Aspect Based Sentiment Analysis is the most granular form of sentiment analysis that can be performed on the documents / sentences. Besides delivering the most insights at a finer grain, it also poses equally daunting challenges. One of them being the shortage of labelled data. To bring in value right out of the box for the text data being generated at a very fast pace in today's world, unsupervised aspect-based sentiment analysis allows us to generate insights without investing time or money in generating labels. From topic modelling approaches to recent deep learning-based aspect extraction models, this domain has seen a lot of development. One of the models that we improve upon is ABAE that reconstructs the sentences as a linear combination of aspect terms present in it, In this research we explore how we can use information from another unsupervised model to regularize ABAE, leading to better performance. We contrast it with baseline rule based ensemble and show that the ensemble methods work better than the individual models and the regularization based ensemble performs better than the rule-based one.
翻译:以外观为基础的感知分析是可在文件/ 句子上进行的最微粒的情绪分析形式。 除了在细粒上提供最深刻的见解外,它也提出了同样艰巨的挑战。 其中之一是缺少贴标签的数据。为了将当今世界以非常快的速度生成的文本数据从框中带来价值,未经监督的基于侧面的情绪分析使我们能够产生见解,而无需花费时间或金钱来制作标签。从主题建模方法到最近的深层次的基于学习的提取模型,这个领域经历了许多发展。我们改进的模型之一是ABAE, 它将这些句子重建成它所包含的侧面术语的线性组合, 在这个研究中,我们探索我们如何利用另一个不受监督的模式的信息来规范ABAE, 从而导致更好的性能。我们把它与基于基本规则的共用词比单个模型和基于正规化的共性共同体比规则的要好。