Machine learning and data mining in manufacturing
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 …
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
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 …
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
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 …
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
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 …
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
For obtaining the more robust, novel, stable, and consistent clustering result, clustering
ensemble has been emerged. There are two approaches in clustering ensemble …
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 …
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 …
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 …
unlabeled datasets. Finding the best clustering is also considered as one of the most …
Using classification techniques for statistical analysis of Anemia
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 …
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 …
an increasing amount of data, traditional data mining algorithms are not suitable. The …