Fuzzy Layered Convolution Neutral Network for Feature Level Fusion Based On Multimodal Sentiment Classification

Onasoga Olukayode Ayodele, N. H. Harun, N. Yusoff
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Abstract

Multimodal sentiment analysis (MSA) is one of the core research topics of natural language processing (NLP). MSA has become a challenge for scholars and is equally complicated for an appliance to comprehend. One study that supports MSdifficulties is the MSA, which is learning opinions, emotions, and attitudes in an audio-visual format. In order words, using such diverse modalities to obtain opinions and identify emotions is necessary. Such utilization can be achieved via modality datafusion;such as feature fusion. In handling the data fusion of such diverse modalities while obtaining high performance, a typical machine learning algorithm is Deep Learning (DL), particularly the Convolutional Neutral Network (CNN), which has the capacity to handle tasks of great intricacy and difficulty. In this paper, we present a CNN architecture with an integrated layer via fuzzy methodologies for MSA, a task yet to be explored in improving the accuracy performance of CNN for diverse inputs. Experiments conducted on a benchmark multimodal dataset, MOSI, obtaining 37.5% and 81% on seven (7) class and binary classification respectively, reveals an improved accuracy performance compared with the typical CNN, which acquired 28.9% and 78%, respectively.
基于多模态情感分类的模糊分层卷积神经网络特征级融合
多模态情感分析(MSA)是自然语言处理(NLP)的核心研究课题之一。MSA已经成为学者们面临的挑战,对于一个设备来说理解起来也同样复杂。支持msdifficulty的一项研究是MSA,即以视听形式学习观点、情绪和态度。换句话说,使用这种多样化的方式来获取意见和识别情绪是必要的。这种利用可以通过模态数据融合实现,例如特征融合。在获得高性能的同时处理这种多种模式的数据融合,典型的机器学习算法是深度学习(Deep learning, DL),尤其是卷积神经网络(Convolutional Neutral Network, CNN),它有能力处理非常复杂和困难的任务。在本文中,我们通过模糊方法为MSA提出了一个具有集成层的CNN架构,这是一个有待探索的任务,以提高CNN在不同输入下的精度性能。在一个基准多模态数据集上进行的实验中,MOSI在七(7)类和二值分类上分别获得了37.5%和81%的准确率,与典型CNN的28.9%和78%的准确率相比,MOSI的准确率有所提高。
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