利用学习和自然语言处理建立情感识别新方法模型

IF 1.8 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Lakshmi Lalitha V., Dinesh Kumar Anguraj
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引用次数: 0

摘要

包括政治、娱乐、工业和研究领域在内的各种事实都与分析受众情绪有关。句法分析(SA)是一个自然语言处理(NLP)概念,它利用统计和词汇形式以及学习技术来预测社交媒体中不同类型的内容将如何表达受众的中性、积极和消极情绪。由于缺乏适当的工具来量化现有在线社交媒体数据集中用于评估主要受众情绪的特征和独立文本,因此,本研究的重点是对社交媒体中的受众情绪进行建模。本研究的重点是建立一个前沿方法模型,用于解码社交媒体文本之间的连接性并评估受众情绪。在这里,一种用于文本特征分析的新型密集层图模型(DLG-TF)被用来分析复杂媒体环境中的相关连通性,从而预测情感。使用一些流行的卷积网络模型从社交媒体数据集中提取信息,并通过研究文本属性进行预测。实验结果表明,与不同的标准情绪相比,所提出的 DLG-TF 模型能准确预测更多可能的情绪。基线的宏观平均值为 58%,情感的宏观平均值为 55%,爬行的宏观平均值为 55%,超密集的宏观平均值为 59%。使用基于 EmoTweet 的无监督模型对基线、情感、爬行、超密度和 DLG-TF 进行的特征分析比较给出了预期模型的精确度、召回率和 F1 分数。对基于这些参数的微观和宏观平均值进行了比较和分析。基线宏观平均值为 47%,情感平均值为 46%,爬行平均值为 50%,超密集平均值为 85%。它利用现成的社交媒体数据集进行精确预测。评估了准确率、召回率、精确度和 F 测量等几项标准,并与其他方法进行了对比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MODELLING A NOVEL APPROACH FOR EMOTION RECOGNITION USING LEARNING AND NATURAL LANGUAGE PROCESSING

Various facts, including politics, entertainment, industry, and research fields, are connected to analysing the audience's emotional. Syntactic Analysis (SA) is a Natural Language Processing (NLP) concept that uses statistical and lexical forms as well as learning techniques to forecast how different types of content in social media will express the audience's neutral, positive, and negative emotions. The lack of an adequate tool to quantify the characteristics and independent text for assessing the primary audience emotion from the available online social media dataset. The focus of this research is on modeling a cutting-edge method for decoding the connectivity among social media texts and assessing audience emotions. Here, a novel dense layer graph model (DLG-TF) for textual feature analysis is used to analyze the relevant connectedness inside the complex media environment to forecast emotions. The information from the social media dataset is extracted using some popular convolution network models, and the predictions are made by examining the textual properties. The experimental results show that, when compared to different standard emotions, the proposed DLG-TF model accurately predicts a greater number of possible emotions. The macro-average of baseline is 58%, the affective is 55%, the crawl is 55% and the ultra-dense is 59% respectively. The feature analysis comparison of baseline, affective, crawl, ultra-dense and DLG-TF using the unsupervised model based on EmoTweet gives the precision, recall and F1-score of the anticipated model are explained. The micro and macro average based on these parameters are compared and analyzed. The macro-average of baseline is 47%, the affective is 46%, the crawl is 50% and the ultra-dense is 85% respectively. It makes precise predictions using the social media dataset that is readily available. A few criteria, including accuracy, recall, precision, and F-measure, are assessed and contrasted with alternative methods.

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来源期刊
CiteScore
3.60
自引率
15.00%
发文量
241
期刊介绍: The ACM Transactions on Asian and Low-Resource Language Information Processing (TALLIP) publishes high quality original archival papers and technical notes in the areas of computation and processing of information in Asian languages, low-resource languages of Africa, Australasia, Oceania and the Americas, as well as related disciplines. The subject areas covered by TALLIP include, but are not limited to: -Computational Linguistics: including computational phonology, computational morphology, computational syntax (e.g. parsing), computational semantics, computational pragmatics, etc. -Linguistic Resources: including computational lexicography, terminology, electronic dictionaries, cross-lingual dictionaries, electronic thesauri, etc. -Hardware and software algorithms and tools for Asian or low-resource language processing, e.g., handwritten character recognition. -Information Understanding: including text understanding, speech understanding, character recognition, discourse processing, dialogue systems, etc. -Machine Translation involving Asian or low-resource languages. -Information Retrieval: including natural language processing (NLP) for concept-based indexing, natural language query interfaces, semantic relevance judgments, etc. -Information Extraction and Filtering: including automatic abstraction, user profiling, etc. -Speech processing: including text-to-speech synthesis and automatic speech recognition. -Multimedia Asian Information Processing: including speech, image, video, image/text translation, etc. -Cross-lingual information processing involving Asian or low-resource languages. -Papers that deal in theory, systems design, evaluation and applications in the aforesaid subjects are appropriate for TALLIP. Emphasis will be placed on the originality and the practical significance of the reported research.
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