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structured_prediction [2018/08/30 21:25]
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structured_prediction [2018/12/04 14:35] (current)
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 editing and data-driven image editing. Future research directions include preserving the object editing and data-driven image editing. Future research directions include preserving the object
 identity and providing affordance as additional user input during image manipulation. identity and providing affordance as additional user input during image manipulation.
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 +https://​arxiv.org/​abs/​1810.01868v1 Deep processing of structured data
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 +We construct a general unified framework for learning representation of structured data, i.e. data which cannot be represented as the fixed-length vectors (e.g. sets, graphs, texts or images of varying sizes). The key factor is played by an intermediate network called SAN (Set Aggregating Network), which maps a structured object to a fixed length vector in a high dimensional latent space. Our main theoretical result shows that for sufficiently large dimension of the latent space, SAN is capable of learning a unique representation for every input example. Experiments demonstrate that replacing pooling operation by SAN in convolutional networks leads to better results in classifying images with different sizes. Moreover, its direct application to text and graph data allows to obtain results close to SOTA, by simpler networks with smaller number of parameters than competitive models. https://​github.com/​gmum/​
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 +http://​papers.nips.cc/​paper/​7287-structure-aware-convolutional-neural-networks ​