Renewal process
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Renewal theory is the branch of
probability theory Probability theory is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expressing it through a set ...
that generalizes the Poisson process for arbitrary holding times. Instead of exponentially distributed holding times, a renewal process may have any
independent and identically distributed In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is usual ...
(IID) holding times that have finite mean. A renewal-reward process additionally has a random sequence of rewards incurred at each holding time, which are IID but need not be independent of the holding times. A renewal process has asymptotic properties analogous to the strong law of large numbers and
central limit theorem In probability theory, the central limit theorem (CLT) establishes that, in many situations, when independent random variables are summed up, their properly normalized sum tends toward a normal distribution even if the original variables themsel ...
. The renewal function m(t) (expected number of arrivals) and reward function g(t) (expected reward value) are of key importance in renewal theory. The renewal function satisfies a recursive integral equation, the renewal equation. The key renewal equation gives the limiting value of the
convolution In mathematics (in particular, functional analysis), convolution is a mathematical operation on two functions ( and ) that produces a third function (f*g) that expresses how the shape of one is modified by the other. The term ''convolution'' ...
of m'(t) with a suitable non-negative function. The superposition of renewal processes can be studied as a special case of
Markov renewal process In probability and statistics, a Markov renewal process (MRP) is a random process that generalizes the notion of Markov jump processes. Other random processes like Markov chains, Poisson processes and renewal processes can be derived as special ...
es. Applications include calculating the best strategy for replacing worn-out machinery in a factory and comparing the long-term benefits of different insurance policies. The inspection paradox relates to the fact that observing a renewal interval at time ''t'' gives an interval with average value larger than that of an average renewal interval.


Renewal processes


Introduction

The renewal process is a generalization of the Poisson process. In essence, the Poisson process is a
continuous-time Markov process A continuous-time Markov chain (CTMC) is a continuous stochastic process in which, for each state, the process will change state according to an exponential random variable and then move to a different state as specified by the probabilities of ...
on the positive integers (usually starting at zero) which has independent exponentially distributed holding times at each integer i before advancing to the next integer, i+1. In a renewal process, the holding times need not have an exponential distribution; rather, the holding times may have any distribution on the positive numbers, so long as the holding times are independent and identically distributed ( IID) and have finite mean.


Formal definition

Let S_1 , S_2 , S_3 , S_4 , S_5, \ldots be a sequence of positive
independent identically distributed In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is us ...
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
s such that : 0 < \operatorname _i< \infty. We refer to the random variable S_i as the "i-th holding time". \operatorname _i/math> is the expectation of S_i. Define for each ''n'' > 0 : : J_n = \sum_^n S_i, each J_n is referred to as the "n-th jump time" and the intervals _n,J_/math> are called "renewal intervals". Then (X_t)_ is given by random variable : X_t = \sum^\infty_ \operatorname_=\sup \left\ where \operatorname_ is the
indicator function In mathematics, an indicator function or a characteristic function of a subset of a set is a function that maps elements of the subset to one, and all other elements to zero. That is, if is a subset of some set , one has \mathbf_(x)=1 if x\i ...
:\operatorname_ = \begin 1, & \text J_n \leq t \\ 0, & \text \end (X_t)_ represents the number of jumps that have occurred by time ''t'', and is called a renewal process.


Interpretation

If one considers events occurring at random times, one may choose to think of the holding times \ as the random time elapsed between two consecutive events. For example, if the renewal process is modelling the numbers of breakdown of different machines, then the holding time represents the time between one machine breaking down before another one does. The Poisson process is the unique renewal process with the Markov property, as the exponential distribution is the unique continuous random variable with the property of memorylessness.


Renewal-reward processes

Let W_1, W_2, \ldots be a sequence of IID random variables (''rewards'') satisfying :\operatorname, W_i, < \infty.\, Then the random variable :Y_t = \sum_^W_i is called a renewal-reward process. Note that unlike the S_i, each W_i may take negative values as well as positive values. The random variable Y_t depends on two sequences: the holding times S_1, S_2, \ldots and the rewards W_1, W_2, \ldots These two sequences need not be independent. In particular, W_i may be a function of S_i.


Interpretation

In the context of the above interpretation of the holding times as the time between successive malfunctions of a machine, the "rewards" W_1,W_2,\ldots (which in this case happen to be negative) may be viewed as the successive repair costs incurred as a result of the successive malfunctions. An alternative analogy is that we have a magic goose which lays eggs at intervals (holding times) distributed as S_i. Sometimes it lays golden eggs of random weight, and sometimes it lays toxic eggs (also of random weight) which require responsible (and costly) disposal. The "rewards" W_i are the successive (random) financial losses/gains resulting from successive eggs (''i'' = 1,2,3,...) and Y_t records the total financial "reward" at time ''t''.


