NCLGMLFeb 23, 2017

A Goal-Based Movement Model for Continuous Multi-Agent Tasks

arXiv:1702.07319v2
Originality Synthesis-oriented
AI Analysis

This provides scalable methods for behavioral analysis in neuroscience, addressing the gap in handling complex, continuous tasks, though it is incremental in applying existing machine learning techniques to a new domain.

The authors tackled the problem of analyzing continuous, naturalistic multi-agent behavior by developing a generative model based on inverse reinforcement learning, which successfully simulated realistic game play with rich variability and resisted mode collapse.

Despite increasing attention paid to the need for fast, scalable methods to analyze next-generation neuroscience data, comparatively little attention has been paid to the development of similar methods for behavioral analysis. Just as the volume and complexity of brain data have grown, behavioral paradigms in systems neuroscience have likewise become more naturalistic and less constrained, necessitating an increase in the flexibility and scalability of the models used to study them. In particular, key assumptions made in the analysis of typical decision paradigms --- optimality; analytic tractability; discrete, low-dimensional action spaces --- may be untenable in richer tasks. Here, using the case of a two-player, real-time, continuous strategic game as an example, we show how the use of modern machine learning methods allows us to relax each of these assumptions. Following an inverse reinforcement learning approach, we are able to succinctly characterize the joint distribution over players' actions via a generative model that allows us to simulate realistic game play. We compare simulated play from a number of generative time series models and show that ours successfully resists mode collapse while generating trajectories with the rich variability of real behavior. Together, these methods offer a rich class of models for the analysis of continuous action tasks at the single-trial level.

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