lifecycle model
Pragmatic auditing: a pilot-driven approach for auditing Machine Learning systems
Benbouzid, Djalel, Plociennik, Christiane, Lucaj, Laura, Maftei, Mihai, Merget, Iris, Burchardt, Aljoscha, Hauer, Marc P., Naceri, Abdeldjallil, van der Smagt, Patrick
The growing adoption and deployment of Machine Learning (ML) systems came with its share of ethical incidents and societal concerns. It also unveiled the necessity to properly audit these systems in light of ethical principles. For such a novel type of algorithmic auditing to become standard practice, two main prerequisites need to be available: A lifecycle model that is tailored towards transparency and accountability, and a principled risk assessment procedure that allows the proper scoping of the audit. Aiming to make a pragmatic step towards a wider adoption of ML auditing, we present a respective procedure that extends the AI-HLEG guidelines published by the European Commission. Our audit procedure is based on an ML lifecycle model that explicitly focuses on documentation, accountability, and quality assurance; and serves as a common ground for alignment between the auditors and the audited organisation. We describe two pilots conducted on real-world use cases from two different organisations and discuss the shortcomings of ML algorithmic auditing as well as future directions thereof.
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- Law (1.00)
- Information Technology > Security & Privacy (1.00)
- Health & Medicine (1.00)
- Government > Regional Government > Europe Government (0.34)
Speeding up the Metabolism in E-commerce by Reinforcement Mechanism Design
He, Hua-Lin, Pan, Chun-Xiang, Da, Qing, Zeng, An-Xiang
In a large E-commerce platform, all the participants compete for impressions under the allocation mechanism of the platform. Existing methods mainly focus on the short-term return based on the current observations instead of the long-term return. In this paper, we formally establish the lifecycle model for products, by defining the introduction, growth, maturity and decline stages and their transitions throughout the whole life period. Based on such model, we further propose a reinforcement learning based mechanism design framework for impression allocation, which incorporates the first principal component based permutation and the novel experiences generation method, to maximize short-term as well as long-term return of the platform. With the power of trial-and-error, it is possible to optimize impression allocation strategies globally which is contribute to the healthy development of participants and the platform itself. We evaluate our algorithm on a simulated environment built based on one of the largest E-commerce platforms, and a significant improvement has been achieved in comparison with the baseline solutions.
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- Asia > China > Zhejiang Province > Hangzhou (0.05)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
- Asia > China > Heilongjiang Province > Daqing (0.04)
- Information Technology > Services > e-Commerce Services (0.93)
- Leisure & Entertainment > Games > Computer Games (0.68)