International audienceHandling missing values when tackling real-world datasets is a great challenge arousing the interest of many scientific communities. Many works propose completion methods or implement new data mining techniques tolerating the presence of missing values. It turns out that these tasks are very hard. In this paper, we propose a new typology characterizing missing values according to relationships within the data. These relationships are automatically discovered by data mining techniques using generic bases of association rules. We define four types of missing values from these relationships. The characterization is made for each missing value. It differs from the well-known statistical methods which apply a same treatment...
In this paper, we investigate the characteristics of a clinical dataset using feature selection and ...
In a previous paper three types of missing attribute values: lost values, attribute-concept values a...
In this paper we assume that a data set is presented in the form of the incompletely specified decis...
International audienceHandling missing values when tackling real-world datasets is a great challenge...
International audienceWhen tackling real-life datasets, it is common to face the existence of missin...
Discovering hidden knowledge from hug amount of data in form of association rules mining havebecome ...
Abstract: In the paper nine different approaches to missing attribute values are presented and compa...
The essence of data mining is to investigate for pertinent information that may exist in data (often...
[[abstract]]The problem of recovering missing values from a dataset has become an important research...
Missing values make up an important and unavoidable problem in data management and analysis. In the ...
Preprocessing is crucial steps used for variety of data warehousing and mining Real world data is no...
Missing values and incomplete data are a natural phenomenon in real datasets. If the association rul...
Abstract: Problem statement: Predicting the value for missing attributes is an important data prepro...
Many datasets include missing values in their attributes. Data mining techniques are not applicable ...
In this paper, we review possible strategies for handling missing values in separate-and-conquer rul...
In this paper, we investigate the characteristics of a clinical dataset using feature selection and ...
In a previous paper three types of missing attribute values: lost values, attribute-concept values a...
In this paper we assume that a data set is presented in the form of the incompletely specified decis...
International audienceHandling missing values when tackling real-world datasets is a great challenge...
International audienceWhen tackling real-life datasets, it is common to face the existence of missin...
Discovering hidden knowledge from hug amount of data in form of association rules mining havebecome ...
Abstract: In the paper nine different approaches to missing attribute values are presented and compa...
The essence of data mining is to investigate for pertinent information that may exist in data (often...
[[abstract]]The problem of recovering missing values from a dataset has become an important research...
Missing values make up an important and unavoidable problem in data management and analysis. In the ...
Preprocessing is crucial steps used for variety of data warehousing and mining Real world data is no...
Missing values and incomplete data are a natural phenomenon in real datasets. If the association rul...
Abstract: Problem statement: Predicting the value for missing attributes is an important data prepro...
Many datasets include missing values in their attributes. Data mining techniques are not applicable ...
In this paper, we review possible strategies for handling missing values in separate-and-conquer rul...
In this paper, we investigate the characteristics of a clinical dataset using feature selection and ...
In a previous paper three types of missing attribute values: lost values, attribute-concept values a...
In this paper we assume that a data set is presented in the form of the incompletely specified decis...