K-means clustering algorithms: A comprehensive review, variants analysis, and advances in the era of big data
Advances in recent techniques for scientific data collection in the era of big data allow for the
systematic accumulation of large quantities of data at various data-capturing sites. Similarly …
systematic accumulation of large quantities of data at various data-capturing sites. Similarly …
A comprehensive survey on deep clustering: Taxonomy, challenges, and future directions
Clustering is a fundamental machine learning task, which aim at assigning instances into
groups so that similar samples belong to the same cluster while dissimilar samples belong …
groups so that similar samples belong to the same cluster while dissimilar samples belong …
Integration k-means clustering method and elbow method for identification of the best customer profile cluster
Clustering is a data mining technique used to analyse data that has variations and the
number of lots. Clustering was process of grou** data into a cluster, so they contained …
number of lots. Clustering was process of grou** data into a cluster, so they contained …
[HTML][HTML] How much can k-means be improved by using better initialization and repeats?
In this paper, we study what are the most important factors that deteriorate the performance
of the k-means algorithm, and how much this deterioration can be overcome either by using …
of the k-means algorithm, and how much this deterioration can be overcome either by using …
Clustseg: Clustering for universal segmentation
Sorting, regrou**, and echelon utilization of the large-scale retired lithium batteries: A critical review
With the rapid development of electric vehicles, the safe and environmentally friendly
disposal of retired lithium batteries (LIBs) is becoming a serious issue. Echelon utilization of …
disposal of retired lithium batteries (LIBs) is becoming a serious issue. Echelon utilization of …
Landslide susceptibility prediction based on a semi-supervised multiple-layer perceptron model
Conventional supervised and unsupervised machine learning models used for landslide
susceptibility prediction (LSP) have many drawbacks, such as an insufficient number of …
susceptibility prediction (LSP) have many drawbacks, such as an insufficient number of …
Artificial intelligence and machine learning in pathology: the present landscape of supervised methods
HH Rashidi, NK Tran, EV Betts… - Academic …, 2019 - journals.sagepub.com
Increased interest in the opportunities provided by artificial intelligence and machine
learning has spawned a new field of health-care research. The new tools under …
learning has spawned a new field of health-care research. The new tools under …
Turning waste into wealth: A systematic review on echelon utilization and material recycling of retired lithium-ion batteries
With the increasing production and marketing of global electric vehicles (EVs), a large
quantity of lithium ion battery (LIB) raw materials are demanded, and massive LIBs will be …
quantity of lithium ion battery (LIB) raw materials are demanded, and massive LIBs will be …