基于方面的IMDB评论情感分析集成学习解决方案

Kakavakam Jaswanth Sai, S. Chakravarthi, S. Sountharrajan, E. Suganya
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引用次数: 0

摘要

如今,社交媒体极大地影响了人们如何根据用户评分形成对任何类型的商业、政治、商业等的看法。这些评论是使用情感分析领域进行检查的。这是一个至关重要的组成部分,因为精心设计和实施的情绪评估可能会在商业和政治领域带来更好、更准确的估计。情感分析擅长克服各种困难,包括准确性问题、二元分类问题、极性变化问题和数据稀缺性问题。为此已经提出和开发了几种方法,但没有一种方法能够有效地持续提取情感分析。我们回顾了传统的基于词典的方法,然后我们开发了一个采用机器学习算法的集成模型,该模型比基于词典的方法高出89%。此外,我们通过比较研究表明,为什么建议的模型是最有效的。在这种情况下,我们使用的堆叠分类器集成策略使我们能够在利用各种知名机器学习算法的同时将分类精度提高1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Learning Solution for the Aspect-based Sentimental Analysis on IMDB reviews
Nowadays, social media significantly influences how people form opinions about any type of business, politics, commerce, etc. based on user ratings. These reviews were examined using the field of sentiment analysis. This is a crucial component since well-designed and carried out sentiment assessments may lead to better and more accurate estimates in both business and politics. Sentiment analysis is skilled at overcoming a variety of difficulties, including issues with accuracy, problems with binary classification, problems with polarity change and data scarcity. There have been several approaches proposed and developed for this, but none of them have been effective in consistently extracting sentiment analysis. We reviewed the traditional lexicon-based method and then we developed an ensemble model employing machine learning algorithms that outperformed the lexicon-based approach by 89 percent. Additionally, we have shown through a comparison study why the suggested model is the most effective. The stacking classifier ensemble strategy that we utilized in this case allowed us to boost classification accuracy by 1% while utilizing a variety of well-known machine learning algorithms.
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