遥控反应程序的神经合成

J. Ramírez
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引用次数: 2

摘要

Teleo-Reactive (TR)是一种新的编程范式,用于编写具有响应控制和目标导向行为的智能体程序。形式化基于电路语义,直观地可以直接移植到分层的神经网络体系结构。但是为了抓住TR范式的本质,必须开发一种综合机制,允许在神经架构中表达程序的反应性。2) TR序列和树的增量学习和3)来自世界的持续反馈。我们对TR程序进行了分析,并提出了一种方法,将这些程序合成为一个个体神经网络模型,该模型可以捕获程序的所有特征,并随着智能体探索世界而进化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural synthesis of teleo-reactive programs
The Teleo-Reactive (TR) formalism has been presented as a new programming paradigm to write agent programs with reactive control and goal oriented behavior. The formalism is based in a circuit semantics that intuitively can be ported directly to a layered neural network architecture. But to capture the essence of the TR paradigm, a mechanism of synthesis must be developed, allowing to express in a neural architecture 1) the reactive nature of the programs. 2) the incremental learning of TR sequences and trees and 3) the continuous feedback from the world. We present an analysis of TR programs and a method to synthesize those programs into an ontogenic neural network model that captures all the features of the program and can evolve with the agent as he explores the world.
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