Litcius/Paper detail

Targeted Aspect-Based Multimodal Sentiment Analysis: An Attention Capsule Extraction and Multi-Head Fusion Network

Donghong Gu, Jiaqian Wang, Shaohua Cai, Chi Yang, Zhengxin Song, Haoliang Zhao, Luwei Xiao, Hua Wang

2021IEEE Access54 citationsDOIOpen Access PDF

Abstract

Multimodal sentiment analysis has currently identified its significance in a variety of domains. For the purpose of sentiment analysis, different aspects of distinguishing modalities, which correspond to one target, are processed and analyzed. In this work, the researchers propose the targeted aspect-based multimodal sentiment analysis (TABMSA) for the first time. Furthermore, an attention capsule extraction and multi-head fusion network (EF-Net) on the task of TABMSA is devised. The multi-head attention (MHA) based network and the ResNet-152 are employed to deal with texts and images, respectively. The integration of MHA and capsule network aims to capture the interaction among the multimodal inputs. In addition to the targeted aspect, the information from the context and the image is also incorporated for sentiment delivered. The researchers evaluate the proposed model on two manually annotated datasets. the experimental results demonstrate the effectiveness of our proposed model for this new task.

Topics & Concepts

Computer scienceSentiment analysisTask (project management)Context (archaeology)Artificial intelligenceModalitiesModality (human–computer interaction)Machine learningNatural language processingPattern recognition (psychology)EconomicsManagementPaleontologySociologySocial scienceBiologySentiment Analysis and Opinion MiningAdvanced Text Analysis TechniquesText and Document Classification Technologies