Swarm: Mining relaxed temporal moving object clusters
Recent improvements in positioning technology make massive moving object data widely
available. One important analysis is to find the moving objects that travel together. Existing …
available. One important analysis is to find the moving objects that travel together. Existing …
Subspace multi-clustering: a review
Clustering has been widely used to identify possible structures in data and help users to
understand data in an unsupervised manner. Traditional clustering methods often provide a …
understand data in an unsupervised manner. Traditional clustering methods often provide a …
Evaluating clustering in subspace projections of high dimensional data
Clustering high dimensional data is an emerging research field. Subspace clustering or
projected clustering group similar objects in subspaces, ie projections, of the full space. In …
projected clustering group similar objects in subspaces, ie projections, of the full space. In …
Quality assessment and evaluation criteria in supervised learning
A Painsky - Machine Learning for Data Science Handbook: Data …, 2023 - Springer
Evaluating the performance of a learning algorithm is one of the basic tasks in machine
learning and data science. In this chapter, we review commonly used performance …
learning and data science. In this chapter, we review commonly used performance …
A survey on enhanced subspace clustering
Subspace clustering finds sets of objects that are homogeneous in subspaces of high-
dimensional datasets, and has been successfully applied in many domains. In recent years …
dimensional datasets, and has been successfully applied in many domains. In recent years …
Using internal evaluation measures to validate the quality of diverse stream clustering algorithms
Measuring the quality of a clustering algorithm has shown to be as important as the
algorithm itself. It is a crucial part of choosing the clustering algorithm that performs best for …
algorithm itself. It is a crucial part of choosing the clustering algorithm that performs best for …
[PDF][PDF] On using class-labels in evaluation of clusterings
Although clustering has been studied for several decades, the fundamental problem of a
valid evaluation has not yet been solved. The sound evaluation of clustering results in …
valid evaluation has not yet been solved. The sound evaluation of clustering results in …
Outlier ranking via subspace analysis in multiple views of the data
Outlier mining is an important task for finding anomalous objects. In practice, however, there
is not always a clear distinction between outliers and regular objects as objects have …
is not always a clear distinction between outliers and regular objects as objects have …
Subspace projection method based clustering analysis in load profiling
M Piao, HS Shon, JY Lee… - IEEE Transactions on …, 2014 - ieeexplore.ieee.org
Customers of different contract types have different shapes in daily load profiles in the
manner of different characteristics. Therefore, maximally capture local and global shape …
manner of different characteristics. Therefore, maximally capture local and global shape …