过程(计算)
产品(数学)
主题分析
数据科学
计算机科学
大数据
数据挖掘
社会学
数学
社会科学
几何学
操作系统
定性研究
作者
Shahriar Akter,Grace McCarthy,Shahriar Sajib,Katina Michael,Yogesh K. Dwivedi,John D’Ambra,Kathy Ning Shen
标识
DOI:10.1016/j.ijinfomgt.2021.102387
摘要
Data-driven innovation (DDI) gains its prominence due to its potential to transform innovation in the age of AI. Digital giants Amazon, Alibaba, Google, Apple, and Facebook, enjoy sustainable competitive advantages from DDI. However, little is known about algorithmic biases that may present in the DDI process, and result in unjust, unfair, or prejudicial data product developments. Thus, this guest editorial aims to explore the sources of algorithmic biases across the DDI process using a systematic literature review, thematic analysis and a case study on the Robo-Debt scheme in Australia. The findings show that there are three major sources of algorithmic bias: data bias, method bias and societal bias. Theoretically, the findings of our study illuminate the role of the dynamic managerial capability to address various biases. Practically, we provide guidelines on addressing algorithmic biases focusing on data, method and managerial capabilities.
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