Private Optimal Inventory Policy Learning for Feature-based Newsvendor with Unknown Demand
Tuoyi Zhao, Wen-xin Zhou, Lan Wang

TL;DR
This paper develops a privacy-preserving method for learning optimal inventory policies in feature-based newsvendor problems, addressing demand uncertainty, nonsmooth loss functions, and individual privacy guarantees.
Contribution
It introduces a novel clipped noisy gradient descent algorithm within the f-differential privacy framework for inventory optimization with unknown demand and nonsmooth loss functions.
Findings
Achieves finite-sample high-probability bounds for policy estimation.
Provides a faster excess risk bound leveraging problem structure.
Demonstrates effective privacy protection with minimal cost increase.
Abstract
The data-driven newsvendor problem with features has recently emerged as a significant area of research, driven by the proliferation of data across various sectors such as retail, supply chains, e-commerce, and healthcare. Given the sensitive nature of customer or organizational data often used in feature-based analysis, it is crucial to ensure individual privacy to uphold trust and confidence. Despite its importance, privacy preservation in the context of inventory planning remains unexplored. A key challenge is the nonsmoothness of the newsvendor loss function, which sets it apart from existing work on privacy-preserving algorithms in other settings. This paper introduces a novel approach to estimate a privacy-preserving optimal inventory policy within the f-differential privacy framework, an extension of the classical -differential privacy with several appealing…
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Taxonomy
TopicsSupply Chain and Inventory Management · Transportation and Mobility Innovations
MethodsSeventeen Ways to Call Uphold Helpline Full Guide USA 24 Hour Assistance · Convolution
