The Promotion Mechanism Development for User's Information Need Understanding Based on Knowledge Structure Precise Matching

Mingyi Yang, Yang Xu
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Abstract

Understanding user's information needs is the premise and basis to improve the quality of information services and systems. When engaging in various activities, people have run into problems that are followed by the realization of insufficient knowledge structure to resolve these problems, and the need for information has arisen. After information needs are generated, they have experienced an expression process from the internal to the external and from the abstract to the concrete. The process of information need expression is influenced by the users themselves and their surrounding environment. Ambiguities will appear during this process. The current systems mainly promote understanding through (1) information extraction and knowledge acquisition, (2) ontology, semantic web, and knowledge graphs, (3) semantic disambiguation, and (4) topic modeling. This research proposes a new promotion mechanism for the understanding of user information needs. Based on collaborative filtering and folksonomy, the mechanism can precisely match the user with other most related users and get the user's knowledge structure.
基于知识结构精确匹配的用户信息需求理解促进机制开发
了解用户的信息需求是提高信息服务和系统质量的前提和基础。人们在从事各种活动时遇到了问题,随之而来的是解决这些问题的知识结构不足的实现,对信息的需求就产生了。信息需求产生后,经历了一个由内到外、由抽象到具体的表达过程。信息需求表达的过程受到用户自身和周围环境的影响。在这个过程中会出现歧义。目前的系统主要通过(1)信息提取和知识获取,(2)本体、语义网和知识图,(3)语义消歧,(4)主题建模来促进理解。本研究提出了一种新的促进用户信息需求理解的机制。该机制基于协同过滤和大众分类法,可以将用户与其他最相关的用户进行精确匹配,并获得用户的知识结构。
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