Auxiliary Network: Scalable and agile online learning for dynamic system with inconsistently available inputs
Permanent link
https://hdl.handle.net/10037/31496Date
2022-04-13Type
Journal articleTidsskriftartikkel
Abstract
Streaming classification methods assume the number of input features is fixed and always received. But in many real-world scenarios, some features are reliable while others are unreliable or inconsistent. We propose a novel online deep learning-based model called Auxiliary Network (Aux-Net), which is scalable and agile and can handle any number of inputs at each time instance. The Aux-Net model is based on the hedging algorithm and online gradient descent. It employs a model of varying depth in an online setting using single pass learning. Aux-Net is a foundational work towards scalable neural network for a dynamic complex environment dealing ad hoc or inconsistent inputs. The efficacy of Aux-Net is shown on the Italy Power Demand dataset.
Publisher
Springer NatureCitation
Agarwal, R., Agarwal, K., Horsch, A., Prasad, D.K. (2023). Auxiliary Network: Scalable and Agile Online Learning for Dynamic System with Inconsistently Available Inputs. In: Tanveer, M., Agarwal, S., Ozawa, S., Ekbal, A., Jatowt, A. (eds) Neural Information Processing. ICONIP 2022. Lecture Notes in Computer Science, vol 13623, 549–561. Springer, Cham.Metadata
Show full item recordCollections
Copyright 2022 The Author(s)