Social-Inverse: Inverse Decision-Making of Social Contagion Management with Task Migrations
Abstract
Considering two decision-making tasks $A$ and $B$, each of which wishes to compute an effective decision $Y$ for a given query $X$, can we solve task $B$ by using query-decision pairs $(X, Y)$ of $A$ without knowing the latent decision-making model? Such problems, called inverse decision-making with task migrations, are of interest in that the complex and stochastic nature of real-world applications often prevents the agent from completely knowing the underlying system. In this paper, we introduce such a new problem with formal formulations and present a generic framework for addressing decision-making tasks in social contagion management. On the theory side, we present a generalization analysis for justifying the learning performance of our framework. In empirical studies, we perform a sanity check and compare the presented method with other possible learning-based and graph-based methods. We have acquired promising experimental results, confirming for the first time that it is possible to solve one decision-making task by using the solutions associated with another one.
Cite
Text
Tong. "Social-Inverse: Inverse Decision-Making of Social Contagion Management with Task Migrations." Neural Information Processing Systems, 2022.Markdown
[Tong. "Social-Inverse: Inverse Decision-Making of Social Contagion Management with Task Migrations." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/tong2022neurips-socialinverse/)BibTeX
@inproceedings{tong2022neurips-socialinverse,
title = {{Social-Inverse: Inverse Decision-Making of Social Contagion Management with Task Migrations}},
author = {Tong, Guangmo},
booktitle = {Neural Information Processing Systems},
year = {2022},
url = {https://mlanthology.org/neurips/2022/tong2022neurips-socialinverse/}
}