on the chatbot and decreases their resistance to the chatbot in future interactions.
Research limitations/implications – adopting the stimulus–organism–response (SOR) framework, this study provides important insights on consumers’ perception and response to the text-based chatbot. The findings of this research also make suggestions that can increase consumers’ positive responses to text-based chatbots.
Originality/value – extant studies have investigated the effects of automated bots’ attributes on consumers’ perceptions. However, the boundary conditions of these effects are largely ignored. This research is one of the first attempts to provide a deep understanding of consumers’ responses to a chatbot.
Text-based chatbot, Trust, Consumers’ response, Task complexity, Identity disclosure
496-517
Cheng, Xusen
f88a8aee-cd1d-46f7-8169-8448252003df
Bao, Ying
8015e87c-c1aa-4040-9e9c-aeb36c469908
Zarifis, Alex
7622e840-ba78-4a4f-879b-6ba0f62363cc
Gong, Wankun
de158aec-ff00-416d-80a0-af1bad590ce7
Mou, Jian
d51e14e4-5f29-446f-9ffe-f73695503091
15 March 2022
Cheng, Xusen
f88a8aee-cd1d-46f7-8169-8448252003df
Bao, Ying
8015e87c-c1aa-4040-9e9c-aeb36c469908
Zarifis, Alex
7622e840-ba78-4a4f-879b-6ba0f62363cc
Gong, Wankun
de158aec-ff00-416d-80a0-af1bad590ce7
Mou, Jian
d51e14e4-5f29-446f-9ffe-f73695503091
Cheng, Xusen, Bao, Ying, Zarifis, Alex, Gong, Wankun and Mou, Jian
(2022)
Exploring consumers' response to text-based chatbots in e-commerce: the moderating role of task complexity and chatbot disclosure.
Internet Research, 32 (2), .
Abstract
Purpose – Artificial intelligence (AI)-based chatbots have brought unprecedented business potential. This study aims to explore consumers’ trust and response to a text-based chatbot in e-commerce, involving the moderating effects of task complexity and chatbot identity disclosure.
Design/methodology/approach – a survey method with 299 useable responses was conducted in this research. This study adopted the ordinary least squares regression to test the hypotheses.
Findings – first, the consumers’ perception of both the empathy and friendliness of the chatbot positively impacts their trust in it. Second, task complexity negatively moderates the relationship between friendliness and consumers’ trust. Third, disclosure of the text-based chatbot negatively moderates the relationship between empathy and consumers’ trust, while it positively moderates the relationship between friendliness and consumers’ trust. Fourth, consumers’ trust in the chatbot increases their reliance on the chatbot and decreases their resistance to the chatbot in future interactions.
Research limitations/implications – adopting the stimulus–organism–response (SOR) framework, this study provides important insights on consumers’ perception and response to the text-based chatbot. The findings of this research also make suggestions that can increase consumers’ positive responses to text-based chatbots.
Originality/value – extant studies have investigated the effects of automated bots’ attributes on consumers’ perceptions. However, the boundary conditions of these effects are largely ignored. This research is one of the first attempts to provide a deep understanding of consumers’ responses to a chatbot.
Text
Exploring consumers response to text-based chatbots in e-commerce 10-1108_INTR-08-2020-0460
- Version of Record
Text
10-1108_INTR-08-2020-0460
- Version of Record
More information
Accepted/In Press date: 19 May 2021
e-pub ahead of print date: 12 July 2021
Published date: 15 March 2022
Keywords:
Text-based chatbot, Trust, Consumers’ response, Task complexity, Identity disclosure
Identifiers
Local EPrints ID: 489994
URI: http://eprints.soton.ac.uk/id/eprint/489994
ISSN: 1066-2243
PURE UUID: 5e0ea4e2-3e8a-4a9d-995f-66d05a4b7196
Catalogue record
Date deposited: 13 May 2024 16:30
Last modified: 06 Jun 2024 02:21
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Contributors
Author:
Xusen Cheng
Author:
Ying Bao
Author:
Alex Zarifis
Author:
Wankun Gong
Author:
Jian Mou
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