Crossref Citations
This Book has been
cited by the following publications. This list is generated based on data provided by Crossref.
Patel, Jayesh
2020.
Unification of Machine Learning Features.
p.
1201.
Patel, Jayesh
2020.
The Democratization of Machine Learning Features.
p.
136.
D'Amato, Vincenzo
Oneto, Luca
Camurri, Antonio
and
Anguita, Davide
2021.
Keep it Simple: Handcrafting Feature and Tuning Random Forests and XGBoost to face the Affective Movement Recognition Challenge 2021.
p.
1.
Rodríguez-Collado, Alejandro
and
Rueda, Cristina
2021.
Electrophysiological and Transcriptomic Features Reveal a Circular Taxonomy of Cortical Neurons.
Frontiers in Human Neuroscience,
Vol. 15,
Issue. ,
Cabral, J. B.
Lares, M.
Gurovich, S.
Minniti, D.
and
Granitto, P. M.
2021.
Drifting features: Detection and evaluation in the context of automatic RR Lyrae identification in the VVV.
Astronomy & Astrophysics,
Vol. 652,
Issue. ,
p.
A151.
Lawler, Robin
Liu, Yao-Hao
Majaya, Nessa
Allam, Omar
Ju, Hyunchul
Kim, Jin Young
and
Jang, Seung Soon
2021.
DFT-Machine Learning Approach for Accurate Prediction of pKa.
The Journal of Physical Chemistry A,
Vol. 125,
Issue. 39,
p.
8712.
Lukyanenko, Roman
Storey, Veda C.
and
Pastor, Oscar
2021.
Foundations of information technology based on Bunge’s systemist philosophy of reality.
Software and Systems Modeling,
Vol. 20,
Issue. 4,
p.
921.
Wang, Xinlei
and
Zhi, Jianing
2021.
A machine learning-based analytical framework for employee turnover prediction.
Journal of Management Analytics,
Vol. 8,
Issue. 3,
p.
351.
Betancourt, Clara
Stomberg, Timo
Roscher, Ribana
Schultz, Martin G.
and
Stadtler, Scarlet
2021.
AQ-Bench: a benchmark dataset for machine learning on global air quality metrics.
Earth System Science Data,
Vol. 13,
Issue. 6,
p.
3013.
Casusol, Alexis J.
Zegarra, Fabio C.
Vargas-Machuca, Juan
and
Coronado, Alberto M.
2021.
Optimal window size for the extraction of features for tool wear estimation.
p.
1.
Arias, Victor A.
Vargas-Machuca, Juan
Zegarra, Fabio C.
and
Coronado, Alberto M.
2021.
Convolutional Neural Network Classification for Machine Tool Wear Based on Unsupervised Gaussian Mixture Model.
p.
1.
Sikelis, Konstantinos
Tsekouras, George E.
and
Kotis, Konstantinos
2021.
Ontology-Based Feature Selection: A Survey.
Future Internet,
Vol. 13,
Issue. 6,
p.
158.
Mehrabi, Mohammad Javad
and
Rafe, Vahid
2022.
Using deep reinforcement learning to search reachability properties in systems specified through graph transformation.
Soft Computing,
Vol. 26,
Issue. 18,
p.
9635.
Chatzimparmpas, Angelos
Martins, Rafael M.
Kucher, Kostiantyn
and
Kerren, Andreas
2022.
FeatureEnVi: Visual Analytics for Feature Engineering Using Stepwise Selection and Semi-Automatic Extraction Approaches.
IEEE Transactions on Visualization and Computer Graphics,
Vol. 28,
Issue. 4,
p.
1773.
Cresta Morgado, Pablo
Carusso, Martín
Alonso Alemany, Laura
and
Acion, Laura
2022.
Practical foundations of machine learning for addiction research. Part II. Workflow and use cases.
The American Journal of Drug and Alcohol Abuse,
Vol. 48,
Issue. 3,
p.
272.
Mangla, Chaitanya
Holden, Sean B.
and
Paulson, Lawrence C.
2022.
Automated Reasoning.
Vol. 13385,
Issue. ,
p.
559.
Echeverria, Fabricio
Leon, Marcelo
Esteves, Zila
and
Redroban, Carlos
2022.
Informatics and Intelligent Applications.
Vol. 1547,
Issue. ,
p.
3.
Demutti, Marco
D'Amato, Vincenzo
Recchiuto, Carmine
Oneto, Luca
and
Sgorbissa, Antonio
2022.
Assessing Emotions in Human-Robot Interaction Based on the Appraisal Theory.
p.
1435.
Shilane, David
2022.
Automated Feature Reduction in Machine Learning.
p.
0045.
Chicco, Davide
Oneto, Luca
Tavazzi, Erica
and
Ouellette, Francis
2022.
Eleven quick tips for data cleaning and feature engineering.
PLOS Computational Biology,
Vol. 18,
Issue. 12,
p.
e1010718.