Distance Metric Learning for Aspect Phrase Grouping

04/29/2016
by   Shufeng Xiong, et al.
0

Aspect phrase grouping is an important task in aspect-level sentiment analysis. It is a challenging problem due to polysemy and context dependency. We propose an Attention-based Deep Distance Metric Learning (ADDML) method, by considering aspect phrase representation as well as context representation. First, leveraging the characteristics of the review text, we automatically generate aspect phrase sample pairs for distant supervision. Second, we feed word embeddings of aspect phrases and their contexts into an attention-based neural network to learn feature representation of contexts. Both aspect phrase embedding and context embedding are used to learn a deep feature subspace for measure the distances between aspect phrases for K-means clustering. Experiments on four review datasets show that the proposed method outperforms state-of-the-art strong baseline methods.

READ FULL TEXT
research
04/02/2018

Attention-based Ensemble for Deep Metric Learning

Recently, ensemble has been applied to deep metric learning to yield sta...
research
10/17/2021

Fine-Grained Opinion Summarization with Minimal Supervision

Opinion summarization aims to profile a target by extracting opinions fr...
research
02/03/2018

Left-Center-Right Separated Neural Network for Aspect-based Sentiment Analysis with Rotatory Attention

Deep learning techniques have achieved success in aspect-based sentiment...
research
05/25/2016

BattRAE: Bidimensional Attention-Based Recursive Autoencoders for Learning Bilingual Phrase Embeddings

In this paper, we propose a bidimensional attention based recursive auto...
research
06/17/2019

Context-aware Embedding for Targeted Aspect-based Sentiment Analysis

Attention-based neural models were employed to detect the different aspe...
research
02/01/2021

Semantic Grouping Network for Video Captioning

This paper considers a video caption generating network referred to as S...
research
04/02/2016

Discriminative Phrase Embedding for Paraphrase Identification

This work, concerning paraphrase identification task, on one hand contri...

Please sign up or login with your details

Forgot password? Click here to reset