
Estimation of Stochastic Processes with Missing Observations
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Content
- Intro
- ESTIMATION OF STOCHASTICPROCESSES WITH MISSINGOBSERVATIONS
- ESTIMATION OF STOCHASTICPROCESSES WITH MISSINGOBSERVATIONS
- Contents
- Introduction
- Chapter 1Estimation of Functionals fromStationary Stochastic Sequenceswith Missing Observations
- 1. Stationary Sequences. Spectral Representation
- 2. The Problem of Interpolation of StationarySequences with Missing Observations
- 2.1. Hilbert Space Projection Method of Interpolation
- 2.2. Minimax RobustMethod of Interpolation
- 2.3. Least Favourable Spectral Densities in the Class D = D-
- 2.4. Least Favourable Spectral Densities in the Class D = DW
- 2.5. Least Favourable Spectral Densities in the Class D = Duv
- 3. The Problem of Interpolation of StationarySequences Observed with Noise
- 3.1. Hilbert Space Projection Method of Interpolationof Stationary Sequence Observed with Noise
- Estimates Based on Observations of Uncorrelated Sequences
- Estimates Based on Observations without Noise
- 3.2. Minimax RobustMethod of Interpolation of StationarySequences Observed with Noise
- 3.3. Least Favourable Spectral Densities in the Class D0f ×D0g
- 3.4. Least Favourable Spectral Densities in the Class Duv×De
- 3.5. Least Favourable Spectral Densities in the Class D2e1 ×D1e
- 4. The Problem of Extrapolation of StationarySequences with Missing Observations
- 4.1. Hilbert Space Projection Method of Extrapolation
- Estimates Based on Observations of Uncorrelated Sequences
- Estimates Based on Observations without Noise
- Estimation of the Functional ANx
- 4.2. Minimax RobustMethod of Extrapolation
- 4.3. Least Favourable Spectral Densities in the Class DW ×D0
- 4.4. Least Favourable Spectral Densities in the Class Duv×De
- 4.5. Least Favourable Spectral Densities in the Class D1e1 ×De2
- 5. The Problem of Filtering of Stationary SequenceswithMissing Observations
- 5.1. Hilbert Space Projection Method of Filtering
- Estimates Based on Observations of Uncorrelated Sequences
- Estimates Based on ObservationsMissed on One Interval
- Estimates Based on Observations with One Missed Observation
- Estimation of the Functional ANx
- 5.2. Minimax RobustMethod of Filtering
- 5.3. Least Favourable Spectral Densities in the Class De1 ×De
- 5.4. Least Favourable Spectral Densities in the Class D1e ×D
- 5.5. Least Favourable Spectral Densities in the Class D2e ×Duv
- Conclusion
- Chapter 2Estimation of Functionals fromStationary Stochastic Processeswith Missing Observations
- 1. Stationary Processes. Spectral Representation
- 2. The Problemof Interpolation of Stationary ProcesseswithMissing Observations
- 2.1. The Classical Method of Linear Interpolation
- Estimates Based on Observations without Noise
- 2.2. Minimax RobustMethod of Interpolation
- 2.3. Least Favourable Spectral Densities in the Class D0×De
- 2.4. Least Favourable Spectral Densities in the Class De1 ×D2e2
- 3. The Problem of Extrapolation of StationaryProcesses Based on Observations with MissingValues
- 3.1. Hilbert Space Projection Method of Extrapolation
- Estimation of the Functional ANx
- Estimates Based on Observations without Noise
- 3.2. Minimax RobustMethod of Extrapolation
- 3.3. Least Favourable Spectral Densities in the Class D0×D1e
- 3.4. Least Favourable Spectral Densities in the Class Duv×D0
- 4. The Problem of Filtering of Stationary ProcessesBased on Observations with Missing Values
- 4.1. Hilbert Space Projection Method of Filtering
- Estimation of the Functional ANx
- 4.2. Minimax RobustMethod of Filtering
- 4.3. Least Favourable Spectral Densities in the Class D1e1 ×D2e2
- 4.4. Least Favourable Spectral Densities in the Class De1 ×D1e2
- Conclusion
- Chapter 3Estimation of Functionals fromMultidimensional StationaryStochastic Sequences withMissing Observations
- 1. Extrapolation Problem for MultidimensionalStationary Stochastic Sequenceswith MissingObservations
- 1.1. Hilbert Space Projection Method of Extrapolation
- Estimates Based on Observations of Uncorrelated Sequences
- Estimates Based on Observations without Noise
- Estimation of the Functional AN~x
- Estimation of the Functional AN~x Based on Observations without Noise
- 1.2. Minimax Approach to Extrapolation Problem
- 1.3. Least Favourable Spectral Densities in the Class D = D0×DUV
- 1.4. Least Favourable Spectral Densities in the Class D = De×D1d
- 2. Interpolation Problem forMultidimensionalStationary Stochastic Sequences with MissingObservations
- 2.1. Hilbert Space Projection Method of Interpolation
- 2.2. Minimax RobustMethod of Interpolation
- 2.3. Least Favourable Spectral Densities in the Class D-
- 2.4. Least Favourable Spectral Densities in the Class DW
- 2.5. Least Favourable Spectral Densities in the Class DUV
- 3. Filtering of Multidimensional Stationary StochasticSequences with Missing Observations
- 3.1. Hilbert Space Projection Method of Filtering
- Estimates Based on ObservationsMissed in One Interval
- Estimates Based on Observations with One Missed Observation
- Estimation of the Functional AN~x
- 3.2. Minimax RobustMethod of Filtering
- 3.3. Least Favourable Spectral Densities in the Class D = D0×D2d
- 3.4. Least Favourable Spectral Densities in the Class D = D1d×DUV
- Conclusion
- Chapter 4Estimation of MultidimensionalContinuous Time StationaryStochastic Processes withMissing Observations
- 1. Extrapolation Problem for MultidimensionalStationary Stochastic Processes with MissingObservations
- 1.1. Hilbert Space Projection Method of Extrapolation
- Estimation of the Functional AN~x
- Estimation from Observations without Noise
- 1.2. Minimax RobustMethod of Extrapolation
- 1.3. Least Favourable Spectral Densities in the Class D = De×DUV
- 1.4. Least Favourable Spectral Densities in the Class D =D1d×D2d
- 2. Interpolation Problem forMultidimensionalStationary Stochastic Processes with MissingObservations
- 2.1. Hilbert Space Projection Method of Interpolation
- Estimation from Observations without Noise
- 2.2. Minimax Approach to Interpolation Problem for StationaryProcesses
- 2.3. Least Favourable Spectral Densities in the Class D = D0×De
- 2.4. Least Favourable Spectral Densities in the Class D = DUV×D2d
- 3. Filtering of Multidimensional Stationary StochasticProcesses with Missing Observations
- 3.1. Hilbert Space Projection Method of Filtering
- Estimation of the Functional AN~x
- 3.2. Minimax RobustMethod of Filtering
- 3.3. Least Favourable Spectral Densities in the Class D = D0×D1d
- 3.4. Least Favourable Spectral Densities in the Class D = D2d×De
- Conclusion
- References
- Author Contact Information
- Index
- Blank Page
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