Trinomial tree

The trinomial tree is a lattice based computational model used in financial mathematics to price options. It was developed by Phelim Boyle in 1986. It is an extension of the binomial options pricing model, and is conceptually similar. It can also be shown that the approach is equivalent to the explicit finite difference method for option pricing.[1] For fixed income and interest rate derivatives see Lattice model (finance) #Interest rate derivatives.

Formula

Under the trinomial method, the underlying stock price is modeled as a recombining tree, where, at each node the price has three possible paths: an up, down and stable or middle path.[2] These values are found by multiplying the value at the current node by the appropriate factor , or where

(the structure is recombining)

and the corresponding probabilities are:

.

In the above formulae: is the length of time per step in the tree and is simply time to maturity divided by the number of time steps; is the risk-free interest rate over this maturity; is the corresponding volatility of the underlying; is its corresponding dividend yield.[3]

As with the binomial model, these factors and probabilities are specified so as to ensure that the price of the underlying evolves as a martingale, while the moments - considering node spacing and probabilities - are matched to those of the log normal distribution[4] (and with increasing accuracy for smaller time-steps). Note that for , , and to be in the interval the following condition on has to be satisfied .

Once the tree of prices has been calculated, the option price is found at each node largely as for the binomial model, by working backwards from the final nodes to the present node (). The difference being that the option value at each non-final node is determined based on the three - as opposed to two - later nodes and their corresponding probabilities. The model is best understood visually - see, for example Trinomial Tree Option Calculator (Peter Hoadley).

If the length of time-steps is taken as an exponentially distributed random variable and interpreted as the waiting time between two movements of the stock price then the resulting stochastic process is a birth-death process. The resulting model is soluble and there exist analytic pricing and hedging formulae for various options.

Application

The trinomial model is considered[5] to produce more accurate results than the binomial model when fewer time steps are modelled, and is therefore used when computational speed or resources may be an issue. For vanilla options, as the number of steps increases, the results rapidly converge, and the binomial model is then preferred due to its simpler implementation. For exotic options the trinomial model (or adaptations) is sometimes more stable and accurate, regardless of step-size.

gollark: Can *your* OS do that?
gollark: By multiplying two smallish prime numbers (inaccessible to the user except via the debug API, if it was available in potatOS (it's not, fully)) to make a bigger *semi*prime it's possible to make a problem easy to generate but relatively hard to solve.
gollark: It's actually very fast.
gollark: ```lualocal function isprime(n) for i = 2, math.sqrt(n) do if n % i == 0 then return false end end return trueend local function findprime(from) local i = from while true do if isprime(i) then return i end i = i + 1 endend```
gollark: ```lua if settings.get "potatOS.removable" then potatOS.actually_really_uninstall = function(hedgehog) if hedgehog == "76fde5717a89e332513d4f1e5b36f6cb" then print "Hedgehog valid. Deleting potatOS main code." fs.delete "/autorun" else error "Invalid hedgehog! Expected 76fde5717a89e332513d4f1e5b36f6cb." end end end```Also this bit, optionally.

See also

References

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