Emotion Detection in Text: a Review
This is an incremental review paper that identifies challenges in emotion detection for applications in fields like marketing and AI, but does not propose new solutions.
The paper reviews existing techniques for emotion detection in text, highlighting their insufficiency due to the complexity of human emotions and implicit language, and argues that standard methodologies are inadequate for capturing these intricacies.
In recent years, emotion detection in text has become more popular due to its vast potential applications in marketing, political science, psychology, human-computer interaction, artificial intelligence, etc. Access to a huge amount of textual data, especially opinionated and self-expression text also played a special role to bring attention to this field. In this paper, we review the work that has been done in identifying emotion expressions in text and argue that although many techniques, methodologies, and models have been created to detect emotion in text, there are various reasons that make these methods insufficient. Although, there is an essential need to improve the design and architecture of current systems, factors such as the complexity of human emotions, and the use of implicit and metaphorical language in expressing it, lead us to think that just re-purposing standard methodologies will not be enough to capture these complexities, and it is important to pay attention to the linguistic intricacies of emotion expression.