首页> 外文会议>International conference on very large data bases >CHRONOS: Facilitating History Discovery by Linking Temporal Records
【24h】

CHRONOS: Facilitating History Discovery by Linking Temporal Records

机译:时间表:通过链接临时记录来促进历史发现

获取原文

摘要

Many data sets contain temporal records over a long period of time; each record is associated with a time stamp and describes some aspects of a real-world entity at that particular time. From such data, users often wish to search for entities in a particular period and understand the history of one entity or all entities in the data set. A major challenge for enabling such search and exploration is to identify records that describe the same real-world entity over a long period of time; however, linking temporal records is hard given that the values that describe an entity can evolve over time (e.g., a person can move from one affiliation to another). We demonstrate the CHRONOS system which offers users the useful tool for finding real-world entities over time and understanding history of entities in the bibliography domain. The core of CHRONOS is a temporal record-linkage algorithm, which is tolerant to value evolution over time. Our algorithm can obtain an F-measure of over 0.9 in linking author records and fix errors made by DBLP. We show how CHRONOS allows users to explore the history of authors, and how it helps users understand our linkage results by comparing our results with those of existing systems, highlighting differences in the results, explaining our decisions to users, and answering "what-if" questions.
机译:许多数据集包含很长一段时间的时间记录;每条记录都与时间戳相关联,并描述了该特定时间的现实世界实体的某些方面。从这样的数据中,用户经常希望在特定时期内搜索实体,并了解数据集中一个实体或所有实体的历史。启用此类搜索和探索的主要挑战是识别长时间描述相同现实世界实体的记录;但是,鉴于描述实体的值可以随着时间而变化(例如,一个人可以从一个从属关系转移到另一个从属关系),因此链接时间记录非常困难。我们演示了CHRONOS系统,该系统为用户提供了一个有用的工具,可以随着时间的流逝查找现实世界中的实体并了解书目领域中实体的历史。 CHRONOS的核心是时间记录链接算法,它可以随时间推移实现价值演变。我们的算法在链接作者记录和修复DBLP所犯的错误时可以获得超过0.9的F度量。我们将展示CHRONOS如何允许用户探索作者的历史,以及如何通过将我们的结果与现有系统的结果进行比较,突出显示结果的差异,向用户解释我们的决定以及回答“如果...这样的话”,来帮助用户了解我们的链接结果。 “ 问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号