Public Sentiment Drift Analysis Based on Hierarchical Variational Auto-encoder
Wenyue Zhang, Xiaoli Li, Yang Li, Suge Wang, Deyu Li, Jian Liao, Jianxing Zheng
NLP Applications Short Paper
You can open the pre-recorded video in a separate window.
Abstract:
Detecting public sentiment drift is a challenging task due to sentiment change over time. Existing methods first build a classification model using historical data and subsequently detect drift if the model performs much worse on new data. In this paper, we focus on distribution learning by proposing a novel Hierarchical Variational Auto-Encoder (HVAE) model to learn better distribution representation, and design a new drift measure to directly evaluate distribution changes between historical data and new data.Our experimental results demonstrate that our proposed model achieves better results than three existing state-of-the-art methods.
NOTE: Video may display a random order of authors.
Correct author list is at the top of this page.
Connected Papers in EMNLP2020
Similar Papers
Weakly-Supervised Aspect-Based Sentiment Analysis via Joint Aspect-Sentiment Topic Embedding
Jiaxin Huang, Yu Meng, Fang Guo, Heng Ji, Jiawei Han,

Inducing Target-Specific Latent Structures for Aspect Sentiment Classification
Chenhua Chen, Zhiyang Teng, Yue Zhang,

Textual Data Augmentation for Efficient Active Learning on Tiny Datasets
Husam Quteineh, Spyridon Samothrakis, Richard Sutcliffe,
