基于用户体验大数据的“两线感知”概念模型和发现引擎设计

Junbo Wang, Yilang Wu, Zixue Cheng
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引用次数: 2

摘要

物联网/大数据是近年来世界范围内的一个热门研究课题,并有望在不久的将来极大地改变世界。与传统网站数据相比,来自物联网设备的大数据具有4大v特征,即体积(volume)、速度(velocity)、种类(variety)和准确性(veracity)。由于以上四个特点,很难通过数据分析为用户提供及时的服务,特别是随着数据类型、数据量等的巨大增长。数据应该能够感知用户的情况/需求,并自动调整以发现用户的情况/需求。因此,在本文中,我们提出了一种双链感知的大数据管理和分析机制。first-tie-aware是自动掌握用户周围的情况,并在生成数据时将这些情况封装在一起。第二种感知是自动改变数据以适应用户的情况/需求。在此基础上,提出了一种新的基于双块感知模型的发现算法。给定用户从他们模糊的记忆片段中输入的信息,发现算法试图发现真正需要的信息。目前,该系统将基于一些开放源代码来实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A concept model of ‘two-ties-aware’ and design of a discovery engine based on user experienced Bigdata
IoT/Bigdata is a hot research topic all over the world in recent years and is expecting to change the world greatly in the near future. Comparing with the data in traditional websites, Bigdata from IoT devices have 4 big V-features, i.e., volume, velocity, variety, and veracity. Due to the above four features, it is hard to provide timely services to users by data analysis, especially with the great growth of data types, volume and so on. Data should be able to aware situations/demands of users, and automatically be adjusted for discovering the situations/demands of users'. Therefore, in this paper, we propose a two-ties-aware mechanism for Bigdata management and analysis. The first-tie-aware is to automatically grasp the situations around the user, and encapsulate the situation together when data is generated. The second-tie-aware is to automatically change the data to fit users' situations/demands. Furthermore, we propose a novel discovery algorithm based on the two-tiles-aware model. Given the user inputs from their ambiguous memory fragments, the discovery algorithm tries to discover the truly wanted information. Currently, the system is going to be implemented based on some open sources.
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