Pattern classification with missing values using multitask learning
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This work will stimulate future works in many directions.
Some of them are using different error functions (crossentropy
error in discrete tasks, and sum-of-squares error
in continuous tasks), adding an EM-model to probability
density estimation into the proposed MTL scheme, setting
the number of neurons in each subnetwork dynamically
using constructive learning, an extensive comparison
with other imputation methods, to use this procedure in
regression problems, and extending the proposed method
to different machines, e.g., Support Vector Machines (SVM).