A deep learning model for structured outputs with high-order interaction
Many real-world applications are associated with structured data, where not only input but
also output has interplay. However, typical classification and regression models often lack
the ability of simultaneously exploring high-order interaction within input and that within
output. In this paper, we present a deep learning model aiming to generate a powerful
nonlinear functional mapping from structured input to structured output. More specifically, we
propose to integrate high-order hidden units, guided discriminative pretraining, and high …
also output has interplay. However, typical classification and regression models often lack
the ability of simultaneously exploring high-order interaction within input and that within
output. In this paper, we present a deep learning model aiming to generate a powerful
nonlinear functional mapping from structured input to structured output. More specifically, we
propose to integrate high-order hidden units, guided discriminative pretraining, and high …
Many real-world applications are associated with structured data, where not only input but also output has interplay. However, typical classification and regression models often lack the ability of simultaneously exploring high-order interaction within input and that within output. In this paper, we present a deep learning model aiming to generate a powerful nonlinear functional mapping from structured input to structured output. More specifically, we propose to integrate high-order hidden units, guided discriminative pretraining, and high-order auto-encoders for this purpose. We evaluate the model with three datasets, and obtain state-of-the-art performances among competitive methods. Our current work focuses on structured output regression, which is a less explored area, although the model can be extended to handle structured label classification.
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