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A neural-network architecture for syntax analysis

机译:用于语法分析的神经网络架构

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Artificial neural networks (ANNs), due to their inherent parallelism, offer an attractive paradigm for implementation of symbol processing systems for applications in computer science and artificial intelligence. The paper explores systematic synthesis of modular neural-network architectures for syntax analysis using a prespecified grammar-a prototypical symbol processing task which finds applications in programming language interpretation, syntax analysis of symbolic expressions, and high-performance compilers. The proposed architecture is assembled from ANN components for lexical analysis, stack, parsing and parse tree construction. Each of these modules takes advantage of parallel content-based pattern matching using a neural associative memory. The proposed neural-network architecture for syntax analysis provides a relatively efficient and high performance alternative to current computer systems for applications that involve parsing of LR grammars which constitute a widely used subset of deterministic context-free grammars. Comparison of quantitatively estimated performance of such a system (implemented using current CMOS VLSI technology) with that of conventional computers demonstrates the benefits of massively parallel neural-network architectures for symbol processing applications.
机译:人工神经网络(ANN)由于其固有的并行性,为在计算机科学和人工智能中应用的符号处理系统的实现提供了一种有吸引力的范例。本文探索了使用预定语法的模块化神经网络体系结构进行语法分析的系统综合-一种原型符号处理任务,该任务可在编程语言解释,符号表达式的语法分析和高性能编译器中找到应用。所提出的体系结构是从ANN组件组装而成的,用于词法分析,堆栈,解析和解析树构造。这些模块中的每个模块都利用神经关联存储器利用基于内容的并行模式匹配。所提出的用于语法分析的神经网络体系结构为当前的计算机系统提供了一种相对高效和高性能的替代方案,用于涉及解析LR语法的应用,其中LR语法构成了确定性上下文无关语法的广泛使用子集。这种系统的定量估计性能(使用当前的CMOS VLSI技术实现)与常规计算机的比较表明,大规模并行神经网络体系结构可用于符号处理应用。

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