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Neural Amortized Inference for Nested Multi-agent Reasoning

A neural network-based approach is proposed to efficiently perform high-order social inference in multi-agent interactions, balancing computational efficiency and accuracy.

Year
2023
Venue
arXiv 2023
Authors
6
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arxiv.org/abs/2308.11071ARXIV-DEFAULT
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Abstract

Multi-agent interactions, such as communication, teaching, and bluffing, often rely on higher-order social inference, i.e., understanding how others infer oneself. Such intricate reasoning can be effectively modeled through nested multi-agent reasoning. Nonetheless, the computational complexity escalates exponentially with each level of reasoning, posing a significant challenge. However, humans effortlessly perform complex social inferences as part of their daily lives. To bridge the gap between human-like inference capabilities and computational limitations, we propose a novel approach: leveraging neural networks to amortize high-order social inference, thereby expediting nested multi-agent reasoning. We evaluate our method in two challenging multi-agent interaction domains. The experimental results demonstrate that our method is computationally efficient while exhibiting minimal degradation in accuracy.

Authors

6