ITEA is the Eureka Cluster on software innovation
ITEA is the Eureka Cluster on software innovation
ITEA 4 page header azure circular

Patent application: Source Selection based on Diversity for Transfer Learning

Project
17002 AutoDC
Type
New standard
Description
  • Select source model for transfer learning from multiple available source domains with little to no data in target domain. Automatic and highly scaleable due to only looking at diversity which is a marginal quantity.
  • In addition to the patent application there is a paper published on this: H. Larsson, J. Taghia, F. Moradi and A. Johnsson, "Source Selection in Transfer Learning for Improved Service Performance Predictions," 2021 IFIP Networking Conference (IFIP Networking), 2021, pp. 1-9, doi: 10.23919/IFIPNetworking52078.2021.9472818.
Contact
Tor Björn Minde
Email
Tor.bjorn.minde@ericsson.com
Technical features

Input(s):

  • Candidate source ML models
  • Candidate source data sets

Main feature(s):

  • Automated selection of source model for transfer learning

Output(s):

  • Selected source ML model
Integration constraints

None, this is an intellectual property.

Targeted customer(s)

People/software responsible for ML model management.

Conditions for reuse

Commercial license to be negotiated.

Confidentiality
Public
Publication date
01-09-2021
Involved partners
Ericsson (SWE)
Ericsson (Canada) (CAN)