Abstract:
The evaluation of error-probability bounds for binary detection problems involving continuons-time stochastic processes as signals is considered. These bounds are of inte...Show MoreMetadata
Abstract:
The evaluation of error-probability bounds for binary detection problems involving continuons-time stochastic processes as signals is considered. These bounds are of interest because, in even the simplest detection problems, the computation of the exact probabilities of error is usually mathematically intractable. The method used consists of applying some results from martingale theory to detection and estimation problems. Only discontinuous observations that contain the rate process associated with a counting process are considered. The problem addressed is to evaluate Chernoff bounds on error probabilities for the likelihood-ratio test. The solution procedure consists of a measure transformation technique that makes it possible to obtain an expression for the Chernoff bound in terms of an expectation of a multiplicative functional of the conditional mean signal (rate process) estimates. If the processes involved are Markov, it is then possible to represent the above expression as a solution to a partial differential equation that is derived from the backward equation of Kolmogorov. The above procedure is repeated when the optimal estimates are replaced by suboptimal estimates. Examples are given to illustrate the technique.
Published in: IEEE Transactions on Information Theory ( Volume: 24, Issue: 5, September 1978)
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Differential Equations ,
- Markov Chain ,
- Continuous Process ,
- Types Of Errors ,
- Error Probability ,
- Optimal Estimation ,
- Measure Space ,
- Solution Procedure ,
- Decision Strategy ,
- Interval Observer ,
- Counting Process ,
- Operator Theory ,
- Likelihood Ratio ,
- Non-negative ,
- Likelihood Ratio Test ,
- Remainder Of This Paper ,
- Innovation Process ,
- Problem Definition ,
- Functional Equation ,
- Functional Differential Equations ,
- Poisson Process ,
- Signal Estimation ,
- Generalized Likelihood Ratio ,
- Exact Calculation ,
- Dimension Increases ,
- Predictive Processing ,
- Absolutely Continuous ,
- Markov Property ,
- Transition Function
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Differential Equations ,
- Markov Chain ,
- Continuous Process ,
- Types Of Errors ,
- Error Probability ,
- Optimal Estimation ,
- Measure Space ,
- Solution Procedure ,
- Decision Strategy ,
- Interval Observer ,
- Counting Process ,
- Operator Theory ,
- Likelihood Ratio ,
- Non-negative ,
- Likelihood Ratio Test ,
- Remainder Of This Paper ,
- Innovation Process ,
- Problem Definition ,
- Functional Equation ,
- Functional Differential Equations ,
- Poisson Process ,
- Signal Estimation ,
- Generalized Likelihood Ratio ,
- Exact Calculation ,
- Dimension Increases ,
- Predictive Processing ,
- Absolutely Continuous ,
- Markov Property ,
- Transition Function