Title
Recursive Sketches for Modular Deep Learning.
Abstract
We present a mechanism to compute a sketch (succinct summary) of how a complex modular deep network processes its inputs. The sketch summarizes essential information about the inputs and outputs of the network and can be used to quickly identify key components and summary statistics of the inputs. Furthermore, the sketch is recursive and can be unrolled to identify sub-components of these components and so forth, capturing a potentially complicated DAG structure. These sketches erase gracefully; even if we erase a fraction of the sketch at random, the remainder still retains the `high-weight' information present in the original sketch. The sketches can also be organized in a repository to implicitly form a `knowledge graph'; it is possible to quickly retrieve sketches in the repository that are related to a sketch of interest; arranged in this fashion, the sketches can also be used to learn emerging concepts by looking for new clusters in sketch space. Finally, in the scenario where we want to learn a ground truth deep network, we show that augmenting input/output pairs with these sketches can theoretically make it easier to do so.
Year
Venue
Field
2019
international conference on machine learning
Graph,Remainder,Theoretical computer science,Ground truth,Artificial intelligence,Deep learning,Modular design,Machine learning,Mathematics,Recursion,Sketch
DocType
Volume
Citations 
Journal
abs/1905.12730
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Badih Ghazi18815.07
Rina Panigrahy23203269.05
Joshua R. Wang3695.83