MuSe-Toolbox: The Multimodal Sentiment Analysis Continuous Annotation Fusion and Discrete Class Transformation Toolbox

Lukas Stappen, Lea Schumann, Benjamin Sertolli, Alice Baird, B. Weigel, E. Cambria, Björn Schuller
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引用次数: 27

Abstract

We introduce the MuSe-Toolbox - a Python-based open-source toolkit for creating a variety of continuous and discrete emotion gold standards. In a single framework, we unify a wide range of fusion methods and propose the novel Rater Aligned Annotation Weighting (RAAW), which aligns the annotations in a translation-invariant way before weighting and fusing them based on the inter-rater agreements between the annotations. Furthermore, discrete categories tend to be easier for humans to interpret than continuous signals. With this in mind, the MuSe-Toolbox provides the functionality to run exhaustive searches for meaningful class clusters in the continuous gold standards. To our knowledge, this is the first toolkit that provides a wide selection of state-of-the-art emotional gold standard methods and their transformation to discrete classes. Experimental results indicate that MuSe-Toolbox can provide promising and novel class formations which can be better predicted than hard-coded classes boundaries with minimal human intervention. The implementation is out-of-the-box available with all dependencies using a Docker container.
MuSe-Toolbox:多模态情感分析、连续注释融合和离散类转换工具箱
我们介绍MuSe-Toolbox——一个基于python的开源工具包,用于创建各种连续和离散的情感黄金标准。在单一框架中,我们统一了广泛的融合方法,并提出了新的分级对齐注释加权(RAAW),该方法在基于注释之间的分级协议加权和融合之前以翻译不变的方式对齐注释。此外,对人类来说,离散的类别往往比连续的信号更容易解释。考虑到这一点,MuSe-Toolbox提供了在连续金标准中对有意义的类集群进行详尽搜索的功能。据我们所知,这是第一个提供广泛选择的最先进的情感黄金标准方法及其向离散类的转换的工具包。实验结果表明,与硬编码的类边界相比,MuSe-Toolbox可以在最小的人为干预下提供有前途的和新颖的类形成,可以更好地预测。该实现是开箱即用的,所有依赖都使用Docker容器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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