Litcius/Paper detail

Neuro or Symbolic? Fine-Tuned Transformer With Unsupervised LDA Topic Clustering for Text Sentiment Analysis

Fei Ding, Xin Kang, Fuji Ren

2023IEEE Transactions on Affective Computing13 citationsDOIOpen Access PDF

Abstract

For text sentiment analysis, state-of-the-art neural language models have demonstrated promising performance. However, they lack interpretability, require vast volumes of annotated data, and are typically specialized for tasks. In this paper, we explore a connection between fine-tuned Transformer models and unsupervised LDA approach to cope with text sentiment analysis tasks, inspired by the concept of Neuro-symbolic AI. The Transformer and LDA models are combined as a feature extractor to extract the hidden representations of the input text sequences. Subsequently, we employ a feedforward network to forecast various sentiment analysis tasks, such as multi-label emotion prediction, dialogue quality prediction, and nugget detection. Our proposed method obtains the best results in the NTCIR-16 dialogue evaluation (DialEval-2) task, as well as cutting-edge results in emotional intensity prediction using the Ren_CECps corpus. Extensive experiments show that our proposed method is highly explainable, cost-effective in training, and superior in terms of accuracy and robustness.

Topics & Concepts

InterpretabilityComputer scienceSentiment analysisArtificial intelligenceTransformerRobustness (evolution)ExtractorCluster analysisNatural language processingArtificial neural networkMachine learningPattern recognition (psychology)Speech recognitionBiochemistryPhysicsChemistryVoltageEngineeringGeneProcess engineeringQuantum mechanicsSentiment Analysis and Opinion MiningTopic ModelingAdvanced Text Analysis Techniques