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Non-monotone Sequential Submodular Maximization

AAAI Conference on Artificial Intelligence (AAAI), 2023
Jing Yuan
Main:23 Pages
Bibliography:2 Pages
Appendix:4 Pages
Abstract

In this paper, we study a fundamental problem in submodular optimization, which is called sequential submodular maximization. Specifically, we aim to select and rank a group of kk items from a ground set VV such that the weighted summation of kk (possibly non-monotone) submodular functions f1,,fk:2VR+f_1, \cdots ,f_k: 2^V \rightarrow \mathbb{R}^+ is maximized, here each function fjf_j takes the first jj items from this sequence as input. The existing research on sequential submodular maximization has predominantly concentrated on the monotone setting, assuming that the submodular functions are non-decreasing. However, in various real-world scenarios, like diversity-aware recommendation systems, adding items to an existing set might negatively impact the overall utility. In response, this paper pioneers the examination of the aforementioned problem with non-monotone submodular functions and offers effective solutions for both flexible and fixed length constraints, as well as a special case with identical utility functions. The empirical evaluations further validate the effectiveness of our proposed algorithms in the domain of video recommendations. The results of this research have implications in various fields, including recommendation systems and assortment optimization, where the ordering of items significantly impacts the overall value obtained.

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