Litcius/Paper detail

Multi-Label Emotion Detection via Emotion-Specified Feature Extraction and Emotion Correlation Learning

Jiawen Deng, Fuji Ren

2020IEEE Transactions on Affective Computing89 citationsDOIOpen Access PDF

Abstract

Textual emotion detection is an attractive task while previous studies mainly focused on polarity or single-emotion classification. However, human expressions are complex, and multiple emotions often co-occur with non-negligible emotion correlations. In this paper, a Multi-label Emotion Detection Architecture (MEDA) is proposed to detect all associated emotions expressed in a given piece of text. MEDA is mainly composed of two modules: Multi-Channel Emotion-Specified Feature Extractor (MC-ESFE) and Emotion Correlation Learner (ECorL). MEDA captures underlying emotion-specified features through MC-ESFE module, which is composed of multiple channel-wise ESFE networks. Each channel in MC-ESFE is devoted to the feature extraction of a specified emotion from sentence-level to context-level through a hierarchical structure. With underlying features, emotion correlation learning is implemented through an emotion sequence predictor in ECorL. Furthermore, we define a new loss function: multi-label focal loss. With this loss function, the model can focus more on misclassified positive-negative emotion pairs and improve the overall performance by balancing the prediction of positive and negative emotions. The evaluation of proposed MEDA architecture is carried out on emotional corpus: RenCECps and NLPCC2018 datasets. The experimental results indicate that the proposed method can achieve better performance than state-of-the-art methods in this task.

Topics & Concepts

CorrelationComputer scienceFeature (linguistics)Context (archaeology)Feature extractionEmotion classificationArtificial intelligenceFocus (optics)SentenceTask (project management)Pattern recognition (psychology)Emotion recognitionEmotion perceptionMathematicsFacial expressionEngineeringLinguisticsGeometryOpticsPhysicsPaleontologySystems engineeringBiologyPhilosophySentiment Analysis and Opinion MiningText and Document Classification TechnologiesAdvanced Text Analysis Techniques
Multi-Label Emotion Detection via Emotion-Specified Feature Extraction and Emotion Correlation Learning | Litcius