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A martingale approach to software reliability
Published online by Cambridge University Press: 01 July 2016
Extract
Consider the following situation: a computer program which presumably contains a certain number of errors is tested over a given period of time, in order to infer some conclusions about its behaviour when used by future customers.
- Type
- Applied Probability in Biology and Engineering. An ORSA/TIMS Special Interest Meeting
- Information
- Copyright
- Copyright © Applied Probability Trust 1984
References
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