Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Fielding, Alan H.
1999.
Machine Learning Methods for Ecological Applications.
p.
1.
Winiwarter, Werner
2000.
Adaptive natural language interfaces to FAQ knowledge bases.
Data & Knowledge Engineering,
Vol. 35,
Issue. 2,
p.
181.
Dhami, Mandeep K.
and
Harries, Clare
2001.
Fast and frugal versus regression models of human judgement.
Thinking & Reasoning,
Vol. 7,
Issue. 1,
p.
5.
Buontempo, Frances V.
Wang, Xue Zhong
Mwense, Mulaisho
Horan, Nigel
Young, Anita
and
Osborn, Daniel
2005.
Genetic Programming for the Induction of Decision Trees to Model Ecotoxicity Data.
Journal of Chemical Information and Modeling,
Vol. 45,
Issue. 4,
p.
904.
Kotsiantis, S. B.
Zaharakis, I. D.
and
Pintelas, P. E.
2006.
Machine learning: a review of classification and combining techniques.
Artificial Intelligence Review,
Vol. 26,
Issue. 3,
p.
159.
Wang, X. Z.
Buontempo, F. V.
Young, A.
and
Osborn, D.
2006.
Induction of decision trees using genetic programming for modelling ecotoxicity data: adaptive discretization of real-valued endpoints.
SAR and QSAR in Environmental Research,
Vol. 17,
Issue. 5,
p.
451.
Kotsiantis, Sotiris
and
Pintelas, Panayotis
2009.
Encyclopedia of Information Science and Technology, Second Edition.
p.
3105.
Al-Obeidat, Feras
Belacel, Nabil
Carretero, Juan A.
and
Mahanti, Prabhat
2010.
Differential Evolution for learning the classification method PROAFTN.
Knowledge-Based Systems,
Vol. 23,
Issue. 5,
p.
418.
Al-Obeidat, Feras
and
Belacel, Nabil
2011.
Alternative approach for learning and improving the MCDA method PROAFTN.
International Journal of Intelligent Systems,
Vol. 26,
Issue. 5,
p.
444.
Al-Obeidat, Feras
Belacel, Nabil
Carretero, Juan A.
and
Mahanti, Prabhat
2011.
An evolutionary framework using particle swarm optimization for classification method PROAFTN.
Applied Soft Computing,
Vol. 11,
Issue. 8,
p.
4971.
Chen, Junghui
Yang, Yun-Chen
and
Wei, Tsong-Yang
2012.
Application of wavelet analysis and decision tree in UTDR data for diagnosis of membrane filtration.
Chemometrics and Intelligent Laboratory Systems,
Vol. 116,
Issue. ,
p.
102.
García-Domenech, Ramón
Gálvez-Llompart, María
Zanni, Riccardo
Recio, María C
and
Gálvez, Jorge
2013.
QSAR methods for the discovery of new inflammatory bowel disease drugs.
Expert Opinion on Drug Discovery,
Vol. 8,
Issue. 8,
p.
933.
Dixit, Veer Sain
and
Bhatia, Shveta Kundra
2013.
Computational Science and Its Applications – ICCSA 2013.
Vol. 7972,
Issue. ,
p.
498.
El-Alfy, El-Sayed M.
and
Al-Obeidat, Feras N.
2014.
A Multicriterion Fuzzy Classification Method with Greedy Attribute Selection for Anomaly-based Intrusion Detection.
Procedia Computer Science,
Vol. 34,
Issue. ,
p.
55.
Al-Obeidat, Feras N.
and
El-Alfy, El-Sayed M.
2014.
Network Intrusion Detection Using Multi-Criteria PROAFTN Classification.
p.
1.
El-Alfy, El-Sayed M.
and
Al-Obeidat, Feras N.
2015.
Detecting Cyber-Attacks on Wireless Mobile Networks Using Multicriterion Fuzzy Classifier with Genetic Attribute Selection.
Mobile Information Systems,
Vol. 2015,
Issue. ,
p.
1.
Vidyullatha, P.
Rao, D. Rajeswara
Prasanth, Y.
Changala, Ravindra
and
Narayana, Lakshmi
2016.
Emerging Research in Computing, Information, Communication and Applications.
p.
123.
Knoll, Dino
Prüglmeier, Marco
and
Reinhart, Gunther
2016.
Predicting Future Inbound Logistics Processes Using Machine Learning.
Procedia CIRP,
Vol. 52,
Issue. ,
p.
145.
Pota, Marco
Esposito, Massimo
and
De Pietro, Giuseppe
2017.
Designing rule-based fuzzy systems for classification in medicine.
Knowledge-Based Systems,
Vol. 124,
Issue. ,
p.
105.
Jia, Yongna
and
Ma, Jianwei
2017.
What can machine learning do for seismic data processing? An interpolation application.
GEOPHYSICS,
Vol. 82,
Issue. 3,
p.
V163.