Renewal function

We define the renewal function as the
expected value In probability theory, the expected value (also called expectation, expectancy, mathematical expectation, mean, average, or first moment) is a generalization of the weighted average. Informally, the expected value is the arithmetic mean of a ...
of the number of jumps observed up to some time t: :m(t) = \operatorname _t\,


Elementary renewal theorem

The renewal function satisfies :\lim_ \frac m(t) = \frac 1 . :


Elementary renewal theorem for renewal reward processes

We define the reward function: :g(t) = \operatorname _t\, The reward function satisfies :\lim_ \fracg(t) = \frac.


Renewal equation

The renewal function satisfies :m(t) = F_S(t) + \int_0^t m(t-s) f_S(s)\, ds where F_S is the cumulative distribution function of S_1 and f_S is the corresponding probability density function. :


Key renewal theorem

Let ''X'' be a renewal process with renewal function m(t) and interrenewal mean \mu. Let g: coupling argument. Though a special case of the key renewal theorem, it can be used to deduce the full theorem, by considering step functions and then increasing sequences of step functions.


Asymptotic properties

Renewal processes and renewal-reward processes have properties analogous to the strong law of large numbers, which can be derived from the same theorem. If (X_t)_ is a renewal process and (Y_t)_ is a renewal-reward process then: : \lim_ \frac X_t = \frac : \lim_ \frac Y_t = \frac \operatorname[W_1] almost surely. : Renewal processes additionally have a property analogous to the
central limit theorem In probability theory, the central limit theorem (CLT) establishes that, in many situations, when independent random variables are summed up, their properly normalized sum tends toward a normal distribution even if the original variables themsel ...
: :\frac


Inspection paradox

A curious feature of renewal processes is that if we wait some predetermined time ''t'' and then observe how large the renewal interval containing ''t'' is, we should expect it to be typically larger than a renewal interval of average size. Mathematically the inspection paradox states: ''for any t > 0 the renewal interval containing t is stochastically larger than the first renewal interval.'' That is, for all ''x'' > 0 and for all ''t'' > 0: : \operatorname(S_ > x) \geq \operatorname(S_1>x) = 1-F_S(x) where ''F''''S'' is the cumulative distribution function of the IID holding times ''Si''. The resolution of the paradox is that our sampled distribution at time ''t'' is size-biased, in that the likelihood an interval is chosen is proportional to its size. However, a renewal interval of average size is not size-biased. :


Superposition

Unless the renewal process is a Poisson process, the superposition (sum) of two independent renewal processes is not a renewal process. However, such processes can be described within a larger class of processes called the Markov-renewal processes. However, the
cumulative distribution function In probability theory and statistics, the cumulative distribution function (CDF) of a real-valued random variable X, or just distribution function of X, evaluated at x, is the probability that X will take a value less than or equal to x. Eve ...
of the first inter-event time in the superposition process is given by :R(t) = 1 - \sum_^K \frac (1-R_k(t)) \prod_^K \alpha_j \int_t^\infty (1-R_j(u))\,\textu where ''R''''k''(''t'') and ''α''''k'' > 0 are the CDF of the inter-event times and the arrival rate of process ''k''.


Example application

Eric the entrepreneur has ''n'' machines, each having an operational lifetime uniformly distributed between zero and two years. Eric may let each machine run until it fails with replacement cost €2600; alternatively he may replace a machine at any time while it is still functional at a cost of €200. What is his optimal replacement policy? :


See also

* Campbell's theorem (probability) *
Compound Poisson process A compound Poisson process is a continuous-time (random) stochastic process with jumps. The jumps arrive randomly according to a Poisson process and the size of the jumps is also random, with a specified probability distribution. A compound Poisso ...
*
Continuous-time Markov process A continuous-time Markov chain (CTMC) is a continuous stochastic process in which, for each state, the process will change state according to an exponential random variable and then move to a different state as specified by the probabilities of ...
* Little's lemma * Lotka's integral equation * Palm–Khintchine theorem * Poisson process * Queueing theory * Residual time *
Ruin theory In actuarial science and applied probability, ruin theory (sometimes risk theory or collective risk theory) uses mathematical models to describe an insurer's vulnerability to insolvency/ruin. In such models key quantities of interest are the proba ...
* Semi-Markov process


Notes


References

* * * * * * {{DEFAULTSORT:Renewal theory Point processes