NEWS
Print Your Certificate
The 2025 AD Scientific Index is here—explore updated university and researcher rankings!
New! Young University / Institution Rankings 2025
New! The 2025 Edition of the AD Scientific Index is now live!
New! Art & Humanities Rankings 2025
New! Social Sciences and Humanities Rankings 2025
"Exciting Update! The 2025 Edition of the AD Scientific Index is now live!
AD
Scientific Index 2025
Scientist Rankings
University Rankings
Subject Rankings
Country Rankings
login
Login
person_add
Register
insights
H-Index Rankings
insights
i10 Productivity Rankings
format_list_numbered
Citation Rankings
subject
University Subject Rankings
school
Young Universities
format_list_numbered
Top 100 Scientists
format_quote
Top 100 Institutions
format_quote
Compare & Choose
local_fire_department
Country Reports
Russel Pears
Auckland University of Technology - Auckland / New Zealand
Engineering & Technology / Computer Science
AD Scientific Index ID: 130353
Registration, Add Profile,
Premium Membership
Print Your Certificate
Ranking &
Analysis
Job
Experiences (0)
Education
Information (0)
Published Books (0)
Book Chapters (0)
Articles (0)
Presentations (0)
Lessons (0)
Projects (0)
Congresses (0)
Editorship, Referee &
Scientific Board (0 )
Patents /
Designs (0)
Academic Grants
& Awards (0)
Artistic
Activities (0)
Certificate / Course
/ Trainings (0)
Association &
Society Memberships (0)
Contact, Office
& Social Media
person_outline
Russel Pears's MOST POPULAR ARTICLES
1-)
Detecting concept change in dynamic data streamsR Pears, S Sakthithasan, YS KohMachine Learning 97 (3), 259-293, 20141052014
2-)
Detecting volatility shift in data streamsDTJ Huang, YS Koh, G Dobbie, R Pears2014 IEEE International Conference on Data Mining, 863-868, 2014682014
3-)
Data stream mining for predicting software build outcomes using source code metricsJ Finlay, R Pears, AM ConnorInformation and Software Technology 56 (2), 183-198, 2014582014
4-)
Weighted association rule mining via a graph based connectivity modelR Pears, YS Koh, G Dobbie, W YeapInformation Sciences 218, 61-84, 2013572013
5-)
Synthetic Minority over-sampling technique (SMOTE) for predicting software build outcomesR Pears, J Finlay, AM ConnorarXiv preprint arXiv:1407.2330, 2014522014
ARTICLES
Add your articles
We use cookies to personalize our website and offer you a better experience. If you accept cookies, we can offer you special services.
Cookie Policy
Accept