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Convexity (finance)

In mathematical finance, convexity refers to non-linearities in a financial model. In other words, if the price of an underlying variable changes, the price of an output does not change linearly, but depends on the second derivative (or, loosely speaking, higher-order terms) of the modeling function. Geometrically, the model is no longer flat but curved, and the degree of curvature is called the convexity.

Terminology edit

Strictly speaking, convexity refers to the second derivative of output price with respect to an input price. In derivative pricing, this is referred to as Gamma (Γ), one of the Greeks. In practice the most significant of these is bond convexity, the second derivative of bond price with respect to interest rates.

As the second derivative is the first non-linear term, and thus often the most significant, "convexity" is also used loosely to refer to non-linearities generally, including higher-order terms. Refining a model to account for non-linearities is referred to as a convexity correction.

Mathematics edit

Formally, the convexity adjustment arises from the Jensen inequality in probability theory: the expected value of a convex function is greater than or equal to the function of the expected value:

 

Geometrically, if the model price curves up on both sides of the present value (the payoff function is convex up, and is above a tangent line at that point), then if the price of the underlying changes, the price of the output is greater than is modeled using only the first derivative. Conversely, if the model price curves down (the convexity is negative, the payoff function is below the tangent line), the price of the output is lower than is modeled using only the first derivative.[clarification needed]

The precise convexity adjustment depends on the model of future price movements of the underlying (the probability distribution) and on the model of the price, though it is linear in the convexity (second derivative of the price function).

Interpretation edit

The convexity can be used to interpret derivative pricing: mathematically, convexity is optionality – the price of an option (the value of optionality) corresponds to the convexity of the underlying payout.

In Black–Scholes pricing of options, omitting interest rates and the first derivative, the Black–Scholes equation reduces to   "(infinitesimally) the time value is the convexity". That is, the value of an option is due to the convexity of the ultimate payout: one has the option to buy an asset or not (in a call; for a put it is an option to sell), and the ultimate payout function (a hockey stick shape) is convex – "optionality" corresponds to convexity in the payout. Thus, if one purchases a call option, the expected value of the option is higher than simply taking the expected future value of the underlying and inputting it into the option payout function: the expected value of a convex function is higher than the function of the expected value (Jensen inequality). The price of the option – the value of the optionality – thus reflects the convexity of the payoff function[clarification needed].

This value is isolated via a straddle – purchasing an at-the-money straddle (whose value increases if the price of the underlying increases or decreases) has (initially) no delta: one is simply purchasing convexity (optionality), without taking a position on the underlying asset – one benefits from the degree of movement, not the direction.

From the point of view of risk management, being long convexity (having positive Gamma and hence (ignoring interest rates and Delta) negative Theta) means that one benefits from volatility (positive Gamma), but loses money over time (negative Theta) – one net profits if prices move more than expected, and net loses if prices move less than expected.

Convexity adjustments edit

From a modeling perspective, convexity adjustments arise every time the underlying financial variables modeled are not a martingale under the pricing measure. Applying Girsanov's theorem[1] allows expressing the dynamics of the modeled financial variables under the pricing measure and therefore estimating this convexity adjustment. Typical examples of convexity adjustments include:

References edit

  1. ^ D. Papaioannou (2011): "Applied Multidimensional Girsanov Theorem", SSRN
  2. ^ P. Hagan (2003) Convexity Conundrums: Pricing CMS Swaps, Caps, and Floors, Wilmott Magazine 2012-04-15 at the Wayback Machine
  • Benhamou, Eric, Global derivatives: products, theory and practices, pp. 111–120, 5.4 Convexity Adjustment (esp. 5.4.1 Convexity correction) ISBN 978-981-256-689-8
  • Pelsser, Antoon (April 2001). "Mathematical Foundation of Convexity Correction". SSRN 267995. {{cite journal}}: Cite journal requires |journal= (help)

