关于生成流网络的泛化

Anas Krichel, Nikolay Malkin, Salem Lahlou, Yoshua Bengio
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引用次数: 0

摘要

生成流网络(GFlowNets)是一种创新的学习范式,旨在解决从未归一化的概率分布(称为奖励函数)中采样的难题。该框架在构建的图形上学习策略,通过对所学策略的连续采样步骤,从目标概率分布的近似值中进行采样。为此,GFlowNets 可以用不同的目标进行训练,每个目标都能实现模型的最终目标。GFlowNets 的启发性优势在于它能识别奖励函数中错综复杂的模式,并能有效地泛化到奖励函数中新的、未见过的部分。本文试图将 GFlow 网络中的泛化形式化,将泛化与稳定性联系起来,并设计实验来评估这些模型揭示奖励函数未知部分的能力。实验的重点是长度泛化,即泛化到只能通过比训练中看到的轨迹更长的轨迹来构建的状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Generalization for Generative Flow Networks
Generative Flow Networks (GFlowNets) have emerged as an innovative learning paradigm designed to address the challenge of sampling from an unnormalized probability distribution, called the reward function. This framework learns a policy on a constructed graph, which enables sampling from an approximation of the target probability distribution through successive steps of sampling from the learned policy. To achieve this, GFlowNets can be trained with various objectives, each of which can lead to the model s ultimate goal. The aspirational strength of GFlowNets lies in their potential to discern intricate patterns within the reward function and their capacity to generalize effectively to novel, unseen parts of the reward function. This paper attempts to formalize generalization in the context of GFlowNets, to link generalization with stability, and also to design experiments that assess the capacity of these models to uncover unseen parts of the reward function. The experiments will focus on length generalization meaning generalization to states that can be constructed only by longer trajectories than those seen in training.
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