We propose the use of clustering methods in order to discover the quality of each element in a training set to be subsequently fed to a regression algorithm. The paper shows that these methods, used in combination with regression algorithms taking into account the additional information conveyed by this kind of quality, allow the attainment of higher performances than those obtained through standard techniques
Clustering quality evaluation is an essential component of clus-ter analysis. Given the plethora of ...
In this research the influence of four most commonly used data quality dimensions (accuracy, complet...
There are numerous clustering algorithms and clustering quality criteria present at the moment. Acco...
Analysis of Data quality is an important issue which has been addressed as data warehousing, data mi...
Clustering is an unsupervised learning tech-nique used to group a set of elements into non-overlappi...
Abstract Clustering evaluation plays an important role in unsupervised learning systems, as it is of...
This paper is an extended version of a paper to be published in "MoDELS '21: ACM/IEEE 24th Internati...
In recent years encroachment of social media in human life is inexplicable. The greatest and most si...
The purpose of this work has been to describe some techniques which are normally used for cluster da...
Regression clustering is a mixture of unsupervised and supervised statistical learning and data mini...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Today, data availability has gone from scarce to superabundant. Technologies like IoT, trends in soc...
This paper analyses the data clustering problem from the continuous black-box optimization point of ...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
Abstract. This paper analyses the data clustering problem from the continuous black-box optimization...
Clustering quality evaluation is an essential component of clus-ter analysis. Given the plethora of ...
In this research the influence of four most commonly used data quality dimensions (accuracy, complet...
There are numerous clustering algorithms and clustering quality criteria present at the moment. Acco...
Analysis of Data quality is an important issue which has been addressed as data warehousing, data mi...
Clustering is an unsupervised learning tech-nique used to group a set of elements into non-overlappi...
Abstract Clustering evaluation plays an important role in unsupervised learning systems, as it is of...
This paper is an extended version of a paper to be published in "MoDELS '21: ACM/IEEE 24th Internati...
In recent years encroachment of social media in human life is inexplicable. The greatest and most si...
The purpose of this work has been to describe some techniques which are normally used for cluster da...
Regression clustering is a mixture of unsupervised and supervised statistical learning and data mini...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Today, data availability has gone from scarce to superabundant. Technologies like IoT, trends in soc...
This paper analyses the data clustering problem from the continuous black-box optimization point of ...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
Abstract. This paper analyses the data clustering problem from the continuous black-box optimization...
Clustering quality evaluation is an essential component of clus-ter analysis. Given the plethora of ...
In this research the influence of four most commonly used data quality dimensions (accuracy, complet...
There are numerous clustering algorithms and clustering quality criteria present at the moment. Acco...