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Predicting returns in men's fashion
University of Skövde, School of Informatics. University of Skövde, Informatics Research Environment. University of Borås, Department of Information Technololgy, Borås, Sweden.ORCID iD: 0000-0001-5378-0862
Jönköping University, Department of Computer Science & Informatics, Sweden.
University of Borås, Department of Information Technololgy, Sweden.
2020 (English)In: Developments of Artificial Intelligence Technologies in Computation and Robotics: Proceedings of the 14th International FLINS Conference (FLINS 2020) / [ed] Li Zhong; Chunrong Yuan; Jie Lu; Etienne E. Kerre, World Scientific, 2020, p. 1506-1513Conference paper, Published paper (Refereed)
Abstract [en]

While consumers value a free and easy return process, the costs to e-tailers associated with returns are substantial and increasing. Consequently, merchants are now tempted to implement stricter policies, but must balance this against the risk of losing valuable customers. With this in mind, data-driven and algorithmic approaches have been introduced to predict if a certain order is likely to result in a return. In this application paper, a novel approach, combining information about the customer and the order, is suggested and evaluated on a real-world data set from a Swedish e-tailer in men's fashion. The results show that while the predictive accuracy is rather low, a system utilizing the suggested approach could still be useful. Specifically, it is reasonable to assume that an e-tailer would only act on predicted returns where the confidence is very high, e.g., the top 1-5%. For such predictions, the obtained precision is 0.918-0.969, with an acceptable detection rate.

Place, publisher, year, edition, pages
World Scientific, 2020. p. 1506-1513
Series
World Scientific Proceedings Series on Computer Engineering and Information Science, ISSN 1793-7868 ; 12
Keywords [en]
Return prediction, Predictive modeling, Random Forests
National Category
Business Administration
Identifiers
URN: urn:nbn:se:his:diva-19974DOI: 10.1142/9789811223334_0180ISI: 000656123200180ISBN: 978-981-122-333-4 (print)ISBN: 978-981-122-334-1 (electronic)OAI: oai:DiVA.org:his-19974DiVA, id: diva2:1573052
Conference
15th Symposium of Intelligent Systems and Knowledge Engineering (ISKE) held jointly with 14th International FLINS Conference (FLINS 2020), Cologne, Germany, 18 – 21 August 2020
Available from: 2021-06-24 Created: 2021-06-24 Last updated: 2023-10-03Bibliographically approved
In thesis
1. Data-driven decision support in digital retailing
Open this publication in new window or tab >>Data-driven decision support in digital retailing
2023 (English)Licentiate thesis, comprehensive summary (Other academic)
Abstract [en]

In the digital era and advent of artificial intelligence, digital retailing has emerged as a notable shift in commerce. It empowers e-tailers with data-driven insights and predictive models to navigate a variety of challenges, driving informed decision-making and strategic formulation. While predictive models are fundamental for making data-driven decisions, this thesis spotlights binary classifiers as a central focus. These classifiers reveal the complexities of two real-world problems, marked by their particular properties. Specifically, binary decisions are made based on predictions, relying solely on predicted class labels is insufficient because of the variations in classification accuracy. Furthermore, prediction outcomes have different costs associated with making different mistakes, which impacts the utility.

To confront these challenges, probabilistic predictions, often unexplored or uncalibrated, is a promising alternative to class labels. Therefore, machine learning modelling and calibration techniques are explored, employing benchmark data sets alongside empirical studies grounded in industrial contexts. These studies analyse predictions and their associated probabilities across diverse data segments and settings. The thesis found, as a proof of concept, that specific algorithms inherently possess calibration while others, with calibrated probabilities, demonstrate reliability. In both cases, the thesis concludes that utilising top predictions with the highest probabilities increases the precision level and minimises the false positives. In addition, adopting well-calibrated probabilities is a powerful alternative to mere class labels. Consequently, by transforming probabilities into reliable confidence values through classification with a rejection option, a pathway emerges wherein confident and reliable predictions take centre stage in decision-making. This enables e-tailers to form distinct strategies based on these predictions and optimise their utility.

This thesis highlights the value of calibrated models and probabilistic prediction and emphasises their significance in enhancing decision-making. The findings have practical implications for e-tailers leveraging data-driven decision support. Future research should focus on producing an automated system that prioritises high and well-calibrated probability predictions while discarding others and optimising utilities based on the costs and gains associated with the different prediction outcomes to enhance decision support for e-tailers.

Place, publisher, year, edition, pages
Skövde: University of Skövde, 2023. p. xiii, 108
Series
Dissertation Series ; 53
Keywords
Digital Retailing, Decision Support, Probabilistic Prediction, Calibration, Product Returns, Customer Churn, Binary Classification, Scikit-Learn
National Category
Other Computer and Information Science Computer Sciences Computer Systems Software Engineering Business Administration
Identifiers
urn:nbn:se:his:diva-23279 (URN)978-91-987906-7-2 (ISBN)
Presentation
2023-10-31, G111, Högskolan i Skövde, Skövde, 13:15 (English)
Opponent
Supervisors
Funder
Knowledge Foundation
Note

The current thesis is a part of the industrial graduate school in digital retailing (INSiDR) at the University of Borås and funded by the Swedish Knowledge Foundation.

Available from: 2023-10-03 Created: 2023-10-03 Last updated: 2023-10-03Bibliographically approved

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