变压器迁移学习情绪检测模型:在大数据中同步社会认同情绪和自我报告情绪。

IF 4.5 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Sanghyub John Lee, JongYoon Lim, Leo Paas, Ho Seok Ahn
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引用次数: 4

摘要

确定文本(如Twitter消息)作者情绪的策略通常依赖于多个注释者,这些注释者标记相对较小的文本段落数据集。另一种方法是收集包含作者自我报告情绪的大型文本数据库,可以应用人工智能、机器学习和自然语言处理工具。这两种方法各有优缺点。由少数人类注释者评估的情绪容易受到反映注释者特征的特殊偏见的影响。但是,基于大型自我报告情感数据集的模型可能会忽略人类注释者可以识别的微妙的社会情感。为了建立一种训练情绪检测模型的方法,使它们能够在不同的环境中取得良好的表现,目前的研究提出了一种与人类发展阶段相似的新型转换迁移学习方法:(1)检测文本作者报告的情绪;(2)将模型与注释者评级的情绪数据集中识别的社会情绪同步。基于一个大型的、新颖的、自我报告的情绪数据集(n = 3,654,544),并应用于先前发表的10个数据集的分析表明,迁移学习情绪模型取得了相对较强的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Transformer transfer learning emotion detection model: synchronizing socially agreed and self-reported emotions in big data.

Transformer transfer learning emotion detection model: synchronizing socially agreed and self-reported emotions in big data.

Transformer transfer learning emotion detection model: synchronizing socially agreed and self-reported emotions in big data.

Transformer transfer learning emotion detection model: synchronizing socially agreed and self-reported emotions in big data.

Tactics to determine the emotions of authors of texts such as Twitter messages often rely on multiple annotators who label relatively small data sets of text passages. An alternative method gathers large text databases that contain the authors' self-reported emotions, to which artificial intelligence, machine learning, and natural language processing tools can be applied. Both approaches have strength and weaknesses. Emotions evaluated by a few human annotators are susceptible to idiosyncratic biases that reflect the characteristics of the annotators. But models based on large, self-reported emotion data sets may overlook subtle, social emotions that human annotators can recognize. In seeking to establish a means to train emotion detection models so that they can achieve good performance in different contexts, the current study proposes a novel transformer transfer learning approach that parallels human development stages: (1) detect emotions reported by the texts' authors and (2) synchronize the model with social emotions identified in annotator-rated emotion data sets. The analysis, based on a large, novel, self-reported emotion data set (n = 3,654,544) and applied to 10 previously published data sets, shows that the transfer learning emotion model achieves relatively strong performance.

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来源期刊
Neural Computing & Applications
Neural Computing & Applications 工程技术-计算机:人工智能
CiteScore
11.40
自引率
8.30%
发文量
1280
审稿时长
6.9 months
期刊介绍: Neural Computing & Applications is an international journal which publishes original research and other information in the field of practical applications of neural computing and related techniques such as genetic algorithms, fuzzy logic and neuro-fuzzy systems. All items relevant to building practical systems are within its scope, including but not limited to: -adaptive computing- algorithms- applicable neural networks theory- applied statistics- architectures- artificial intelligence- benchmarks- case histories of innovative applications- fuzzy logic- genetic algorithms- hardware implementations- hybrid intelligent systems- intelligent agents- intelligent control systems- intelligent diagnostics- intelligent forecasting- machine learning- neural networks- neuro-fuzzy systems- pattern recognition- performance measures- self-learning systems- software simulations- supervised and unsupervised learning methods- system engineering and integration. Featured contributions fall into several categories: Original Articles, Review Articles, Book Reviews and Announcements.
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