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Human-to-AI Coach: Improving Human Inputs to AI Systems

机译:人为-AI教练:将人类投入改善为AI系统

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Humans increasingly interact with Artificial intelligence (AI) systems. AI systems are optimized for objectives such as minimum computation or minimum error rate in recognizing and interpreting inputs from humans. In contrast, inputs created by humans are often treated as a given. We investigate how inputs of humans can be altered to reduce misinterpretation by the AI system and to improve efficiency of input generation for the human while altered inputs should remain as similar as possible to the original inputs. These objectives result in trade-offs that are analyzed for a deep learning system classifying handwritten digits. To create examples that serve as demonstrations for humans to improve, we develop a model based on a conditional convolutional autoencoder (CCAE). Our quantitative and qualitative evaluation shows that in many occasions the generated proposals lead to lower error rates, require less effort to create and differ only modestly from the original samples.
机译:人类越来越多地与人工智能(AI)系统互动。 AI系统针对识别和解释人类输入的最小计算或最小错误率的目标进行了优化。 相比之下,人类创建的输入通常被视为给定的。 我们调查如何改变人类的输入,以减少AI系统的误解,并提高人类的输入生成效率,而改变的输入应保持与原始输入相似。 这些目标导致折衷,分析了对手写数字进行分类的深度学习系统。 要创建作为人类的示范的示范,我们开发了一种基于条件卷积AutoEncoder(CCAE)的模型。 我们的定量和定性评估表明,在许多情况下,所产生的建议导致较低的错误率降低,要求更少的努力从原始样本中谦虚地创建和不同。

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