Machine learning and data mining in manufacturing

A Dogan, D Birant - Expert Systems with Applications, 2021 - Elsevier
Manufacturing organizations need to use different kinds of techniques and tools in order to
fulfill their foundation goals. In this aspect, using machine learning (ML) and data mining …

Cluster ensembles: A survey of approaches with recent extensions and applications

T Boongoen, N Iam-On - Computer Science Review, 2018 - Elsevier
Cluster ensembles have been shown to be better than any standard clustering algorithm at
improving accuracy and robustness across different data collections. This meta-learning …

Identification of membrane protein types via multivariate information fusion with Hilbert–Schmidt independence criterion

H Wang, Y Ding, J Tang, F Guo - Neurocomputing, 2020 - Elsevier
Membrane proteins perform a variety of functions vital to the survival of organisms, such as
oxidoreductase, transferase or hydrolase. If the type of membrane protein can be detected …

Proposing a classifier ensemble framework based on classifier selection and decision tree

H Parvin, M MirnabiBaboli, H Alinejad-Rokny - Engineering Applications of …, 2015 - Elsevier
One of the most important tasks in pattern, machine learning, and data mining is
classification problem. Introducing a general classifier is a challenge for pattern recognition …

A fuzzy clustering ensemble based on cluster clustering and iterative Fusion of base clusters

M Mojarad, S Nejatian, H Parvin, M Mohammadpoor - Applied Intelligence, 2019 - Springer
For obtaining the more robust, novel, stable, and consistent clustering result, clustering
ensemble has been emerged. There are two approaches in clustering ensemble …

Using sub-sampling and ensemble clustering techniques to improve performance of imbalanced classification

S Nejatian, H Parvin, E Faraji - Neurocomputing, 2018 - Elsevier
Abundant data of the patients is recorded within the health care system. During data mining
process, we can achieve useful knowledge and hidden patterns within the data and …

Consensus function based on cluster-wise two level clustering

MR Mahmoudi, H Akbarzadeh, H Parvin… - Artificial Intelligence …, 2021 - Springer
The ensemble clustering tries to aggregate a number of basic clusterings with the aim of
producing a more consistent, robust and well-performing consensus clustering result. The …

A comprehensive study of clustering ensemble weighting based on cluster quality and diversity

A Nazari, A Dehghan, S Nejatian, V Rezaie… - Pattern Analysis and …, 2019 - Springer
Clustering as a major task in data mining is responsible for discovering hidden patterns in
unlabeled datasets. Finding the best clustering is also considered as one of the most …

Using classification techniques for statistical analysis of Anemia

K Meena, DK Tayal, V Gupta, A Fatima - Artificial intelligence in medicine, 2019 - Elsevier
Anemia in children is becoming a worldwide problem owing to the unawareness among
people regarding the disease, its causes and preventive measures. This study develops a …

Analysis of university students' behavior based on a fusion K-means clustering algorithm

W Chang, X Ji, Y Liu, Y **ao, B Chen, H Liu, S Zhou - Applied Sciences, 2020 - mdpi.com
With the development of big data technology, creating the 'Digital Campus' is a hot issue. For
an increasing amount of data, traditional data mining algorithms are not suitable. The …