International audienceWe consider building predictors when the data have missing values. We study the seemingly-simple case where the target to predict is a linear function of the fully-observed data and we show that, in the presence of missing values, the optimal predictor may not be linear. In the particular Gaussian case, it can be written as a linear function of multiway interactions between the observed data and the various missing-value indicators. Due to its intrinsic complexity, we study a simple approximation and prove generalization bounds with finite samples, highlighting regimes for which each method performs best. We then show that multilayer perceptrons with ReLU activation functions can be consistent, and can explore good tra...
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 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...
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...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
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...
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...
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...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
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...