AILGNEMar 3, 2022

Transfer Dynamics in Emergent Evolutionary Curricula

arXiv:2203.10941v16 citationsh-index: 69
Originality Incremental advance
AI Analysis

This addresses the problem of understanding emergent curricula in evolutionary AI for researchers, but it is incremental as it builds on existing POET and GVGAI frameworks.

The paper investigates how open-ended learning works in neuroevolution by analyzing the role of policy transfer between evolutionary species in the PINSKY system, finding that inter-species transfer, though rare, is crucial for success.

PINSKY is a system for open-ended learning through neuroevolution in game-based domains. It builds on the Paired Open-Ended Trailblazer (POET) system, which originally explored learning and environment generation for bipedal walkers, and adapts it to games in the General Video Game AI (GVGAI) system. Previous work showed that by co-evolving levels and neural network policies, levels could be found for which successful policies could not be created via optimization alone. Studied in the realm of Artificial Life as a potentially open-ended alternative to gradient-based fitness, minimal criteria (MC)-based selection helps foster diversity in evolutionary populations. The main question addressed by this paper is how the open-ended learning actually works, focusing in particular on the role of transfer of policies from one evolutionary branch ("species") to another. We analyze the dynamics of the system through creating phylogenetic trees, analyzing evolutionary trajectories of policies, and temporally breaking down transfers according to species type. Furthermore, we analyze the impact of the minimal criterion on generated level diversity and inter-species transfer. The most insightful finding is that inter-species transfer, while rare, is crucial to the system's success.

Foundations

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