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Automated Scoring: Beyond Natural Language Processing

机译:自动评分:自然语言处理之外

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In this position paper, we argue that building operational automated scoring systems is a task that has disciplinary complexity above and beyond standard competitive shared tasks which usually involve applying the latest machine learning techniques to publicly available data in order to obtain the best accuracy. Automated scoring systems warrant significant cross-discipline collaboration of which natural language processing and machine learning are just two of many important components. Such systems have multiple stakeholders with different but valid perspectives that can often times be at odds with each other. Our position is that it is essential for us as NLP researchers to understand and incorporate these perspectives into our research and work towards a mutually satisfactory solution in order to build automated scoring systems that are accurate, fair, unbiased, and useful.
机译:在本立场文件中,我们认为,构建可操作的自动评分系统是一项具有超出标准竞争性共享任务的纪律复杂性的任务,该任务通常涉及将最新的机器学习技术应用于可公开获得的数据,以获得最佳准确性。自动化评分系统可确保跨学科的重大协作,其中自然语言处理和机器学习只是许多重要组成部分中的两个。这样的系统有多个利益相关者,他们具有不同但有效的观点,这些观点有时常常彼此矛盾。我们的立场是,对于我们作为NLP研究人员而言,至关重要的是,必须将这些观点理解并纳入我们的研究中,并朝着相互满意的解决方案努力,以构建准确,公正,公正且有用的自动评分系统。

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