Abstract:
The representation of general distributions or measured data by phase-type distributions is an important and nontrivial task in analytical modeling. Although a large numb...Show MoreMetadata
Abstract:
The representation of general distributions or measured data by phase-type distributions is an important and nontrivial task in analytical modeling. Although a large number of different methods for fitting parameters of phase-type distributions to data traces exist, many approaches lack efficiency and numerical stability. In this paper, a novel approach is presented that fits a restricted class of phase-type distributions, namely, mixtures of Erlang distributions, to trace data. For the parameter fitting, an algorithm of the expectation maximization type is developed. This paper shows that these choices result in a very efficient and numerically stable approach which yields phase-type approximations for a wide range of data traces that are as good or better than approximations computed with other less efficient and less stable fitting methods. To illustrate the effectiveness of the proposed fitting algorithm, we present comparative results for our approach and two other methods using six benchmark traces and two real traffic traces as well as quantitative results from queuing analysis
Published in: IEEE Transactions on Dependable and Secure Computing ( Volume: 3, Issue: 3, July-Sept. 2006)
DOI: 10.1109/TDSC.2006.27
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- IEEE Keywords
- Index Terms
- Expectation Maximization ,
- Distribution Of Parameters ,
- Class Distribution ,
- Fitting Method ,
- General Distribution ,
- Mixture Distribution ,
- Fitting Algorithm ,
- Trace Data ,
- Real Traces ,
- Performance Measures ,
- Distribution Function ,
- Probability Density Function ,
- Scale Parameter ,
- Percentage Values ,
- Exponential Distribution ,
- Polynomial Of Degree ,
- CPU Time ,
- Service Time ,
- Heavy-tailed ,
- Log-likelihood Values ,
- Moment Matching ,
- Moments Of Distribution ,
- Discrete Parameters ,
- Queue Length ,
- Mixture Density ,
- Continuous Parameters ,
- Maximum Log-likelihood ,
- Matrix Exponential ,
- Arrival Rate ,
- Random Variables
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Expectation Maximization ,
- Distribution Of Parameters ,
- Class Distribution ,
- Fitting Method ,
- General Distribution ,
- Mixture Distribution ,
- Fitting Algorithm ,
- Trace Data ,
- Real Traces ,
- Performance Measures ,
- Distribution Function ,
- Probability Density Function ,
- Scale Parameter ,
- Percentage Values ,
- Exponential Distribution ,
- Polynomial Of Degree ,
- CPU Time ,
- Service Time ,
- Heavy-tailed ,
- Log-likelihood Values ,
- Moment Matching ,
- Moments Of Distribution ,
- Discrete Parameters ,
- Queue Length ,
- Mixture Density ,
- Continuous Parameters ,
- Maximum Log-likelihood ,
- Matrix Exponential ,
- Arrival Rate ,
- Random Variables
- Author Keywords