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Grant Award View - GA68557-V3

Loss-based Bayesian Prediction

Contact Details

ARC NCGP General Enquiries

:
02 6287 6600

:

GA ID:
GA68557-V3
Agency:
Australian Research Council
Approval Date:
20-Dec-2019
Variation Publish Date:
20-Oct-2021
Variation Date:
12-Oct-2021
Category:
Humanities, Arts and Social Sciences (HASS) Research
Grant Term:
19-Jun-2020 to 18-Jun-2023
Value (AUD):
$393,000.00 (GST inclusive where applicable)
Varies:
GA68557 - Loss-based Bayesian Prediction

One-off/Ad hoc:
No
Aggregate Grant Award:
No

PBS Program Name:
ARC 19/20 Discovery
Grant Program:
Discovery Projects
Grant Activity:
Loss-based Bayesian Prediction
Purpose:
This project proposes a new paradigm for prediction. Using state-of-the-art computational methods, the project aims to produce accurate, fit for purpose, predictions which, by design, reduce the loss incurred when the prediction is inaccurate. Theoretical validation of the new predictive method, without reliance on knowledge of the correct statistical model, is an expected outcome, as is an extensive numerical assessment of its performance in empirical settings. The new paradigm should produce significant benefits for all fields in which the consequences of predictive inaccuracy are severe. Problems that lead to substantial economic, financial or environmental loss if predictions are incorrect will be given particular attention.

GO ID:
GO Title:
Discovery Projects for funding commencing in 2020
Internal Reference ID:
DP20 Round 1
Selection Process:
Targeted or Restricted Competitive

Confidentiality - Contract:
No
Confidentiality - Outputs:
No

Grant Recipient Details

Recipient Name:
Monash University
Recipient ABN:
12 377 614 012

Grant Recipient Location

Suburb:
CLAYTON
Town/City:
CLAYTON
Postcode:
3168
State/Territory:
VIC
Country:
AUSTRALIA

Grant Delivery Location

State/Territory:
VIC
Postcode:
3168
Country:
AUSTRALIA

Contact Details

ARC NCGP General Enquiries

:
02 6287 6600

: