使用ipad绘制的模糊集为XBRL定义个性化概念

M. Reformat, R. Yager, Nhuan D. To
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引用次数: 1

摘要

对业务数据进行高效和有效的分析需要更好地理解数据代表什么,以及在什么程度上代表什么。一种类似于人类的方法,既不需要太详细,又不需要学习更多关于数据内容的知识,就是将数据总结并映射为执行分析的人所熟悉的概念。总结过程有助于识别嵌入在数据中的最重要的事实。所有这些都对分析大量业务数据非常重要,这些数据是做出良好而合理的财务决策所必需的。有两个方面可以使数据处理更全面、更容易:财务数据的标准化表示格式;以及一种人性化的方式来定义概念,并使用它们来构建代表处理数据的个性化模型。第一个方面已经由可扩展商业报告语言 (XBRL)解决了,XBRL是一种定义、表示和交换公司和财务信息的标准化格式。第二个方面是为个人提供理解数据内容的能力,方法是根据他们自己对所寻找的概念的感知,确定汇总数据的陈述的真值程度。在本文中,我们介绍了一个平板电脑应用程序——基于模糊集(TiFS)输入的平板电脑——并演示了它在输入个性化的概念和术语定义方面的有用性,从而能够快速分析财务数据。这种分析意味着利用软查询和聚合操作来提取和汇总数据,并以分析人员熟悉的形式呈现数据。该应用程序允许定义概念和术语与代表一个人的概念感知的“手指制造的”图纸。此外,这些定义用于构建用于探索XBRL数据的摘要语句。它们配备了语言术语(例如LARGE, SMALL, FAST)和语言量词(例如ALL, most)的“drawn”定义,并能够从用户兴趣的角度对数据内容进行总结。语言术语和量词表示模糊集的隶属函数。利用模糊集可以以类似人类的方式执行数据汇总操作。TiFS的应用说明了输入个性化概念定义的便利性及其对数据解释的影响。这介绍了个性化和人工智能系统对个人感知和观点的适应方面。建议的应用程序用于对XBRL文档执行基本分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defining personalized concepts for XBRL using iPAD-drawn fuzzy sets
An efficient and effective analysis of business data requires a better understanding of what the data represents, and to what degree. A human†like way of accomplishing that without being too detailed yet learning more about data content is to summarize and map the data into concepts familiar to a person performing analysis. Processes of summarization help identify the most essential facts that are embedded in the data. All this is of significant importance for analysis of large amounts of business data required to make good and sound financial decisions. There are two aspects enabling more comprehensive yet easier processing of data: a standardized representation format of financial data; and a human†friendly way of defining concepts and using them for building personalized models representing processing data. The first of the aspects has been addressed by the eXtensible Business Reporting Language (XBRL)—a standardized format of defining, representing and exchanging corporate and financial information. The second aspect is related to providing individuals with the ability to gain understanding of data content via determining a degree of truth of statements summarizing data based on their own perception of concepts they are looking for. In this paper, we introduce a tablet application—Tablet†based input of Fuzzy Sets (TiFS)—and demonstrate its usefulness for entering personalized definitions of concepts and terms that enable a quick analysis of financial data. Such analysis means utilization of soft queries and operations of aggregation that extract and summarize the data and present it in a form familiar to analysts. The application allows for defining concepts and terms with ‘finger†made’ drawings representing a person's perception of concepts. Further, these definitions are used to build summarization statements for exploring XBRL data. They are equipped with ‘drawn’ definitions of linguistic terms (e.g. LARGE, SMALL, FAST) and linguistic quantifiers (e.g. ALL, MOSTLY), and enable summarization of data content from the perspective of a user's interests. The ‘drawn’ linguistic terms and quantifiers represent membership functions of fuzzy sets. Utilization of fuzzy sets allows for performing operations of data summarization in a human†like way. The application of TiFS illustrates ease of inputting personalized definitions of concepts and their influence on the interpretation of data. This introduces aspects of personalization and adaptation of artificial intelligence systems to perceptions and views of individuals. The proposed application is used to perform a basic analysis of an XBRL document.
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