Incomplete data with missing feature values are prevalent in clustering problems. Traditional clustering methods first estimate the missing values by imputation and then apply the classical clustering algorithms for complete data, such as K-median and K-means. However, in practice, it is often hard to obtain accurate estimation of the missing values, which deteriorates the performance of clustering. To enhance the robustness of clustering algorithms, this paper represents the missing values by interval data and introduces the concept of robust cluster objective function. A minimax robust optimization (RO) formulation is presented to provide clustering results, which are insensitive to estimation errors. To solve the proposed RO problem, we ...
The k‐means algorithm is arguably the most popular nonparametric clustering method but cannot genera...
Fuzzy K-means clustering algorithm is a popular approach for exploring the structure of a set of pat...
Clustering algorithms can identify groups in large data sets, such as star catalogs and hyperspectra...
Incomplete data with missing feature values are prevalent in clustering problems. Traditional cluste...
Date sets with missing feature values are prevalent in clustering analysis. Most existing clustering...
Missing value imputation is a common approach for preprocessing incomplete data sets. In case of dat...
Missing value imputation is a common approach for preprocessing incomplete data sets. In case of dat...
In many situations where the interest lies in identifying clusters one might expect that not all ava...
The Affinity Propagation (AP) algorithm is an effective algorithm for clustering analysis, but it ca...
Searching a dataset for the ‘‘natural grouping / clustering’’ is an important explanatory technique ...
Abstract- Clustering methods have been developed to analyze only complete data. Although sometimes e...
The missing values are not uncommon in real data sets. The algorithms and methods used for the data ...
The existence of missing values will really inhibit process of clustering. To overcome it, some of s...
Several important questions have yet to be answered concerning clustering incomplete data. For examp...
The problem of missing values arise as one of the major difficulties in data mining and the downstre...
The k‐means algorithm is arguably the most popular nonparametric clustering method but cannot genera...
Fuzzy K-means clustering algorithm is a popular approach for exploring the structure of a set of pat...
Clustering algorithms can identify groups in large data sets, such as star catalogs and hyperspectra...
Incomplete data with missing feature values are prevalent in clustering problems. Traditional cluste...
Date sets with missing feature values are prevalent in clustering analysis. Most existing clustering...
Missing value imputation is a common approach for preprocessing incomplete data sets. In case of dat...
Missing value imputation is a common approach for preprocessing incomplete data sets. In case of dat...
In many situations where the interest lies in identifying clusters one might expect that not all ava...
The Affinity Propagation (AP) algorithm is an effective algorithm for clustering analysis, but it ca...
Searching a dataset for the ‘‘natural grouping / clustering’’ is an important explanatory technique ...
Abstract- Clustering methods have been developed to analyze only complete data. Although sometimes e...
The missing values are not uncommon in real data sets. The algorithms and methods used for the data ...
The existence of missing values will really inhibit process of clustering. To overcome it, some of s...
Several important questions have yet to be answered concerning clustering incomplete data. For examp...
The problem of missing values arise as one of the major difficulties in data mining and the downstre...
The k‐means algorithm is arguably the most popular nonparametric clustering method but cannot genera...
Fuzzy K-means clustering algorithm is a popular approach for exploring the structure of a set of pat...
Clustering algorithms can identify groups in large data sets, such as star catalogs and hyperspectra...