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Machine Learning Approach to Analyse Ensemble Models and Neural Network Model for E-Commerce Application

机译:用于电子商务应用的集合模型和神经网络模型的机器学习方法

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Objectives: The main objective of this study is to compare the performance evaluation of ensemble based methods and neural network learning on various combinations of unigram, bigram, and trigram feature vector along with feature selection (IG) and feature reduction (PCA) for sentiment classification of movie reviews. Methods: Bagging and Adaboost are the techniques used in ensemble learning to learn the sentiment classifier to get better classification accuracy, using SVM, NB as a core learner for different models of attribute vectors. The classification results of the ensemble approach are compared with neural network learning for classification of movie reviews. Among the ensemble methods, AdaBoost with base learner SVM outperforms in classifying attribute vectors for model m-iii. The backpropagation algorithm is used to improve classification accuracy in the neural network learning and IG and PCA are used in sentiment classification to reduce the feature length and training time. Findings:The classification results of ensemble based approach are compared with neural network learning. Between the two ensemble based methods, Adaboost SVM outperform in classifying the sentiment of movie reviews for m-iii feature vector. IG and PCA are used in sentiment classification in order to reduce the feature length. Between the IG and PCA methods, IG performs better than PCA. Among IG Adaboost SVM and neural network learning methods, IG Adaboost SVM performs better than neural network learning. Improvement: In our application, we are using the ensemble based methods and neural network learning, these methods are compared and analyzed the performance for various levels of feature vectors. A classification algorithm may be designed to analyze the performance with other neural network methods.
机译:目的:本研究的主要目标是将基于组合的方法和神经网络学习的绩效评估与UNIGRAM,Bigram和Trigram特征向量的各种组合以及特征选择(IG)和特征减少(PCA)进行了情绪分类电影评论。方法:Bagging和Adaboost是集合学习的技术,用于学习情绪分类器,以获得更好的分类准确性,使用SVM,NB作为不同型号的属性向量的核心学习者。与电影评论分类的神经网络学习相比,集合方法的分类结果。在集合方法中,具有基础学习者SVM的Adaboost在分类M-III型的分类属性向量中占此胜过。 BackProjagation算法用于提高神经网络学习中的分类精度,并且IG和PCA用于情绪分类,以减少特征长度和训练时间。调查结果:与神经网络学习相比,基于集合的方法的分类结果。在基于两个合奏的方法之间,Adaboost SVM在分类M-III特征向量的电影评论情绪方面的表现优于。 IG和PCA用于情绪分类,以减少特征长度。在IG和PCA方法之间,IG比PCA更好。在IG Adaboost SVM和神经网络学习方法中,IG Adaboost SVM的表现优于神经网络学习。改进:在我们的应用中,我们正在使用基于集合的方法和神经网络学习,比较这些方法,并分析了各种级别的特征向量的性能。可以设计分类算法来利用其他神经网络方法分析性能。

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