1 / 19

Discussion of Ruhm Arbitrage Paper

Discussion of Ruhm Arbitrage Paper. Arbitrage-Free Pricing (No chance of profits unless losses possible ). General idea is that means under transformed probabilities give arbitrage-free prices But there are details: Probabilities transformed are of events “States of nature”

farrah
Download Presentation

Discussion of Ruhm Arbitrage Paper

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Discussion of Ruhm Arbitrage Paper

  2. Arbitrage-Free Pricing(No chance of profits unless losses possible ) • General idea is that means under transformed probabilities give arbitrage-free prices • But there are details: • Probabilities transformed are of events • “States of nature” • Probability zero events same before and after • Transforming probabilities of outcomes of deals does not does not always lead to arbitrage-free pricing – Ruhm’s example shows this for stock options • Transforming probabilities of stock prices does work

  3. States of Nature • For stock option prices these are the stock prices • For insurance they are frequency and severity distributions • These are probabilities that have to be transformed • Transforming aggregate loss probabilities will not necessarily give arbitrage-free prices • Seen already with Wang’s 1998 transform paper

  4. Requirement on Transform • Equivalent martingale transform • Equivalent requires same impossible states • Martingale requires that mean at any future point is the current value • For insurance prices such a transform would weight adverse scenarios more heavily in order to compensate for profit loadings (so no transformed expected profit on present value basis) • Then all layers priced as transformed mean

  5. Why Arbitrage-Free? • In complete markets arbitrage opportunities are quickly competed away • In incomplete markets it may be impossible to realize theoretical arbitrage opportunities • But competitive pressures could still penalize pricing that violates arbitrage principles • Pricing that would create arbitrage profits would be too good to last for long • In complete markets principle of no-arbitrage actually determines unique prices

  6. Arbitrage-free Pricing in Incomplete Markets • Not impossible – in fact problem is a proliferation of choices • Requires a probability transform which makes prices the expected losses under transformed probabilities • In complete markets the transform can be uniquely determined and has a no-risk hedging strategy • Incomplete markets have many possible transforms but all hedges are imperfect

  7. Transforms for Compound Poisson Process • Møller (2003 ASTIN Colloquium) shows how to create such transforms • Co-ordinated transforms of frequency and severity • Starts with f(y) function that is > –1 • Frequency parameter l is transformed to l[1+Ef(Y)]. Severity g(y) transformed to g(y)[1+f(y)]/[1+ Ef(Y)]. • Scaled so that transformed mean total loss is price of ground-up coverage

  8. Two Popular Transforms in Finance • Minimum martingale transform • Corresponds to hedge with minimum variance • Minimum entropy martingale transform • Minimizes a more abstract information distance • Recognizes that markets are sensitive to risk beyond quadratic

  9. Application to Insurance Surplus Process • Process is premium flow less loss flow • Transformed probabilities make this a martingale • Makes expected transformed losses = premium • Møller paper 2003 ASTIN demonstrated what the minimum martingale and minimum entropy martingale transforms would be for this process • Frequency and severity get linked transforms

  10. MMM and MEM for Surplus Process • Start with actual expected claim count l and size g(y) • Minimum martingale measure with 0<s<1 • l* = l/(1 – s) • g*(y) = [1 – s + sy/EY]g(y) • Claim sizes above the mean get increased probability and below the mean get decreased • No claim size probability decreases more than the frequency increases • Thus no layers have prices below expected losses • s selected to give desired ground-up profit load

  11. Minimum Entropy Measure • Has parameter c • l* = lEecY – only works if moment exists • g*(y) = g(y)ecy/EecY • Severity probability increases iff y > ln[(EecY)1/c] • For small claims g(y) > g*(y) > g(y)/EecY so probability never decreases more than frequency probability increases • Avoids potential problem Mack noted for many transforms of negative loading of lower layers

  12. Hypothetical Example • l=2500, g(y) = 0.00012/(1+y/10,000)2.2, policy limit 10M • To get a load of 20%, take the MMM s = 0.45% • l* = l/(1 – s) = 2511 • g*(y) = [1–s+sy/EY]g(y) = (.9955+y/187,215)g(y) • Probability at 10M goes to 0.055% from 0.025% • 4M x 1M gets load of 62.3%, 5M x 5M gets 112.8% • For MEM these are 50.8% and 209.1%, as more weight is in the far tail • 89% of the risk load is above $1M for MEM; 73% for MMM

  13. Testing with Pricing Data • Had prices and cat model losses for a group of reinsurance treaties • Fit MMM, MEM and a mixture of them to this data with transforms based on industry loss distribution = distribution of sum across companies • Had separate treaties and modeled losses for three perils: H, E, and FE • Mixture always fit best, but not usually much better than MEM alone, which was better than MMM • Fit by minimizing expected squared relative errors

  14. Fits • HErrorEErrorFEError • MMM s .017 .381 .021 .470 .036 .160 • MEM ln c: -28.2 .308 -26.3 .311 -26.6 .082 • Mixed .011 .298 0 .220 .116 .064 … -27.0 -25.5 -26.7 • Quadratic effects not enough to predict prices • Especially problematic in high layers

  15. Graphs

  16. Beyond No Arbitrage • Principle of no good deals • Good deal defined as risk everyone would want to buy, no one would want to sell • Involves a cutoff point • Expanding literature on how to define cutoff • Restricts prices more than does no arbitrage • Some similarities to risk transfer testing

More Related