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How to realize the full potentials of artificial intelligence (AI) in digital economy? A literature review

How to realize the full potentials of artificial intelligence (AI) in digital economy? A literature review
How to realize the full potentials of artificial intelligence (AI) in digital economy? A literature review

Artificial intelligence (hereafter AI) is widely considered as a driving force in the current digital economy, with many firms having already invested in AI. Since AI is unconstrainted by humans' cognitive limitations and inflexibility, and thus a key assumption in popular press is that AI is crucial for firms' success in digital economy. However, surprisingly, many managers indicate they are yet to benefit from their AI investments. To address this issue, the main purpose of this paper is to summarize the extant literature on AI in business and management fields to identify how AI can create competitive advantages and underpin the key barriers that prevent AI from realizing its full potentials. Our results suggest AI can increase revenue by improving employee productivity, increasing consumer evaluation, setting competitive price and creating unique resources. AI can also reduce cost by improving efficiency and reducing risks. However, our results also indicate that AI adoption, task nature and AI management are the key barriers preventing AI from realizing its full potentials. This is because AI lacks interpersonal skills. Thus, we encourage future research to focus on improving AI's interpersonal skills.

Artificial intelligence, Digital economy, Digital privacy, Literature review
180-191
Hang, Haiming
5473d6b2-3bb1-4c8d-b9f2-16480bc941ba
Chen, Zhifeng
4c98f5ee-e403-4af1-ac24-c048e92c4709
Hang, Haiming
5473d6b2-3bb1-4c8d-b9f2-16480bc941ba
Chen, Zhifeng
4c98f5ee-e403-4af1-ac24-c048e92c4709

Hang, Haiming and Chen, Zhifeng (2023) How to realize the full potentials of artificial intelligence (AI) in digital economy? A literature review. Journal of Digital Economy, 1 (3), 180-191. (doi:10.1016/j.jdec.2022.11.003).

Record type: Review

Abstract

Artificial intelligence (hereafter AI) is widely considered as a driving force in the current digital economy, with many firms having already invested in AI. Since AI is unconstrainted by humans' cognitive limitations and inflexibility, and thus a key assumption in popular press is that AI is crucial for firms' success in digital economy. However, surprisingly, many managers indicate they are yet to benefit from their AI investments. To address this issue, the main purpose of this paper is to summarize the extant literature on AI in business and management fields to identify how AI can create competitive advantages and underpin the key barriers that prevent AI from realizing its full potentials. Our results suggest AI can increase revenue by improving employee productivity, increasing consumer evaluation, setting competitive price and creating unique resources. AI can also reduce cost by improving efficiency and reducing risks. However, our results also indicate that AI adoption, task nature and AI management are the key barriers preventing AI from realizing its full potentials. This is because AI lacks interpersonal skills. Thus, we encourage future research to focus on improving AI's interpersonal skills.

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Accepted/In Press date: 28 November 2022
e-pub ahead of print date: 19 January 2023
Additional Information: Publisher Copyright: © 2022 The Authors
Keywords: Artificial intelligence, Digital economy, Digital privacy, Literature review

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Local EPrints ID: 480737
URI: http://eprints.soton.ac.uk/id/eprint/480737
PURE UUID: ed0e0de5-1bdf-47c0-afea-94249b6edc36

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Date deposited: 09 Aug 2023 16:49
Last modified: 22 Apr 2024 16:53

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Contributors

Author: Haiming Hang
Author: Zhifeng Chen

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