AIFeb 26, 2022

Towards Revenue Maximization with Popular and Profitable Products

arXiv:2202.13041v1
Originality Incremental advance
AI Analysis

This addresses the problem of optimizing marketing strategies for companies to increase revenue, but it appears incremental as it builds on existing concepts like on-shelf availability and behavioral economics.

The paper tackles revenue maximization by identifying popular and profitable products for targeted marketing, proposing a profit-oriented framework and algorithm that shows effectiveness and efficiency in experiments on real-world datasets.

Economic-wise, a common goal for companies conducting marketing is to maximize the return revenue/profit by utilizing the various effective marketing strategies. Consumer behavior is crucially important in economy and targeted marketing, in which behavioral economics can provide valuable insights to identify the biases and profit from customers. Finding credible and reliable information on products' profitability is, however, quite difficult since most products tends to peak at certain times w.r.t. seasonal sales cycle in a year. On-Shelf Availability (OSA) plays a key factor for performance evaluation. Besides, staying ahead of hot product trends means we can increase marketing efforts without selling out the inventory. To fulfill this gap, in this paper, we first propose a general profit-oriented framework to address the problem of revenue maximization based on economic behavior, and compute the 0n-shelf Popular and most Profitable Products (OPPPs) for the targeted marketing. To tackle the revenue maximization problem, we model the k-satisfiable product concept and propose an algorithmic framework for searching OPPP and its variants. Extensive experiments are conducted on several real-world datasets to evaluate the effectiveness and efficiency of the proposed algorithm.

Foundations

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