处理情感分析中的年龄相关偏差

Mark Diaz, Isaac L. Johnson, Amanda Lazar, Anne Marie Piper, D. Gergle
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引用次数: 143

摘要

文本分析的计算方法在理解在线交互方面很有用,例如文本中的观点和主观性。然而,最近的研究已经确定了基于语言的模型中的各种形式的偏见,这引起了人们对基于社会人口因素(例如,性别,种族,地理)传播针对某些群体的社会偏见的风险的关注。在这项研究中,我们对语言模型在研究老龄化话语中的应用进行了系统的研究。我们分析了15个情感分析模型和10个广泛使用的GloVe词嵌入对年龄相关术语的处理,并试图通过处理模型训练数据的方法来减轻偏见。我们的研究结果表明,在许多情感分析算法和词嵌入的输出中编码了显著的年龄偏见。我们讨论了与输出偏差相关的模型特征,以及如何将这些模型最好地纳入研究。
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Addressing Age-Related Bias in Sentiment Analysis
Computational approaches to text analysis are useful in understanding aspects of online interaction, such as opinions and subjectivity in text. Yet, recent studies have identified various forms of bias in language-based models, raising concerns about the risk of propagating social biases against certain groups based on sociodemographic factors (e.g., gender, race, geography). In this study, we contribute a systematic examination of the application of language models to study discourse on aging. We analyze the treatment of age-related terms across 15 sentiment analysis models and 10 widely-used GloVe word embeddings and attempt to alleviate bias through a method of processing model training data. Our results demonstrate that significant age bias is encoded in the outputs of many sentiment analysis algorithms and word embeddings. We discuss the models' characteristics in relation to output bias and how these models might be best incorporated into research.
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