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"Calibeating": Beating Forecasters at Their Own Game
v1v2 (latest)

"Calibeating": Beating Forecasters at Their Own Game

11 September 2022
Dean Phillips Foster
S. Hart
ArXiv (abs)PDFHTML

Papers citing ""Calibeating": Beating Forecasters at Their Own Game"

4 / 4 papers shown
Title
Forecast Hedging and Calibration
Forecast Hedging and Calibration
Dean Phillips Foster
S. Hart
56
32
0
13 Oct 2022
Smooth Calibration, Leaky Forecasts, Finite Recall, and Nash Dynamics
Smooth Calibration, Leaky Forecasts, Finite Recall, and Nash Dynamics
Dean Phillips Foster
S. Hart
76
34
0
13 Oct 2022
Calibrated Forecasts: The Minimax Proof
Calibrated Forecasts: The Minimax Proof
S. Hart
AI4TS
28
25
0
13 Sep 2022
Relative Loss Bounds for On-line Density Estimation with the Exponential
  Family of Distributions
Relative Loss Bounds for On-line Density Estimation with the Exponential Family of Distributions
Katy S. Azoury
Manfred K. Warmuth
167
325
0
23 Jan 2013
1