In this paper we introduce the Frequency Ratio (FR) method for dealing with missing values within nearest neighbour search. We test the FR method on known medical datasets from the UCI machine learning repository. We compare the accuracy of the FR method with five commonly used methods (three "imputation" and two "bypassing" methods) for dealing with values that are "missing completely at random" (MCAR) for the purpose of classification. We discovered that in most cases, the FR method outperforms the other methods. We conclude that the FR method is a strong addition to the commonly used methods for dealing with missing values within the nearest neighbour method
Missing data imputation is a very important data cleaning task for machine learning and data mining ...
k-nearest neighbouralgorithm can outperform the internal methods used by C4.5 and CN2 to treat missi...
Random forest (RF) missing data algorithms are an attractive approach for imputing missing data. The...
Abstract: In this paper we introduce the Frequency Ratio (FR) method for dealing with missing values...
Imputation of missing data is important in many areas, such as reducing non-response bias in surveys...
Missing data is an important issue in almost all fields of quantitative re-search. A nonparametric p...
This paper presents a Nearest-Neighbor Method to substitute missing values in continuous datasets an...
Imputation of missing data is important in many areas, such as reducing non-response bias in survey...
The real-world data analysis and processing using data mining techniques often are facing observatio...
Abstract The nearest neighbour (NN) classification rule is usuallychosen in a large number of patter...
Abstract. This work proposes and evaluates a Nearest-Neighbor Method to substitute missing values in...
Abstract Machine learning has been the corner stone in analysing and extracting information from dat...
The existence of missing values reduces the amount of knowledge learned by the machine learning mode...
Many clinical research datasets have a large percentage of missing values that directly impacts thei...
Clinical registers constitute an invaluable resource in the medical data-driven decision making cont...
Missing data imputation is a very important data cleaning task for machine learning and data mining ...
k-nearest neighbouralgorithm can outperform the internal methods used by C4.5 and CN2 to treat missi...
Random forest (RF) missing data algorithms are an attractive approach for imputing missing data. The...
Abstract: In this paper we introduce the Frequency Ratio (FR) method for dealing with missing values...
Imputation of missing data is important in many areas, such as reducing non-response bias in surveys...
Missing data is an important issue in almost all fields of quantitative re-search. A nonparametric p...
This paper presents a Nearest-Neighbor Method to substitute missing values in continuous datasets an...
Imputation of missing data is important in many areas, such as reducing non-response bias in survey...
The real-world data analysis and processing using data mining techniques often are facing observatio...
Abstract The nearest neighbour (NN) classification rule is usuallychosen in a large number of patter...
Abstract. This work proposes and evaluates a Nearest-Neighbor Method to substitute missing values in...
Abstract Machine learning has been the corner stone in analysing and extracting information from dat...
The existence of missing values reduces the amount of knowledge learned by the machine learning mode...
Many clinical research datasets have a large percentage of missing values that directly impacts thei...
Clinical registers constitute an invaluable resource in the medical data-driven decision making cont...
Missing data imputation is a very important data cleaning task for machine learning and data mining ...
k-nearest neighbouralgorithm can outperform the internal methods used by C4.5 and CN2 to treat missi...
Random forest (RF) missing data algorithms are an attractive approach for imputing missing data. The...