Missing data imputation plays an important role in the data cleansing process. Clustering algorithms have been widely used for missing data imputation, yet, there is little research done on the use of clustering ensemble for missing data imputation, which aggregates multiple clustering results. This paper proposes a novel collaborative clustering-based imputation method, called COLI, which uses the imputation quality as a key criterion for the exchange of information between different clustering results. To the best of our knowledge, this is the first study on the impact of collaborative clustering on imputation performance. The main contributions of this paper are three-fold. A novel missing value imputation based on collaborative clusteri...
Multiple imputation provides a useful strategy for dealing with data sets with missing value. Instea...
Multi-criteria group decision-making and evaluation (MCGDME) method typically aggregates information...
Statistical Imputation Techniques have been proposed mainly with the aim of predicting the missing v...
Missing data imputation plays an important role in the data cleansing process. Clustering algorithms...
Missing data imputation is a critical part of data cleaning tasks and vital for learning from incomp...
Multiple imputation (MI) is a popular method for dealing with missing values. One main advantage of ...
Introduction The problem of missing values is unavoidable in clinical research. In literature, miss...
Missing value imputation is an actual yet challenging issue confronted by machine learning and data ...
Missing values are very common in real-world datasets for a variety of reasons. Deleting data points...
The problem of missing values arise as one of the major difficulties in data mining and the downstre...
Objectives: Many classification problems must deal with data that contains missing values. In such c...
In this paper a new method of preprocessing incomplete data is introduced. The method is based on cl...
Abstract- Clustering methods have been developed to analyze only complete data. Although sometimes e...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
The existence of missing values will really inhibit process of clustering. To overcome it, some of s...
Multiple imputation provides a useful strategy for dealing with data sets with missing value. Instea...
Multi-criteria group decision-making and evaluation (MCGDME) method typically aggregates information...
Statistical Imputation Techniques have been proposed mainly with the aim of predicting the missing v...
Missing data imputation plays an important role in the data cleansing process. Clustering algorithms...
Missing data imputation is a critical part of data cleaning tasks and vital for learning from incomp...
Multiple imputation (MI) is a popular method for dealing with missing values. One main advantage of ...
Introduction The problem of missing values is unavoidable in clinical research. In literature, miss...
Missing value imputation is an actual yet challenging issue confronted by machine learning and data ...
Missing values are very common in real-world datasets for a variety of reasons. Deleting data points...
The problem of missing values arise as one of the major difficulties in data mining and the downstre...
Objectives: Many classification problems must deal with data that contains missing values. In such c...
In this paper a new method of preprocessing incomplete data is introduced. The method is based on cl...
Abstract- Clustering methods have been developed to analyze only complete data. Although sometimes e...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
The existence of missing values will really inhibit process of clustering. To overcome it, some of s...
Multiple imputation provides a useful strategy for dealing with data sets with missing value. Instea...
Multi-criteria group decision-making and evaluation (MCGDME) method typically aggregates information...
Statistical Imputation Techniques have been proposed mainly with the aim of predicting the missing v...