论文标题
旨在增强人类发现的互补人工智能
Complementary artificial intelligence designed to augment human discovery
论文作者
论文摘要
旨在玩图灵的模仿游戏的人工智能,也不是为了最大程度地提高人类对信息操纵而构建的增强情报,以加速创新并改善人类对其最大挑战的集体进步。我们重新概念化和试点AI可以通过补充人类认知能力来从根本上增强人类理解。我们的互补情报方法基于人群智慧的洞察力,这取决于人群成员的信息和方法的独立性和多样性。通过编程将有关科学专业知识不断发展的科学专业知识分布的信息纳入研究论文,我们的方法遵循文献中内容的分布,同时避免了科学人群和假设可供选择。我们使用这种方法来为哪种材料具有有价值的能源相关特性(例如热电学)以及具有有价值的医疗特性(例如哮喘)来产生有价值的预测。我们证明,如果人类科学家和发明者确定的互补预测仅在未来的几年中被发现。当我们评估使用第一原理方程的预测的承诺时,我们证明了预测的互补性的增加不会减少,在某些情况下,预测的可能性增加了预测具有目标特性的可能性。总而言之,通过调整AI避免人群,我们可以产生假设,直到遥远的将来不太可能被想象或追求,并承诺打断科学进步。通过确定和纠正集体人类偏见,这些模型还提出了通过重新修正科学教育的发现来改善人类预测的机会。
Neither artificial intelligence designed to play Turing's imitation game, nor augmented intelligence built to maximize the human manipulation of information are tuned to accelerate innovation and improve humanity's collective advance against its greatest challenges. We reconceptualize and pilot beneficial AI to radically augment human understanding by complementing rather than competing with human cognitive capacity. Our approach to complementary intelligence builds on insights underlying the wisdom of crowds, which hinges on the independence and diversity of crowd members' information and approach. By programmatically incorporating information on the evolving distribution of scientific expertise from research papers, our approach follows the distribution of content in the literature while avoiding the scientific crowd and the hypotheses cognitively available to it. We use this approach to generate valuable predictions for what materials possess valuable energy-related properties (e.g., thermoelectricity), and what compounds possess valuable medical properties (e.g., asthma) that complement the human scientific crowd. We demonstrate that our complementary predictions, if identified by human scientists and inventors at all, are only discovered years further into the future. When we evaluate the promise of our predictions with first-principles equations, we demonstrate that increased complementarity of our predictions does not decrease and in some cases increases the probability that the predictions possess the targeted properties. In summary, by tuning AI to avoid the crowd, we can generate hypotheses unlikely to be imagined or pursued until the distant future and promise to punctuate scientific advance. By identifying and correcting for collective human bias, these models also suggest opportunities to improve human prediction by reformulating science education for discovery.