【24h】

SYMCON - A HYBRID SYMBOLIC CONNECTIONIST SYSTEM FOR WORD SENSE DISAMBIGUATION

机译:SYMCON-用于词义消歧的混合符号连接系统

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Connectionist methods and knowledge-based techniques are two largely complementary approaches to natural language processing (NLP). However, they both have some potential problems which preclude their being a general purpose processing method. Research reveals that a hybrid processing approach that combines connectionist with symbolic techniques may be able to use the strengths of one processing paradigm to address the weakness of the other one. Hence, a system that effectively combines the two different approaches can be superior to either one in isolation. This paper describes a hybrid system-SYMCON (SYMbolic and CONnectionist) which integrates symbolic and connectionist techniques in an attempt to solve the problem of word sense disambiguation (WSD), which is arguably one of the most fundamental and difficult issues in NLP. It consists of three sub-systems: first, a distributed simple recurrent network (SRN) is trained by using the standard back-propagation algorithm to learn the semantic relationships among concepts, thereby generating categorical constraints that are supplied to the other two sub-systems as the initial results of pre-processing. The second sub-system of SYMCON is a knowledge-based symbolic component consisting of a knowledge base containing general inferencing rules in a certain application domain. Third, a localist network is used to select the best interpretation among multiple alternatives and potentially ambiguous inference paths by spreading activation throughout the network. The structure, initial states, and connection weights of the network are determined by the processing outcome in the other two sub-systems. This localist network can be viewed as a medium between the distributed network and the symbolic sub-system. Such a hybrid symbolic/connectionist system combines information from all three sources to select the most plausible interpretation for ambiguous words. [References: 36]
机译:连接主义方法和基于知识的技术是自然语言处理(NLP)的两种主要互补方法。但是,它们都具有一些潜在的问题,使得它们无法用作通用处理方法。研究表明,将连接主义与符号技术相结合的混合处理方法可能能够利用一种处理模式的优势来解决另一种处理模式的劣势。因此,有效地将两种不同方法结合在一起的系统可能会优于任何一种。本文介绍了一种混合系统SYMCON(SYMbolic和CONnectionist),该系统集成了符号和连接主义技术,旨在解决单词歧义消除(WSD)问题,该问题无疑是NLP中最基本,最困难的问题之一。它由三个子系统组成:首先,使用标准的反向传播算法训练分布式简单递归网络(SRN),以学习概念之间的语义关系,从而生成提供给其他两个子系统的分类约束。作为预处理的初始结果。 SYMCON的第二个子系统是一个基于知识的符号组件,由一个知识库组成,该知识库包含某个应用程序域中的一般推理规则。第三,通过将激活分布在整个网络中,可以使用本地网络在多种选择和可能不明确的推理路径中选择最佳解释。网络的结构,初始状态和连接权重由其他两个子系统中的处理结果确定。该本地网络可以看作是分布式网络和符号子系统之间的媒介。这种混合的符号/连接主义系统结合了来自所有三个来源的信息,以为模棱两可的单词选择最合理的解释。 [参考:36]

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号