论文标题
关于A.I.的演变和机器学习:迈向总理A.I.的元级测量和理解影响,影响和领导会议
On the Evolution of A.I. and Machine Learning: Towards a Meta-level Measuring and Understanding Impact, Influence, and Leadership at Premier A.I. Conferences
论文作者
论文摘要
现在,人工智能被公认为是一种通用技术,对人类的生活产生了充分的影响。这项工作旨在从研究人员对该领域的贡献的角度理解AI,特别是机器学习的演变。为此,我们提出了几项措施,允许对过去几十年来对AI和机器学习研究人员的影响,影响力和领导力进行分析。这项工作在一定程度上也有助于通过查看自1969年第一次国际人工智能会议(IJCAI)以来在旗舰AI和机器学习会议上发表的论文来探索该领域演变所涉及的动态,从而为AI的历史和演变做出了贡献。AI开发和进化使研究成果增加了六次的报名,该量会增加了近期的研究。我们构建了全面的引文协作和纸张作者数据集,并计算相应的中心度措施以进行我们的分析。这些分析可以更好地了解AI如何达到其目前的研究状况。在整个过程中,我们将这些数据集与ACM图灵奖获得者的工作以及所谓的两个AI冬季相关联。我们还研究了自我引用趋势和新作者的行为。最后,我们提出了一种新的方式来推断其组织的论文隶属关系的国家。因此,这项工作从大型技术场所数据集收集和分析的信息中对人工智能历史进行了深入的分析,并提出了新的见解,可以有助于理解和衡量AI的演变。
Artificial Intelligence is now recognized as a general-purpose technology with ample impact on human life. This work aims at understanding the evolution of AI and, in particular Machine learning, from the perspective of researchers' contributions to the field. In order to do so, we present several measures allowing the analyses of AI and machine learning researchers' impact, influence, and leadership over the last decades. This work also contributes, to a certain extent, to shed new light on the history and evolution of AI by exploring the dynamics involved in the field's evolution by looking at papers published at the flagship AI and machine learning conferences since the first International Joint Conference on Artificial Intelligence (IJCAI) held in 1969. AI development and evolution have led to increasing research output, reflected in the number of articles published over the last sixty years. We construct comprehensive citation collaboration and paper-author datasets and compute corresponding centrality measures to carry out our analyses. These analyses allow a better understanding of how AI has reached its current state of affairs in research. Throughout the process, we correlate these datasets with the work of the ACM Turing Award winners and the so-called two AI winters the field has gone through. We also look at self-citation trends and new authors' behaviors. Finally, we present a novel way to infer the country of affiliation of a paper from its organization. Therefore, this work provides a deep analysis of Artificial Intelligence history from information gathered and analysed from large technical venues datasets and suggests novel insights that can contribute to understanding and measuring AI's evolution.