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Optimized Scoring Systems: Toward Trust in Machine Learning for Healthcare and Criminal Justice

机译:优化的评分系统:迈向医疗保健和刑事司法的机器学习

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摘要

Questions of trust in machine-learning models are becoming increasingly important as these tools are starting to be used widely for high-stakes decisions in medicine and criminal justice. Transparency of models is a key aspect affecting trust. This paper reveals that there is new technology to build transparent machine-learning models that are often as accurate as black-box machine-learning models. These methods have already had an impact in medicine and criminal justice. This work calls into question the overall need for black-box models in these applications.
机译:由于这些工具开始广泛用于医学和刑事司法的高赌注决策,因此对机器学习模型的信任问题变得越来越重要。 模型的透明度是影响信任的关键方面。 本文揭示了新技术,建立透明机器学习模型,这些模型通常与黑匣子机器学习模型一样准确。 这些方法已经对医学和刑事司法产生了影响。 这项工作呼吁质疑这些应用中的黑盒式模型的总体需求。

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