Missing values arise in most real-world data sets due to the aggregation of multiple sources and intrinsically missing information (sensor failure, unanswered questions in surveys...). In fact, the very nature of missing values usually prevents us from running standard learning algorithms. In this paper, we focus on the extensively-studied linear models, but in presence of missing values, which turns out to be quite a challenging task. Indeed, the Bayes rule can be decomposed as a sum of predictors corresponding to each missing pattern. This eventually requires to solve a number of learning tasks, exponential in the number of input features, which makes predictions impossible for current real-world datasets. First, we propose a rigorous set...
International audienceThe presence of missing values makes supervised learning much more challenging...
International audienceThe presence of missing values makes supervised learning much more challenging...
International audienceThe presence of missing values makes supervised learning much more challenging...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
We consider building predictors when the data have missing values. We study the seemingly-simple cas...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceThe presence of missing values makes supervised learning much more challenging...
International audienceThe presence of missing values makes supervised learning much more challenging...
International audienceThe presence of missing values makes supervised learning much more challenging...
International audienceThe presence of missing values makes supervised learning much more challenging...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceWe consider building predictors when the data have missing values. We study th...
We consider building predictors when the data have missing values. We study the seemingly-simple cas...
International audienceWe consider building predictors when the data have missing values. We study th...
International audienceThe presence of missing values makes supervised learning much more challenging...
International audienceThe presence of missing values makes supervised learning much more challenging...
International audienceThe presence of missing values makes supervised learning much more challenging...
International audienceThe presence of missing values makes supervised learning much more challenging...