Full-Network Embedding in a Multimodal Embedding Pipeline
Armand Vilalta, Dario Garcia-Gasulla, et al.
SemDeep/IWCS 2017
Patterns stored within pre-trained deep neural networks compose large and powerful descriptive languages that can be used for many different purposes. Typically, deep network representations are implemented within vector embedding spaces, which enables the use of traditional machine learning algorithms on top of them. In this short paper we propose the construction of a graph embedding space instead, introducing a methodology to transform the knowledge coded within a deep convolutional network into a topological space (i.e., a network). We outline how such graph can hold data instances, data features, relations between instances and features, and relations among features. Finally, we introduce some preliminary experiments to illustrate how the resultant graph embedding space can be exploited through graph analytics algorithms.
Armand Vilalta, Dario Garcia-Gasulla, et al.
SemDeep/IWCS 2017
Hiroki Kanezashi, Toyotaro Suzumura, et al.
HiPC 2018
Toyotaro Suzumura, Hiroki Kanezashi, et al.
Big Data 2020
Garcia-Gasulla Dario, Ferran Parés, et al.
JAIR