Performance Evaluation and Comparison using Deep Learning Techniques in Sentiment Analysis

P. A.
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引用次数: 51

Abstract

One of the most common applications of deep learning algorithms is sentiment analysis. This study delivers a better performing and efficient automated feature extraction technique when compared to previous approaches. Traditional methodologies like surface approach will use the complicated manual feature extraction process, which forms the fundamental aspect of feature driven advancements. These methodologies serve as a strong baseline to determine the predictability of the features, and it will also serve as the perfect platform for integrating the deep learning techniques. The proposed research work has introduced a deep learning technique, which can be incorporated with feature-extraction. Moreover, this research work includes three crucial parts. The first step is the development of sentiment classifiers with deep learning, which can be used as the baseline for comparing the performance. This is followed by the use of ensemble techniques and information merger to obtain the final set of sources. As the third step, a combination of ensembles is introduced to categorize various models along with the proposed model. Finally experimental analysis is carried out and the performance is recorded to determine the best model with respect to the deep learning baseline.
情感分析中使用深度学习技术的性能评估和比较
深度学习算法最常见的应用之一是情感分析。与以往的方法相比,本研究提供了一种性能更好、效率更高的自动特征提取技术。传统的方法,如曲面方法,将使用复杂的人工特征提取过程,这是特征驱动进步的基本方面。这些方法可以作为确定特征可预测性的强大基线,也可以作为集成深度学习技术的完美平台。提出的研究工作引入了一种深度学习技术,该技术可以与特征提取相结合。此外,本研究工作包括三个关键部分。第一步是基于深度学习的情感分类器的开发,它可以作为比较性能的基线。接下来是使用集成技术和信息合并来获得最终的源集。作为第三步,引入组合集成来对各种模型进行分类,并提出模型。最后进行实验分析并记录性能,以确定相对于深度学习基线的最佳模型。
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