Complementary Aspect-Based Opinion Mining across Asymmetric Collections Using CAMEL

Abstract

We propose CAMEL, a novel theme model for complementary aspect-based opinion mining across asymmetric collections CAMEL picks up data complementarity by demonstrating both normal and explicit aspectes crosswise over assortments, while keeping all the comparing suppositions for contrastive investigation. An auto-labeling scheme called AME is likewise proposed to help separate among viewpoint and opinion words without elaborative human marking, which are additionally upgraded by including word implanting based comparability as another element. In addition, CAMEL-DP, a nonparametric option in contrast to CAMEL is likewise proposed dependent on coupled Dirichlet Processes. Broad examinations on genuine world multi-collection audits information exhibit the prevalence of our strategies over aggressive baselines. This is especially obvious when the data shared by various assortments turns out to be genuinely divided

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