Title of article :
On optimal sequential prediction for general processes
Author/Authors :
A.B.، Nobel, نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2003
Pages :
-82
From page :
83
To page :
0
Abstract :
This paper considers several aspects of the sequential prediction problem for unbounded, nonstationary processes under pth power loss (...)/sub p/(u, v) = |u - V|/sup P/, 1 < p < (infinity). In the first part, it is shown that Bayes prediction schemes are Cesaro optimal under general conditions, that Cesaro optimal prediction schemes are unique in a natural sense, and that Cesaro optimality is equivalent to a form of weak calibration. Connections between calibration and stronger forms of optimality are briefly considered.Extensions of the existence and uniqueness results to generalized prediction, and prediction from observations with additive noise, are established. For binary processes, it is shown that thresholding an optimal prediction scheme for the squared loss yields an optimal binary prediction scheme for the Hamming loss. In the second part of the paper, it is shown how to construct, from a countable family of prediction schemes, a single composite scheme whose asymptotic performance on any suitable process dominates the performance of each member of the family. The construction is based on aggregating methods for individual binary sequences. Using the construction, some results of Algoet on the existence of Cesaro optimal schemes for families of ergodic processes are rederived in a direct way and extended to unbounded processes.
Keywords :
Patients
Journal title :
IEEE Transactions on Information Theory
Serial Year :
2003
Journal title :
IEEE Transactions on Information Theory
Record number :
94792
Link To Document :
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