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Intelligent and Good Machines? The Role of Domain and Context Codification

机译:智能和好机器?域和上下文编纂的作用

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There is a core problem with the modern Artificial Intelligence (AI) technologies, based on the current new wave of Artificial Neural Networks (ANNs). Whether they have been used in healthcare or for exploring Mars, we, the programmers who build them, do not know well why they make some decisions over others. Many are putting into question, hence, this aura of AI objectivity and infallibility; on our side, we, instead, identify a key issue around the problem of AI errors and bias into an insufficient human ability to determine the limits of the context, where the ANNs will have to operate. In fact, while it is of great amplitude the range of what the rational side of the human mind can master, machine intelligence has limited capacity to learn in completely unknown scenarios. Simply, an inaccurate or incomplete codification of the context may result into AI failures. We present here a simple cognification ANN-based case study, in an underwater scenario, where the difficulty of identifying and then codifying all the relevant contextual features has led to a situation of partial failure. This paper reports on our reflections, and subsequent technical actions taken to recover from this situation.
机译:基于目前的人工神经网络(ANNS)的新浪潮,现代人工智能(AI)技术存在核心问题。他们是否已被用于医疗保健或探索火星,我们建立它们的程序员,不知道为什么他们对他人做出一些决定。许多人正在提出质疑,因此,这种AI客观性和无谬误的光环;在我们方面,我们,相反,围绕AI错误问题和偏见的问题围绕着一个不足的人类能力来确定确定环境的限制的能力,其中ANNS必须运行。事实上,虽然它具有很大的振幅,但是人类思想的理性方面可以掌握的范围,机器智能在完全未知的情景中学习的能力有限。简单地,对上下文的不准确或不完整编写可能导致AI失败。我们在这里展示了一个简单的认知安基案例研究,在一个水下情景中,其中识别难度然后编纂所有相关的上下文特征导致部分失败的情况。本文报告了我们的思考,随后从这种情况中恢复的后续技术行动。

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