Stop Ordering Machine Learning Algorithms by Their Explainability! An Empirical Investigation of the Tradeoff Between Performance and Explainability

[1]  D. Moore,et al.  Algorithm appreciation: People prefer algorithmic to human judgment , 2019, Organizational Behavior and Human Decision Processes.

[2]  Trevor Hastie,et al.  An Introduction to Statistical Learning , 2013, Springer Texts in Statistics.

[3]  Jürgen Schmidhuber,et al.  Deep learning in neural networks: An overview , 2014, Neural Networks.

[4]  Tina Blegind Jensen,et al.  A systematic review of algorithm aversion in augmented decision making , 2019, Journal of Behavioral Decision Making.

[5]  Amina Adadi,et al.  Peeking Inside the Black-Box: A Survey on Explainable Artificial Intelligence (XAI) , 2018, IEEE Access.

[6]  Dazhong Wu,et al.  Deep learning for smart manufacturing: Methods and applications , 2018, Journal of Manufacturing Systems.

[7]  Young Joo Yang,et al.  W J G World Journal of Gastroenterology , 2022 .

[8]  D. Hilton Mental Models and Causal Explanation: Judgements of Probable Cause and Explanatory Relevance , 1996 .

[9]  Rob J. Hyndman,et al.  A brief history of forecasting competitions , 2020 .

[10]  Lora Aroyo,et al.  The effects of transparency on trust in and acceptance of a content-based art recommender , 2008, User Modeling and User-Adapted Interaction.

[11]  Alejandro Barredo Arrieta,et al.  Explainable Artificial Intelligence (XAI): Concepts, Taxonomies, Opportunities and Challenges toward Responsible AI , 2019, Inf. Fusion.

[12]  Cynthia Rudin,et al.  Stop explaining black box machine learning models for high stakes decisions and use interpretable models instead , 2018, Nature Machine Intelligence.

[13]  Tim Miller,et al.  Explanation in Artificial Intelligence: Insights from the Social Sciences , 2017, Artif. Intell..

[14]  Min Kyung Lee Understanding perception of algorithmic decisions: Fairness, trust, and emotion in response to algorithmic management , 2018, Big Data Soc..