convexity, finance, mathematical, finance, convexity, refers, linearities, financial, model, other, words, price, underlying, variable, changes, price, output, does, change, linearly, depends, second, derivative, loosely, speaking, higher, order, terms, modeli. In mathematical finance convexity refers to non linearities in a financial model In other words if the price of an underlying variable changes the price of an output does not change linearly but depends on the second derivative or loosely speaking higher order terms of the modeling function Geometrically the model is no longer flat but curved and the degree of curvature is called the convexity Contents 1 Terminology 2 Mathematics 3 Interpretation 4 Convexity adjustments 5 ReferencesTerminology editStrictly speaking convexity refers to the second derivative of output price with respect to an input price In derivative pricing this is referred to as Gamma G one of the Greeks In practice the most significant of these is bond convexity the second derivative of bond price with respect to interest rates As the second derivative is the first non linear term and thus often the most significant convexity is also used loosely to refer to non linearities generally including higher order terms Refining a model to account for non linearities is referred to as a convexity correction Mathematics editFormally the convexity adjustment arises from the Jensen inequality in probability theory the expected value of a convex function is greater than or equal to the function of the expected value E f X f E X displaystyle E f X geq f E X nbsp Geometrically if the model price curves up on both sides of the present value the payoff function is convex up and is above a tangent line at that point then if the price of the underlying changes the price of the output is greater than is modeled using only the first derivative Conversely if the model price curves down the convexity is negative the payoff function is below the tangent line the price of the output is lower than is modeled using only the first derivative clarification needed The precise convexity adjustment depends on the model of future price movements of the underlying the probability distribution and on the model of the price though it is linear in the convexity second derivative of the price function Interpretation editThe convexity can be used to interpret derivative pricing mathematically convexity is optionality the price of an option the value of optionality corresponds to the convexity of the underlying payout In Black Scholes pricing of options omitting interest rates and the first derivative the Black Scholes equation reduces to 8 G displaystyle Theta Gamma nbsp infinitesimally the time value is the convexity That is the value of an option is due to the convexity of the ultimate payout one has the option to buy an asset or not in a call for a put it is an option to sell and the ultimate payout function a hockey stick shape is convex optionality corresponds to convexity in the payout Thus if one purchases a call option the expected value of the option is higher than simply taking the expected future value of the underlying and inputting it into the option payout function the expected value of a convex function is higher than the function of the expected value Jensen inequality The price of the option the value of the optionality thus reflects the convexity of the payoff function clarification needed This value is isolated via a straddle purchasing an at the money straddle whose value increases if the price of the underlying increases or decreases has initially no delta one is simply purchasing convexity optionality without taking a position on the underlying asset one benefits from the degree of movement not the direction From the point of view of risk management being long convexity having positive Gamma and hence ignoring interest rates and Delta negative Theta means that one benefits from volatility positive Gamma but loses money over time negative Theta one net profits if prices move more than expected and net loses if prices move less than expected Convexity adjustments editFrom a modeling perspective convexity adjustments arise every time the underlying financial variables modeled are not a martingale under the pricing measure Applying Girsanov s theorem 1 allows expressing the dynamics of the modeled financial variables under the pricing measure and therefore estimating this convexity adjustment Typical examples of convexity adjustments include Quanto options the underlying is denominated in a currency different from the payment currency If the discounted underlying is martingale under its domestic risk neutral measure it is not any more under the payment currency risk neutral measure Constant maturity swap CMS instruments swaps caps floors 2 Option adjusted spread OAS analysis for mortgage backed securities or other callable bonds IBOR forward rate calculation from Eurodollar futures IBOR forwards under LIBOR market model LMM References edit D Papaioannou 2011 Applied Multidimensional Girsanov Theorem SSRN P Hagan 2003 Convexity Conundrums Pricing CMS Swaps Caps and Floors Wilmott Magazine Archived 2012 04 15 at the Wayback Machine Benhamou Eric Global derivatives products theory and practices pp 111 120 5 4 Convexity Adjustment esp 5 4 1 Convexity correction ISBN 978 981 256 689 8 Pelsser Antoon April 2001 Mathematical Foundation of Convexity Correction SSRN 267995 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Retrieved from https en wikipedia org w index php title Convexity finance amp oldid 1195815423, wikipedia, wiki, book, books, library,

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