International audienceThe majority of all commonly used machine learning methods can not be applied directly to data sets with missing values. However, most such meth- ods only depend on the relative di erences between samples instead of their particular values, and thus one useful approach is to directly estimate the pairwise distances between all samples in the data set. This is accomplished by tting a Gaussian mixture model to the data, and using it to derive estimates for the distances. Experimental simulations con rm that the pro- posed method provides accurate estimates compared to alternative methods for estimating distances
Missing values in data are common in real world applications. Since the performance of many data min...
The finite mixture model is widely used in various statistical learning problems. However, the model...
Real-world learning tasks often involve high-dimensional data sets with complex patterns of missing ...
The majority of all commonly used machine learning methods can not be applied directly to data sets ...
The possibility of missing or incomplete data is often ignored when describing statistical or machin...
There are efficient software programs for extracting from image sequences certain mixtures of distri...
Abstract—In data-mining applications, we are frequently faced with a large fraction of missing entri...
Aimed at the problem of instability and deviation of multiple training model in limited samples, thi...
Abstract. In this paper we propose a new distance metric for probability den-sity functions (PDF). T...
Machine learning is a rapidly advancing field. While increasingly sophisticated statistical methods ...
International audienceBackground Bioinformatics investigators often gain insights by combining infor...
<div><p>We present a new class of models for the detection function in distance sampling surveys of ...
We present a new class of models for the detection function in distance sampling surveys of wildlife...
Recently the academic communities have paid more attention to the queries and mining on uncertain da...
Mixtures of Gaussian (or normal) distributions arise in a variety of application areas. Many heurist...
Missing values in data are common in real world applications. Since the performance of many data min...
The finite mixture model is widely used in various statistical learning problems. However, the model...
Real-world learning tasks often involve high-dimensional data sets with complex patterns of missing ...
The majority of all commonly used machine learning methods can not be applied directly to data sets ...
The possibility of missing or incomplete data is often ignored when describing statistical or machin...
There are efficient software programs for extracting from image sequences certain mixtures of distri...
Abstract—In data-mining applications, we are frequently faced with a large fraction of missing entri...
Aimed at the problem of instability and deviation of multiple training model in limited samples, thi...
Abstract. In this paper we propose a new distance metric for probability den-sity functions (PDF). T...
Machine learning is a rapidly advancing field. While increasingly sophisticated statistical methods ...
International audienceBackground Bioinformatics investigators often gain insights by combining infor...
<div><p>We present a new class of models for the detection function in distance sampling surveys of ...
We present a new class of models for the detection function in distance sampling surveys of wildlife...
Recently the academic communities have paid more attention to the queries and mining on uncertain da...
Mixtures of Gaussian (or normal) distributions arise in a variety of application areas. Many heurist...
Missing values in data are common in real world applications. Since the performance of many data min...
The finite mixture model is widely used in various statistical learning problems. However, the model...
Real-world learning tasks often involve high-dimensional data sets with complex patterns of missing ...