DocumentCode
3741464
Title
Resisting Dynamic Strategies in Gradually Evolving Worlds
Author
Chia-Jung Lee;Chao-Kai Chiang;Mu-En Wu
Author_Institution
Coll. of Inf. Sci. &
fYear
2015
Firstpage
191
Lastpage
194
Abstract
We study the online linear optimization problem, in which a player has to make repeated online decisions with linear loss functions and hopes to achieve a small regret. We consider a natural restriction of this problem in which the loss functions have a small deviation, measured by the sum of the distances between every two consecutive loss functions. At the same time, we also consider a natural generalization, in which the regret is measured against a dynamic offline algorithm which can play different strategies in different rounds, but under the constraint that their deviation is small. We show that in this new setting, an online algorithm modified from the gradient descent algorithm can still achieve a small regret, which can be characterized in terms of the deviation of loss functions and the deviation of the offline algorithm. For the closely related online decision problem, we show that an online algorithm modified from the Hedge algorithm can also achieve a small regret in this new setting.
Keywords
"Heuristic algorithms","Loss measurement","Optimization","Electronic mail","Standards","Prediction algorithms"
Publisher
ieee
Conference_Titel
Robot, Vision and Signal Processing (RVSP), 2015 Third International Conference on
Electronic_ISBN
2376-9807
Type
conf
DOI
10.1109/RVSP.2015.52
Filename
7399176
Link To Document