Abstract

Aspect level sentiment classification aims to recognize the sentiment polarity of each aspect term in a sentence. However, most of the existing methods usually applied the attention mechanism over position-weighted memory and did not consider inter-aspect information. To address these issues, we propose a novel framework for aspect level sentiment classification, Deep Selective Memory Network (DSMN), which selects the context memory dynamically for better guiding the multi-hop attention mechanism and integrates inter-aspect information with deep memory network. By designing a selective attention mechanism based on the distance information between an aspect and its context, DSMN focuses on different parts of the context memory in different memory network layers to capture abundant aspect-aware context information. Besides, to make full use of the inter-aspect information, we also design effective inter-aspect modeling modules to generate both semantic and relation information of the nearby aspects for the desired aspect. We evaluate the advantages of our framework on three benchmark datasets, and experiment results show that our framework achieves state-of-the-art performance.

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