학술논문

Transfer of Fully Convolutional Policy-Value Networks Between Games and Game Variants
Document Type
Working Paper
Source
This preprint is superceded by the 2023 TMLR publication: https://openreview.net/forum?id=vJcTm2v9Ku
Subject
Computer Science - Machine Learning
Language
Abstract
In this paper, we use fully convolutional architectures in AlphaZero-like self-play training setups to facilitate transfer between variants of board games as well as distinct games. We explore how to transfer trained parameters of these architectures based on shared semantics of channels in the state and action representations of the Ludii general game system. We use Ludii's large library of games and game variants for extensive transfer learning evaluations, in zero-shot transfer experiments as well as experiments with additional fine-tuning time.