Predicting computer science students’ online help-seeking tendencies

This study investigated how computer science students seek help online in their learning and what factors predict their online help-seeking behaviors. Online help-seeking behaviors include online searching, asking teachers online for help, and asking peers online for help. 207 students from a large...

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Bibliographic Details
Main Authors: Qiang Hao, Brad Barnes, Robert Maribe Branch, Ewan Wright
Format: Article
Language:English
Published: Hong Kong Bao Long Accounting & Secretarial Limited 2017-03-01
Series:Knowledge Management & E-Learning: An International Journal
Online Access:http://www.kmel-journal.org/ojs/index.php/online-publication/article/view/489/336
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spelling doaj-905300bbda294b0493479eaa2bc84c532020-11-24T23:00:36ZengHong Kong Bao Long Accounting & Secretarial LimitedKnowledge Management & E-Learning: An International Journal2073-79042073-79042017-03-01911932Predicting computer science students’ online help-seeking tendenciesQiang Hao0Brad Barnes1Robert Maribe Branch2Ewan Wright3The University of Georgia, GA, USAThe University of Georgia, GA, USAThe University of Georgia, GA, USAThe University of Hong Kong, Hong KongThis study investigated how computer science students seek help online in their learning and what factors predict their online help-seeking behaviors. Online help-seeking behaviors include online searching, asking teachers online for help, and asking peers online for help. 207 students from a large university in the southeastern United States participated in the study. It was revealed that computer science students tended to search online more frequently than ask people online for help. Five factors, including epistemological belief, interest, learning proficiency level, prior knowledge of the learning subject, and problem difficulty, were explored as potential predictors in this study. It was found that learning proficiency level and problem difficulty were significant predictors of three types of online help-seeking behaviors, and other factors influenced online help seeking to different extents. The study provides evidence to support that online searching should be considered as an integrated part of online help seeking, and gives guidelines for practice of facilitating online help seeking and future studies.http://www.kmel-journal.org/ojs/index.php/online-publication/article/view/489/336
collection DOAJ
language English
format Article
sources DOAJ
author Qiang Hao
Brad Barnes
Robert Maribe Branch
Ewan Wright
spellingShingle Qiang Hao
Brad Barnes
Robert Maribe Branch
Ewan Wright
Predicting computer science students’ online help-seeking tendencies
Knowledge Management & E-Learning: An International Journal
author_facet Qiang Hao
Brad Barnes
Robert Maribe Branch
Ewan Wright
author_sort Qiang Hao
title Predicting computer science students’ online help-seeking tendencies
title_short Predicting computer science students’ online help-seeking tendencies
title_full Predicting computer science students’ online help-seeking tendencies
title_fullStr Predicting computer science students’ online help-seeking tendencies
title_full_unstemmed Predicting computer science students’ online help-seeking tendencies
title_sort predicting computer science students’ online help-seeking tendencies
publisher Hong Kong Bao Long Accounting & Secretarial Limited
series Knowledge Management & E-Learning: An International Journal
issn 2073-7904
2073-7904
publishDate 2017-03-01
description This study investigated how computer science students seek help online in their learning and what factors predict their online help-seeking behaviors. Online help-seeking behaviors include online searching, asking teachers online for help, and asking peers online for help. 207 students from a large university in the southeastern United States participated in the study. It was revealed that computer science students tended to search online more frequently than ask people online for help. Five factors, including epistemological belief, interest, learning proficiency level, prior knowledge of the learning subject, and problem difficulty, were explored as potential predictors in this study. It was found that learning proficiency level and problem difficulty were significant predictors of three types of online help-seeking behaviors, and other factors influenced online help seeking to different extents. The study provides evidence to support that online searching should be considered as an integrated part of online help seeking, and gives guidelines for practice of facilitating online help seeking and future studies.
url http://www.kmel-journal.org/ojs/index.php/online-publication/article/view/489/336
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