Development of Novel Incremental Question Answering System Using Optimised Deep Belief Network

M. Therasa, G. Mathivanan
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引用次数: 1

Abstract

Question answering system is a more eminent research area because of its vast usage in recent years, which can be modelled to solve the deep learning-related limitations. More number of research works have been presented in this question answering field, where most of the systems adopt deep learning as the major contribution. Question answering system focusses on satisfying the users in getting relevant answers regarding a certain question in natural language. This paper presents the incremental question answering system using optimised deep learning. The proposed model covers two-step feature extraction, feature dimension reduction, and deep learning-based classification. From the benchmark dataset collected from a public source, the initial process is to extract the features using word-to-vector. Further, Principle Component Analysis (PCA) is adopted for reducing the dimension of the feature vector. These dimension-reduced features are used for incremental question answering systems by the Optimised Deep Neural Network (O-DNN). Here, the testing weight of the DNN is updated by the Modified Deer Hunting Optimisation Algorithm (M-DHOA) for handling the incremental data. Various implementation details in the algorithms produce better results, which shows the superior performance of the proposed method over existing systems.
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基于优化深度信念网络的新型增量问答系统的开发
问答系统由于近年来的广泛应用而成为一个比较突出的研究领域,它可以通过建模来解决与深度学习相关的局限性。在这个问题回答领域已经提出了更多的研究工作,其中大多数系统采用深度学习作为主要贡献。问答系统的重点是满足用户对某一问题用自然语言得到相关答案的需求。本文提出了一种基于优化深度学习的增量式问答系统。该模型包括两步特征提取、特征降维和基于深度学习的分类。从公共来源收集的基准数据集中,初始过程是使用word-to-vector提取特征。进一步,采用主成分分析(PCA)对特征向量进行降维。这些降维特征被优化深度神经网络(O-DNN)用于增量问答系统。在这里,DNN的测试权由改进的猎鹿优化算法(M-DHOA)更新,以处理增量数据。算法中的各种实现细节都产生了较好的结果,表明所提方法优于现有系统。
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