Abstract
The future emotion prediction of users on social media has been attracting increasing attention from academics. Previous studies on predicting future emotion have focused on the characteristics of individuals’ emotion changes; however, the role of the individual’s neighbors has not yet been thoroughly researched. To fill this gap, a surrounding-aware individual emotion prediction model (SAEP) based on a deep encoder–decoder architecture is proposed to predict individuals’ future emotions. In particular, two memory-based attention networks are constructed: The time-evolving attention network and the surrounding attention network to extract the features of the emotional changes of users and neighbors, respectively. Then, these features are incorporated into the emotion prediction task. In addition, a novel variant LSTM is introduced as the encoder of the proposed model, which can effectively extract complex patterns of users’ emotional changes from irregular time series. Extensive experimental results show that the proposed approach outperforms five alternative methods. The SAEP approach has improved by approximately 4.21–14.84% micro F1 on a dataset built from Twitter and 7.30–13.41% on a dataset built from Microblog. Further analyses validate the effectiveness of the proposed time-evolving context and surrounding context, as well as the factors that may affect the prediction results.
Highlights
Emotions affect the status of humans physiologically and psychologically
This study focuses on the problem of individual’s future emotion prediction in the context of irregular time series
Conditional Random Field (CRF) [47]: It is a graphical model based on conditional random field
Summary
One may make a quick decision because of a particular feeling. More and more people are used to sharing their emotions and opinions through texts on social networks. It is interesting to understand how an individual’s emotions are affected by various factors and predict his future emotion. Individual emotion prediction aims to determine the future emotional state of a user from current and previous behavioral cues [1] and has potential applications in various fields, such as human–computer or human–robot interactions [2], market analysis [3], public opinion analysis [4], political decision-making [5], and recommendation systems [6]. Several researchers have conducted research on individual emotion prediction by using texts of users’ posts and comments
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