{"title":"Sentiments Analysis and Text Summarization of Medicine Reviews Using Deep Sequential Iterative Model with Attention Encoder","authors":"B. R. Prabhu, S. Seema","doi":"10.13052/jmm1550-4646.18415","DOIUrl":null,"url":null,"abstract":"In this day and age of data innovation, vast amounts of data are being generated daily, much of it is useless to the general public unless it is correctly handled. This year has seen a huge increase in social networks’ relevance, resulting in vast quantities of data provided by users. This vast amount of information is gathered from a variety of sources, including company websites, customer blogs, and item reviews. The text outline is probably the most significant point of view in daily life. Analysis of text sentiment is a method for assessing, summarising, and drawing conclusions about the most important content. In the field of sentiment analysis, attention methods have been crucial since they make use of sentiment lexicons to gather a huge amount of sentiment polarity information. With an attention mechanism that acts as a link between linguistic information with a strong emotional component and deep learning algorithms, it may be possible to boost text sentiment significantly. In the LSTM model, word sequence addictions can be captured over the long term. For the first time, scientists have developed an attention model that combines LSTM with an incredibly deep RNN model to tackle the problem of sentiment analysis in the real world. The iterative method trains the first set of word embeddings using a Word to Vector technique. With the Word2Vec algorithm, text strings are converted into a numerical value vector and distance between words and comparative words based on meaning are calculated. Using the attention strategy has the added benefit of potentially enhancing machine learning’s ability to learn sentiment representations. The attention model is more scalable and adaptable than previous approaches. The major objective of this work is to assess feelings and develop an abstracted content outline, decide on the semantic summarization of different materials and effectively process the data.","PeriodicalId":425561,"journal":{"name":"J. Mobile Multimedia","volume":"3 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-03-21","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"J. Mobile Multimedia","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.13052/jmm1550-4646.18415","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
In this day and age of data innovation, vast amounts of data are being generated daily, much of it is useless to the general public unless it is correctly handled. This year has seen a huge increase in social networks’ relevance, resulting in vast quantities of data provided by users. This vast amount of information is gathered from a variety of sources, including company websites, customer blogs, and item reviews. The text outline is probably the most significant point of view in daily life. Analysis of text sentiment is a method for assessing, summarising, and drawing conclusions about the most important content. In the field of sentiment analysis, attention methods have been crucial since they make use of sentiment lexicons to gather a huge amount of sentiment polarity information. With an attention mechanism that acts as a link between linguistic information with a strong emotional component and deep learning algorithms, it may be possible to boost text sentiment significantly. In the LSTM model, word sequence addictions can be captured over the long term. For the first time, scientists have developed an attention model that combines LSTM with an incredibly deep RNN model to tackle the problem of sentiment analysis in the real world. The iterative method trains the first set of word embeddings using a Word to Vector technique. With the Word2Vec algorithm, text strings are converted into a numerical value vector and distance between words and comparative words based on meaning are calculated. Using the attention strategy has the added benefit of potentially enhancing machine learning’s ability to learn sentiment representations. The attention model is more scalable and adaptable than previous approaches. The major objective of this work is to assess feelings and develop an abstracted content outline, decide on the semantic summarization of different materials and effectively process the data.
在这个数据创新的时代,每天都会产生大量的数据,除非处理得当,否则大部分数据对公众来说都是无用的。今年,社交网络的相关性大幅增加,导致用户提供了大量数据。这些大量的信息来自各种来源,包括公司网站、客户博客和商品评论。文本大纲可能是日常生活中最重要的观点。文本情感分析是对最重要的内容进行评估、总结和得出结论的一种方法。在情感分析领域,注意方法一直是至关重要的,因为它利用情感词汇来收集大量的情感极性信息。有了一种关注机制,作为带有强烈情感成分的语言信息与深度学习算法之间的联系,就有可能显著提升文本情感。在LSTM模型中,可以长期捕获词序列成瘾。科学家们第一次开发了一种将LSTM与一种令人难以置信的深度RNN模型相结合的注意力模型,以解决现实世界中的情感分析问题。迭代方法使用word to Vector技术训练第一组词嵌入。Word2Vec算法将文本字符串转换为数值向量,并根据意义计算词与比较词之间的距离。使用注意力策略还有一个额外的好处,那就是潜在地增强机器学习学习情感表征的能力。注意模型比以前的方法更具可扩展性和适应性。这项工作的主要目的是评估感受并制定抽象的内容大纲,确定不同材料的语义摘要并有效地处理数据。