利用结构化和非结构化数据的犯罪侧写分析

Yonghoon Kim, Mokdong Chung
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引用次数: 0

摘要

一般来说,结构化数据知道句子的意思,非结构化数据指的是一种未知的手段。尽管整个数据和组织内部的结构化信息的数量正在增加,但大多数信息仍然只能在非结构化数据中获得。虽然形式不同,但非结构化和结构化信息源都提供有关世界上实体及其属性和关系的信息。由于近年来社会的快速变化和信息设备的广泛普及,各种各样的数字信息被用于各种经济和社会分析。按犯罪类型划分的犯罪统计资料已被用作犯罪的主要因素。然而,仅使用结构化数据进行统计分析,给调查人员和用户提供的信息有限,在调查中存在困难。本文采用朝鲜语自然语言处理(Ko-NLP)和潜在语义分析(LSA)技术对结构化数据和非结构化数据进行分析。它将提供一个犯罪侧写优化系统,可应用于犯罪侧写系统或统计分析[1]。
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Analysis of Criminal Profiling Utilizing Structured and Unstructured Data
In general, the structured data knows the meaning of the sentence and unstructured data refers to an unknown means. Although the quantity of structured information in the entire data and within organizations is increasing, the majority of information remains available only in unstructured data. While different in form, both unstructured and structured information sources provide information about entities in the world and their properties and relations. Due to the recent rapid changes in society and wide spread of information devices, diverse digital information is utilized in a variety of economic and social analysis. Information related to the crime statistics by type of crime has been used as a major factor in crime. However, statistical analysis using only the structured data has the difficulty in the investigation by providing limited information to investigators and users. In this paper, structured data and unstructured data are analyzed by applying Korean Natural Language Processing (Ko-NLP) and the Latent Semantic Analysis (LSA) technique. It will provide a crime profile optimum system that can be applied to the crime profiling system or statistical analysis [1].
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