Ground truth estimation of spoken english fluency score using decorrelation penalized low-rank matrix factorization

Hoon Chung, Y. Lee, J. Park
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引用次数: 1

Abstract

In this paper, we propose ground truth estimation of spoken English fluency scores using decorrelation penalized low-rank matrix factorization. Automatic spoken English fluency scoring is a general classification problem. The model parameters are trained to map input fluency features to corresponding ground truth scores, and then used to predict a score for an input utterance. Therefore, in order to estimate the model parameters to predict scores reliably, correct ground truth scores must be provided as target outputs. However, it is not simple to determine correct ground truth scores from human raters' scores, as these include subjective biases. Therefore, ground truth scores are usually estimated from human raters' scores, and two of the most common methods are averaging and voting. Although these methods are used successfully, questions remain about whether the methods effectively estimate ground truth scores by considering human raters' subjective biases and performance metric. Therefore, to address these issues, we propose an approach based on low-rank matrix factorization penalized by decorrelation. The proposed method decomposes human raters' scores to biases and latent scores maximizing Pearson's correlation. The effectiveness of the proposed approach was evaluated using human ratings of the Korean-Spoken English Corpus.
基于去相关惩罚低秩矩阵分解的英语口语流利度评分的真值估计
在本文中,我们提出了使用去相关惩罚低秩矩阵分解来估计英语口语流利度分数的基本真值。英语口语流利度自动评分是一个通用的分类问题。训练模型参数将输入流畅性特征映射到相应的基础真值分数,然后用于预测输入话语的分数。因此,为了估计模型参数以可靠地预测分数,必须提供正确的地面真值分数作为目标输出。然而,要从人类评分者的分数中确定正确的基础真相分数并不简单,因为这些分数包含主观偏见。因此,地面真实得分通常是根据人类评分者的得分来估计的,两种最常用的方法是平均和投票。虽然这些方法被成功地使用,但问题仍然存在,即这些方法是否通过考虑人类评分者的主观偏见和绩效指标来有效地估计真实得分。因此,为了解决这些问题,我们提出了一种基于去相关惩罚的低秩矩阵分解方法。提出的方法将人类评分者的分数分解为最大化Pearson相关性的偏差和潜在分数。使用韩语口语语料库的人类评分来评估所提出方法的有效性。
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