论文标题
层次学习系统的专业化
Specialization in Hierarchical Learning Systems
论文作者
论文摘要
将多个决策者加在一起是获得更复杂的决策系统的有力方法,但需要解决劳动和专业化的问题。我们研究专家层次结构的信息限制不仅为正规化提供了原则性的方法,而且还提供了执行专业化的方法。特别是,我们设计了一种从理论上动机的在线学习规则,该规则允许将问题空间划分为多个子问题,这些子问题可以由个人专家解决。我们演示了采用我们方法的两种不同方法:(i)基于单个数据示例和(ii)基于代表任务的数据示例集进行分区问题。方法(i)通过找到当地专家决策者的最佳组合来使系统能够解决复杂的决策问题。方法(ii)导致决策者专门解决任务家庭,这使该系统具有解决元学习问题的能力。我们在标准的机器学习设置和元学习环境中,在包括分类,回归,密度估算和强化学习问题在内的一系列问题上显示了广泛的适用性。
Joining multiple decision-makers together is a powerful way to obtain more sophisticated decision-making systems, but requires to address the questions of division of labor and specialization. We investigate in how far information constraints in hierarchies of experts not only provide a principled method for regularization but also to enforce specialization. In particular, we devise an information-theoretically motivated on-line learning rule that allows partitioning of the problem space into multiple sub-problems that can be solved by the individual experts. We demonstrate two different ways to apply our method: (i) partitioning problems based on individual data samples and (ii) based on sets of data samples representing tasks. Approach (i) equips the system with the ability to solve complex decision-making problems by finding an optimal combination of local expert decision-makers. Approach (ii) leads to decision-makers specialized in solving families of tasks, which equips the system with the ability to solve meta-learning problems. We show the broad applicability of our approach on a range of problems including classification, regression, density estimation, and reinforcement learning problems, both in the standard machine learning setup and in a meta-learning setting.