利用混合 RNN LSTM 改进适用于多种搜索引擎的信息检索系统

B. Sangamithra, Dr. M. Sunil Kumar
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引用次数: 0

摘要

在互联网上搜索数据时,每个用户都有自己的个人背景。搜索引擎的工作就是根据用户的查询,从互联网上的所有博客中找到最相关的内容。互联网的出现对本地和全球的信息检索系统都产生了深远的影响,其中包括在 SNS(社交网络服务)页面上以评论形式留下的信息的价值。情感和社会联系的概念被转化为一个逻辑框架,用 "节点 "和 "链接 "来描述社交网络的结构。高效的语义模型需要更广泛的训练和评估材料,以提高社交网络搜索能力。与机器学习算法相比,传统的基于关键词的搜索引擎在理解用户意图方面的效率较低。最近,神经网络因其令人印象深刻的向量表示学习能力而在信息检索领域大受欢迎。最近,深度学习技术被用于这一目的,而且事实证明它们比人工神经网络(ANN)等传统机器学习技术更有效。使用深度学习技术(如长短期记忆(LSTM)和循环神经网络(RNN))后,效果明显改善。为了创建更加个性化的信息检索(IR)系统,本研究建议使用深度学习混合 RNN - LSTM 模型。最后,建议的方法考虑到了用户的评论,并使用混合 RNN - LSTM 对数据进行重新排序,从而达到皆大欢喜的效果。网络搜索竞赛数据集用于实施。准确率、精确度和召回率等统计数据用于评估必应和 Duckduck go 这两个最著名搜索引擎上的数据集。结果表明,所提出的混合方法优于传统方法。
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An Improved Information Retrieval System using Hybrid RNN LSTM for Multiple Search Engines
When searching for data on the internet, every user has their own personal context for doing so. The job of a search engine is to find the most relevant content from all the blogs on the internet based on the user's query. Information retrieval systems, both locally and globally, have been profoundly affected by the advent of the internet, and this includes the value of information left as comments on a page of SNS (Social Network Services). The concept of emotional and social connections is translated into a logical framework using the terms "node" and "link" to describe the structure of a social network. Efficient semantic models are more extensive training and evaluation materials, are needed to improve social network search capabilities. When compared with machine learning algorithms, the efficacy of traditional keyword-based search engines at understanding users' intentions is low. Recently, neural networks have gained popularity in the field of information retrieval because of their impressive vector representation learning capabilities. The usage of deep learning techniques for this purpose has recently been seen, and they have proven to be more effective than traditional machine learning techniques such artificial neural networks (ANNs). Improved results have been seen specifically using deep-learning techniques like long short-term memory (LSTM) & Recurrent Neural Network (RNN). In order to create a more personalized Information Retrieval(IR) system, this research suggests using a deep learning Hybrid RNN - LSTM model. Finally, the suggested method takes user comments into account and uses a hybrid RNN - LSTM to re-rank the data so that everyone is happy. Web search contest dataset is used for the implementation. Statistics like accuracy, precision, & recall are used to evaluate the data set on Bing and Duckduck go, two of the most prominent search engines. According to the findings, the proposed Hybrid method outperformed more traditional methods.
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