Heterogeneous Crowd-Sourced Data Analytics

Advances in computing, communication, storage, and sensing technologies have reshaped the lives of people by changing the way they live, work, interact with their environments, and even socialize. Modern information systems collect valuable information about every aspect of our lives. Such data is b...

Full description

Bibliographic Details
Main Authors: Mahmoud Barhamgi, Zhangbing Zhou, Chao Chen, Jean-Claude Thill
Format: Article
Language:English
Published: IEEE 2017-01-01
Series:IEEE Access
Online Access:https://ieeexplore.ieee.org/document/8262679/
_version_ 1818558730324672512
author Mahmoud Barhamgi
Zhangbing Zhou
Chao Chen
Jean-Claude Thill
author_facet Mahmoud Barhamgi
Zhangbing Zhou
Chao Chen
Jean-Claude Thill
author_sort Mahmoud Barhamgi
collection DOAJ
description Advances in computing, communication, storage, and sensing technologies have reshaped the lives of people by changing the way they live, work, interact with their environments, and even socialize. Modern information systems collect valuable information about every aspect of our lives. Such data is becoming increasingly voluminous and readily available. Data is heterogeneous, contributed by the crowd of people, coming from different sources and with diverse formats. Broadly, such data is generated mainly from three sources: Internet and Web applications, sensor networks, and mobile/wearable devices. The scale and richness of the multimodal, mixed data sources present us with an opportunity to compile the data into a comprehensive picture of individuals’ daily life facets, transform our understanding of our lives, organizations and societies, and enable completely innovative urban services, including public people and freight transportation, public safety, city resource management, environment monitoring, and social interaction assistance. However, raw data is heterogeneous, redundant, fragmented, and quality-variant, which prevents their direct use for analysis, management, forecasting and planning. Consequently, emerging data analytics targeted to their sessions, including data co-mining, data fusion, data selection, need to be studied and applied more thoroughly.
first_indexed 2024-12-14T00:16:07Z
format Article
id doaj.art-bbe4057f374549e8b71db29eed134ed2
institution Directory Open Access Journal
issn 2169-3536
language English
last_indexed 2024-12-14T00:16:07Z
publishDate 2017-01-01
publisher IEEE
record_format Article
series IEEE Access
spelling doaj.art-bbe4057f374549e8b71db29eed134ed22022-12-21T23:25:32ZengIEEEIEEE Access2169-35362017-01-015278072780910.1109/ACCESS.2017.27830588262679Heterogeneous Crowd-Sourced Data AnalyticsMahmoud BarhamgiZhangbing ZhouChao ChenJean-Claude ThillAdvances in computing, communication, storage, and sensing technologies have reshaped the lives of people by changing the way they live, work, interact with their environments, and even socialize. Modern information systems collect valuable information about every aspect of our lives. Such data is becoming increasingly voluminous and readily available. Data is heterogeneous, contributed by the crowd of people, coming from different sources and with diverse formats. Broadly, such data is generated mainly from three sources: Internet and Web applications, sensor networks, and mobile/wearable devices. The scale and richness of the multimodal, mixed data sources present us with an opportunity to compile the data into a comprehensive picture of individuals’ daily life facets, transform our understanding of our lives, organizations and societies, and enable completely innovative urban services, including public people and freight transportation, public safety, city resource management, environment monitoring, and social interaction assistance. However, raw data is heterogeneous, redundant, fragmented, and quality-variant, which prevents their direct use for analysis, management, forecasting and planning. Consequently, emerging data analytics targeted to their sessions, including data co-mining, data fusion, data selection, need to be studied and applied more thoroughly.https://ieeexplore.ieee.org/document/8262679/
spellingShingle Mahmoud Barhamgi
Zhangbing Zhou
Chao Chen
Jean-Claude Thill
Heterogeneous Crowd-Sourced Data Analytics
IEEE Access
title Heterogeneous Crowd-Sourced Data Analytics
title_full Heterogeneous Crowd-Sourced Data Analytics
title_fullStr Heterogeneous Crowd-Sourced Data Analytics
title_full_unstemmed Heterogeneous Crowd-Sourced Data Analytics
title_short Heterogeneous Crowd-Sourced Data Analytics
title_sort heterogeneous crowd sourced data analytics
url https://ieeexplore.ieee.org/document/8262679/
work_keys_str_mv AT mahmoudbarhamgi heterogeneouscrowdsourceddataanalytics
AT zhangbingzhou heterogeneouscrowdsourceddataanalytics
AT chaochen heterogeneouscrowdsourceddataanalytics
AT jeanclaudethill heterogeneouscrowdsourceddataanalytics