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Anomaly detection based on weighted fuzzy-rough density
The density-based method is a more widely used anomaly detection. However, most of the
existing density-based methods mainly focus on dealing with certainty data and do not …
existing density-based methods mainly focus on dealing with certainty data and do not …
Latent information-guided one-step multi-view fuzzy clustering based on cross-view anchor graph
Although graph-inspired clustering methods have achieved impressive success in the area
of multi-view data analysis, current methods still face several challenges. First, classical …
of multi-view data analysis, current methods still face several challenges. First, classical …
A novel K-means and K-medoids algorithms for clustering non-spherical-shape clusters non-sensitive to outliers
J Heidari, N Daneshpour, A Zangeneh - Pattern Recognition, 2024 - Elsevier
Determination of the optimal number of clusters, the random selection of the initial centers,
the non-detection of non-spherical clusters, and the negative impact of outliers are the main …
the non-detection of non-spherical clusters, and the negative impact of outliers are the main …
Prediction of g–C3N4–based photocatalysts in tetracycline degradation based on machine learning
C Song, Y Shi, M Li, Y He, X **ong, H Deng, D **a - Chemosphere, 2024 - Elsevier
Investigating the effects of g–C 3 N 4–based photocatalysts on experimental parameters
during tetracycline (TC) degradation can be helpful in discovering the optimal parameter …
during tetracycline (TC) degradation can be helpful in discovering the optimal parameter …
K-NNDP: K-means algorithm based on nearest neighbor density peak optimization and outlier removal
J Liao, X Wu, Y Wu, J Shu - Knowledge-based systems, 2024 - Elsevier
K-means is an unsupervised method for vector quantification derived from signal
processing. It is currently used in data mining and knowledge-discovery. The advantages of …
processing. It is currently used in data mining and knowledge-discovery. The advantages of …
Cross-view graph matching for incomplete multi-view clustering
Multi-view clustering (MVC) focuses on adaptively partitioning data from diverse sources into
the respective groups and has been widely studied under the assumption of complete data …
the respective groups and has been widely studied under the assumption of complete data …
Discriminatively fuzzy multi-view K-means clustering with local structure preserving
Multi-view K-means clustering successfully generalizes K-means from single-view to multi-
view, and obtains excellent clustering performance. In every view, it makes each data point …
view, and obtains excellent clustering performance. In every view, it makes each data point …
A self-representation method with local similarity preserving for fast multi-view outlier detection
With the rapidly growing attention to multi-view data in recent years, multi-view outlier
detection has become a rising field with intense research. These researches have made …
detection has become a rising field with intense research. These researches have made …
Seeded random walk for multi-view semi-supervised classification
Recently, multi-view learning has captured widespread attention in the machine learning
area, yet it is still crucial and challenging to exploit beneficial patterns from multi-view data …
area, yet it is still crucial and challenging to exploit beneficial patterns from multi-view data …
Efficient correntropy-based multi-view clustering with alignment discretization
Multiview clustering (MVC) has attracted considerable attention owing to its remarkable
capacity to reconcile diverse information from multiple perspectives. However, traditional …
capacity to reconcile diverse information from multiple perspectives. However, traditional …