Abstract

We discuss estimating the probability that the sum of nonnegative independent and identically distributed random variables falls below a given threshold, i.e., mathbb {P}(sum _{i=1}^{N}{X_i} le gamma ), via importance sampling (IS). We are particularly interested in the rare event regime when N is large and/or gamma is small. The exponential twisting is a popular technique for similar problems that, in most cases, compares favorably to other estimators. However, it has some limitations: (i) It assumes the knowledge of the moment-generating function of X_i and (ii) sampling under the new IS PDF is not straightforward and might be expensive. The aim of this work is to propose an alternative IS PDF that approximately yields, for certain classes of distributions and in the rare event regime, at least the same performance as the exponential twisting technique and, at the same time, does not introduce serious limitations. The first class includes distributions whose probability density functions (PDFs) are asymptotically equivalent, as x rightarrow 0, to bx^{p}, for p>-1 and b>0. For this class of distributions, the Gamma IS PDF with appropriately chosen parameters retrieves approximately, in the rare event regime corresponding to small values of gamma and/or large values of N, the same performance of the estimator based on the use of the exponential twisting technique. In the second class, we consider the Log-normal setting, whose PDF at zero vanishes faster than any polynomial, and we show numerically that a Gamma IS PDF with optimized parameters clearly outperforms the exponential twisting IS PDF. Numerical experiments validate the efficiency of the proposed estimator in delivering a highly accurate estimate in the regime of large N and/or small gamma .

Highlights

  • Efficient estimation of rare event probabilities finds various applications in the performance evaluation/prediction of wireless communication systems operating over fading channels (Simon and Alouini 2005)

  • The objective of this paper is to propose an alternative importance sampling (IS) probability density functions (PDFs) that approximately yields, for certain classes of distributions that include most of the common distributions and in the rare event regime corresponding to large N and/or small γ, at least the same performance as the exponential twisting technique and at the same time does not introduce serious limitations

  • Outperforms the two other approaches in terms of WNRV. (The efficiency increases as the event becomes rarer.) It is worth recalling that the WNRV of the approach based on biased PDF should be multiplied by 4 in order for the analysis to be fair. (This follows from the error analysis that was performed in section 4.3.1.) Fig. 7 shows that, in addition to reducing the variance, as shown in Fig. 6, the approach based on using the Gamma IS PDF reduces the computing time compared to the one using the exponential twisting technique

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Summary

Introduction

Efficient estimation of rare event probabilities finds various applications in the performance evaluation/prediction of wireless communication systems operating over fading channels (Simon and Alouini 2005). The lefttail of the cumulative distribution function (CDF) of sums of

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Problem setting and motivation
Exponential twisting
Gamma family as IS PDF
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The Log-normal case
Biased estimator
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The Gamma family as an IS PDF
Numerical results
Weibull case
Gamma–Gamma case
Log-normal case
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Conclusion
Full Text
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