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Your evidence? Machine learning algorithms for medical diagnosis and prediction

机译:你的证据?用于医学诊断和预测的机器学习算法

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摘要

Computer systems for medical diagnosis based on machine learning are not mere science fiction. Despite undisputed potential benefits, such systems may also raise problems. Two (interconnected) issues are particularly significant from an ethical point of view: The first issue is that epistemic opacity is at odds with a common desire for understanding and potentially undermines information rights. The second (related) issue concerns the assignment of responsibility in cases of failure. The core of the two issues seems to be that understanding and responsibility are concepts that are intrinsically tied to the discursive practice of giving and asking for reasons. The challenge is to find ways to make the outcomes of machine learning algorithms compatible with our discursive practice. This comes down to the claim that we should try to integrate discursive elements into machine learning algorithms. Under the title of “explainable AI” initiatives heading in this direction are already under way. Extensive research in this field is needed for finding adequate solutions.
机译:基于机器学习的医学诊断计算机系统不仅仅是科幻小说。尽管存在无可争辩的潜在收益,但此类系统也可能会引起问题。从伦理的角度来看,两个(相互关联的)问题尤为重要:第一个问题是,认识上的不透明与理解的共同愿望不一致,并有可能破坏信息权。第二个(相关)问题涉及失败情况下的责任分配。这两个问题的核心似乎是,理解和责任是与给予和要求理由的话语实践固有地联系在一起的概念。面临的挑战是找到使机器学习算法的结果与我们的推理实践兼容的方法。这归结为我们应该尝试将话语元素集成到机器学习算法中的主张。以“可解释的人工智能”为标题的这个方向的倡议已经在进行中。为了寻找适当的解决方案,需要对该领域进行广泛的研究。

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