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A Novel Deep Learning-Based Multilevel Parallel Attention Neural (MPAN) Model for Multidomain Arabic Sentiment Analysis

机译:基于深度学习的多级并行关注神经(MPAN)模型,用于多域阿拉伯语情绪分析

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摘要

Over the past few years, much work has been done to develop machine learning models that perform Arabic sentiment analysis (ASA) tasks at various levels and in different domains. However, most of this work has been based on shallow machine learning, with little attention given to deep learning approaches. Furthermore, the deep learning models used for ASA have been based on noncontextualized embedding schemes that negatively impact model performances. This article proposes a novel deep learning-based multilevel parallel attention neural (MPAN) model that uses a simple positioning binary embedding scheme (PBES) to simultaneously compute contextualized embeddings at the character, word, and sentence levels. The MPAN model then computes multilevel attention vectors and concatenates them at the output level to produce competitive accuracies. Specifically, the MPAN model produces state-of-the-art results that outperform all established ASA baselines using 34 publicly available ASA datasets. The proposed model is further shown to produce new state-of-the-art accuracies for two multidomain collections: 95.61% for a binary classification collection and 94.25% for a tertiary classification collection. Finally, the performance of the MPAN model is further validated using the public IMDB movie review dataset, on which it produces an accuracy of 96.13%, placing it in second position on the global IMDB leaderboard.
机译:在过去的几年里,已经完成了很多工作,以开发机器学习模型,以在各个级别和不同域中进行阿拉伯语情绪分析(ASA)任务。然而,这项工作的大部分都是基于浅机器学习的基础,特别关注深入学习方法。此外,用于ASA的深度学习模型是基于非Contextualized嵌入方案,这些嵌入方案产生了负面影响模型性能。本文提出了一种新的基于深度学习的多级并行关注神经(MPAN)模型,它使用简单的定位二进制嵌入方案(PBE)来同时计算字符,单词和句子级别的上下文化嵌入式。然后,MPAN模型计算多级注意向量并在输出电平时连接它们以产生竞争性精度。具体地,MPAN模型产生最先进的结果,其优于所有已建立的ASA基线使用34个公共可用ASA数据集。拟议的模型进一步显示出用于两种多群集收集的新型最先进的准确性:二进制分类收集的95.61%,而第三级分类收集的94.25%。最后,使用公共IMDB电影评论数据集进一步验证了MPAN模型的性能,在其上产生了96.13%的准确性,将其放在全球IMDB排行榜上的第二个位置。

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