Unnatural Selection: Seeing Human Intelligence in Artificial Creations

T. Veale
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引用次数: 9

Abstract

Abstract As generative AI systems grow in sophistication, so too do our expectations of their outputs. For as automated systems acculturate themselves to ever larger sets of inspiring human examples, the more we expect them to produce human-quality outputs, and the greater our disappointment when they fall short. While our generative systems must embody some sense of what constitutes human creativity if their efforts are to be valued as creative by human judges, computers are not human, and need not go so far as to actively pretend to be human to be seen as creative. As discomfiting objects that reside at the boundary of two seemingly disjoint categories, creative machines arouse our sense of the uncanny, or what Freud memorably called the Unheimlich. Like a ventriloquist’s doll that finds its own voice, computers are free to blend the human and the non-human, to surprise us with their knowledge of our world and to discomfit with their detached, other-worldly perspectives on it. Nowhere is our embrace of the unnatural and the uncanny more evident than in the popularity of Twitterbots, automatic text generators on Twitter that are followed by humans precisely because they are non-human, and because their outputs so often seem meaningful yet unnatural. This paper evaluates a metaphor generator named @MetaphorMagnet, a Twitterbot that tempers the uncanny with aptness to yield results that are provocative but meaningful.
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《非自然选择:从人工造物中看人类智能》
随着生成式人工智能系统变得越来越复杂,我们对其输出的期望也越来越高。因为随着自动化系统适应越来越多的鼓舞人心的人类例子,我们越期望它们产生人类质量的输出,当它们达不到目标时,我们就越失望。虽然我们的生成系统必须体现一些构成人类创造力的东西,如果它们的努力被人类法官视为创造性,计算机不是人类,也不需要主动假装成人类来被视为创造性。作为处于两个看似不相关的类别的边界上的令人不安的物体,创造性的机器唤起了我们对神秘的感觉,或者弗洛伊德令人难忘地称之为昂海姆利克法。就像腹语者的玩偶能找到自己的声音一样,计算机可以自由地将人类和非人类融合在一起,用它们对我们世界的了解给我们带来惊喜,并让我们对它们超然的、超凡脱俗的视角感到不安。没有什么比Twitterbots的流行更能体现我们对不自然和不可思议的拥抱了,Twitter上的自动文本生成器被人类使用,正是因为它们不是人类,而且它们的输出往往看起来有意义,但却不自然。本文评估了一个名为@隐喻磁铁的隐喻生成器,这是一个twitter机器人,它可以用灵巧的方式缓和不可思议的事情,产生具有煽动性但又有意义的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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