商业应用的人工智能工具:科学的目标地图和文本分析

M. Kreines, E. Kreines
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引用次数: 0

摘要

企业正在寻找研发(R&D)方面的技术和投资机会。这里的基本问题是寻找研发成果和/或团队来解决专业任务和进行投资。但是商业在科学问题上没有个人观点。因此,企业正在寻求客观的工具来预测和评估研发的前景和成果。专家有自己的兴趣,需要大量的资金。研发反思是文本。计算机文本分析的现代方法可以做很多专家的工作,使其更加客观和便宜。搜索、系统化和排序研发成果和团队的工具是文本的计算机分析和科学地图。科学地图是按主题排列的具有科学性质的文本集合的分布图。科学地图是在科学出版物和研发团队的世界中导航的一种方式,是识别趋势和评估研发方向的工具。绘制科学图谱的常用方法是使用文献计量学/科学计量学数据、文本的一般概率模型、专家意见或基于词库或主题领域本体的人工智能(AI)模型和方法。企业的利益与对可能的主题或快速变化的科学领域的数量的先验既定观念的取向不一致。这些领域恰恰是企业最感兴趣的领域。在对文本和大规模文本集进行数学建模的基础上,提出了一种不使用先验分类方案和科学出版物引文数据的自适应动态科学地图的计算形成方法。题目(专题组)、题目的数量和题目上的文本分布是在没有专家参与的情况下通过计算确定的。给出了各种科学出版物的科学地图示例。提出了检验文本模型和科学图谱的充分性的原始方法。该方法在计算生成的地图(其主题)的基础上,将文章及其摘要分类为单独的对象。大规模实验的结果证实了本文提出的文本和文本集合数学建模的高效率。考虑了科学地图在商业应用中实际应用的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence Tools for Business Applications: Objective Map of Science and Analysis of Texts
Business is looking for technological and investment possibilities in research and development (R&D). Here the basic problems are to find R&D's results and/or teams for solving the professional tasks and for making investment. But business has no personal view on scientific problems. So business is seeking the objective tools for forecasting and evaluation of R&D prospects and results. Experts have own interests and require a lot of funding. R&D reflections are the texts. The modern methods of computer analysis of texts can do a lot of the experts' work for making it more objective and cheaper. The tools for search, systematization and ranking R&D's results and teams are computer analysis of texts and the map of science. The map of science is the distribution of the collection of texts of a scientific nature by the topics. The map of science is a way to navigate through the world of scientific publications and R&D's teams, a tool for identifying trends and assessing R&D directions. The usual ways for the map of science formation use bibliometric/scientometric data, general probability models of the texts, expert's opinion or artificial intelligence (AI) models and methods based on the thesaurus or on the ontology of the subject domains. The interests of business are not in line with the orientation on a priori established ideas about possible topics or there number for rapidly changing scientific fields. Precisely these fields are of the greatest interest to business. On the basis of mathematical modeling of texts and large-scale text collections, an approach is proposed for the computational formation of the adaptive dynamic map of science that does not use a priori classification schemes and data of the scientific publications' citation. Topics (thematic groups), their number and the distribution of texts over the topics are determined computationally without experts' involvement. Examples of the maps of science for various collections of scientific publications are given. The original method is proposed for checking the adequacy of the text models and the map of science. The method uses the categorization of articles and their abstracts as the separate objects on the basis of computationally generated map (its topics). The results of the large-scale experiment confirmed the high efficiency of the proposed mathematical modeling of texts and text collections. The possibilities of practical use of the map of science for business applications are considered.
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