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P. Larrañaga, Borja Calvo, Roberto Santana, C. Bielza, Josu Galdiano, Iñaki Inza, J. Lozano, R. Armañanzas, Guzmán Santafé, Aritz Martínez, V. Robles (2006)
Machine learning in bioinformaticsBriefings in bioinformatics, 7 1
J. Ibrahim, Ming-Hui Chen, S. Lipsitz, A. Herring (2005)
Missing-Data Methods for Generalized Linear ModelsJournal of the American Statistical Association, 100
John Thompson, Gilberto Levy (2004)
Missing dataAmyotrophic Lateral Sclerosis and Other Motor Neuron Disorders, 5
B. D. Ripley, R. M. Ripley (2001)
Clinical Applications of Artificial Neural Networks
Material science Forum
Lena Osterhagen (2016)
Multiple Imputation For Nonresponse In Surveys
I. Scheel, M. Aldrin, I. Glad, R. Sørum, H. Lyng, A. Frigessi (2005)
The influence of missing value imputation on detection of differentially expressed genes from microarray dataBioinformatics, 21 23
F. Fessant, S. Midenet (2002)
Self-Organising Map for Data Imputation and Correction in SurveysNeural Computing & Applications, 10
B. G. EAPA, M. C. Monard (2002)
Int. Conf. on Hybrid Intelligent Systems
(1991)
Learning - EWSL-91 : EuropeanWorking Session on Learning (Ed.: Y
(2007)
A comparison of imputation techniques for handling missing predictor values in a risk model with a binary outcome
O. Troyanskaya, M. Cantor, G. Sherlock, P. Brown, T. Hastie, R. Tibshirani, D. Botstein, R. Altman (2001)
Missing value estimation methods for DNA microarraysBioinformatics, 17 6
Imran, Naeem Iqbal, Do Kim (2021)
IoT Task Management Mechanism Based on Predictive Optimization for Efficient Energy Consumption in Smart Residential BuildingsEnergy and Buildings
R. Little, D. Rubin (2002)
Statistical Analysis with Missing Data: Little/Statistical Analysis with Missing Data
Naeem Iqbal, A. Khan, Imran, Atif Rizwan, Faiza Qayyum, Sehrish Malik, Rashid Ahmad, Do-Hyeun Kim (2022)
Enhanced time-constraint aware tasks scheduling mechanism based on predictive optimization for efficient load balancing in smart manufacturingJournal of Manufacturing Systems
Gustavo Batista, M. Monard (2003)
An analysis of four missing data treatment methods for supervised learningApplied Artificial Intelligence, 17
P. Clark, R. Boswell (1991)
Machine Learning ? EWSL?91 : European Working Session on Learning
Imran, Faisal Jamil, Dohyeun Kim (2021)
An Ensemble of Prediction and Learning Mechanism for Improving Accuracy of Anomaly Detection in Network Intrusion EnvironmentsSustainability
F. Temurtas (2009)
A comparative study on thyroid disease diagnosis using neural networksExpert Syst. Appl., 36
J. Jerez, L. Franco, L. Franco, Emilio Alba, A. Llombart-Cussac, Ana Lluch, N. Ribelles, B. Munárriz, Miguel Martin (2005)
Improvement of breast cancer relapse prediction in high risk intervals using artificial neural networksBreast Cancer Research and Treatment, 94
M. Kenward, J. Carpenter (2007)
Multiple imputation: current perspectivesStatistical Methods in Medical Research, 16
A. M. Mendoza, R. M. Hernandez (2021)
13th Int. Conf. on Information and Communication Technology and System
(2008)
Medicine (Baltimore)
R. J. A. Little, D. B. Rubin (2002)
Statistical Analysis with Missing
Adriana Pérez, R. Dennis, Jacky Gil, M. Rondón, A. Lopez (2002)
Use of the mean, hot deck and multiple imputation techniques to predict outcome in intensive care unit patients in ColombiaStatistics in Medicine, 21
M. Eminagaoglu, S. Eren (2010)
2010 Int. Conf. on Computer Information Systems and Industrial Management Applications (CISIM)
Muhammad Imran, Umar Zaman, Imran, J. Imtiaz, M. Fayaz, Jeonghwan Gwak (2021)
Comprehensive Survey of IoT, Machine Learning, and Blockchain for Health Care Applications: A Topical Assessment for Pandemic Preparedness, Challenges, and SolutionsElectronics
T. Furukawa, K. Ishida, E. Fukada (1979)
Piezoelectric properties in the composite systems of polymers and PZT ceramicsJournal of Applied Physics, 50
Amit Gupta, Monica Lam (1996)
Estimating Missing Values Using Neural NetworksJournal of the Operational Research Society, 47
C. Manski (2005)
Partial identification with missing data: concepts and findingsInt. J. Approx. Reason., 39
E. R. Hruschka, E. R. Hruschka, N. F. F. Ebecken (2005)
AI 2004: Advances in Artificial Intelligence
Imran, Faiza Qayyum, Do-Hyeun Kim, Seong-Jong Bong, Su-Young Chi, Yo-Han Choi (2022)
A Survey of Datasets, Preprocessing, Modeling Mechanisms, and Simulation Tools Based on AI for Material Analysis and DiscoveryMaterials, 15
W. Duch, J. Kacprzyk, E. Oja, S. Zadrozny (2005)
Artificial Neural Networks: Biological Inspirations ICANN 2005: 15th Int. Conf. Warsaw
D. A. Elizondo, M. A. , Gongora (2016)
ICANN, International conference on Artificial neural network
Research interest in ceramic materials increased due to their extensive environmental, biomedical, and electronic applications. Increased demand for ceramics with specialized experimental conditions and limited resources has resulted in a higher cost for scientific practices and applications. Enormous material data is accumulated from traditional and high‐tech experimentation, but the manual recording process has shown inconsistencies in the analysis results. Recently, application based on artificial intelligence (AI) and machine learning has been able to address the issues of traditional scientific experiments in material science. However, no machine learning mechanisms are proposed for sophisticated data preparation and AI‐based discovery application of ceramics. This paper proposed an intelligent material data preparation mechanism based on ensemble learning for AI‐assisted material screening and discovery. The current method can potentially resolve the problems of missing and inconsistent material data. As a case study, a material data preparation platform for ceramic material data pre‐processing is developed. For performance evaluation of the proposed mechanism, machine learning regression models are trained before and after the imputation techniques applied to the data. Performance analysis shows that the ensemble model of deep learning network (DNN) and automated machine learning (autoML) performed better as compared to previously reported imputation approaches.
Advanced Theory and Simulations – Wiley
Published: Nov 1, 2022
Keywords: ceramic data pre‐processing; ceramic material; data imputation; material analysis; material data preparation
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