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J. Doyne Farmer John Geanakoplos

Hyperbolic Discounting is time consistent: Discounting the far future with uncertain discount rates 2009. J. Doyne Farmer John Geanakoplos. The Environment. How much should we do today to make the environment better in 200 years or 500 years? How to trade off the present vs the future?

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J. Doyne Farmer John Geanakoplos

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  1. Hyperbolic Discounting is time consistent: Discounting the far future with uncertain discount rates2009 J. Doyne Farmer John Geanakoplos

  2. The Environment • How much should we do today to make the environment better in 200 years or 500 years? • How to trade off the present vs the future? • Economists all seem to agree we should exponentially discount the future at some rate. • Conservatives say 3% per year. Nordhaus. • Liberals say 0.5% per year (Stern report).

  3. Discounting the future • How does one compare something today with something tomorrow? • How do we value something for current generations in comparison with future generations? • Ramsay (1928): For consumption stream (x0,x1,x2,…) • U(x) = u(x0) + D(1)u(x1) + D(2)u(x2) + … • Ramsay argued for D(t) = 1 • To discount later generations in favor of earlier ones is “ethically indefensible and arises merely from the weakness of the imagination” • … it is “a polite expression for rapacity and the conquest of reason by passion” (Harrod, 1948) • Reinterpret as consumption stream by same agent; get discounting.

  4. Reasons for Discounting • Impatience: Fisher, Shakespeare • Probability of Death: Rae • Failure of imagination: Bohm-Bawerk

  5. Exponential discounting • Standard approach in neoclassical economics is exponential discounting (Samuelson). • = 1/(1+r0)τ • Analogous to present value with constant bank interest rate r. • At time you would have • Discount for time is therefore

  6. Value of far future under exponential discounting? • Under exponential discounting with realistic interest rates, the far future is not worth much • E.g., with interest rate of 6%, 100 years out the discount factor is 0.0025. • This is used by some economists to argue that we should put very little effort into coping with phenomena such as global warming that create problems in the far future.

  7. Copenhagen Consensus (eight leading economists, four Nobel prize winners) Concerning global warming: “If we use a large discount rate, they will be judged to be small effects” (Robert Mendolson, criticizing an analysis by Cline using 1.5% discounting) Bjorn Lomborg

  8. Discounting of far future is very sensitive to the interest rate 100 years into the future: So how to pick the discount rate?

  9. Market interest rates • We can see what the market interest rates are. • At the moment they are the lowest ever. • 1% per year for under a year, rising to 3% per year or so in 10 years. Seems to stay thereafter. • But don’t have interest rates for beyond 30 years in heavily traded markets. Most bonds of 30 year maturity or less. • Some English consols. Also old railroad bonds. Trade for very low interest rates. Curiosity? • Must make up rates beyond 30 years.

  10. Hyperbolic discounting • Early D(t) goes down exponentially, but for large t, D(t) goes down slowly. • D(t+1)/D(t) → 1. • The most commonly used functional form with this property is • α = 1, β = ½ • D(t) ≈ 1/√t

  11. Animals and Real People Are Hyperbolic Discounters Strotz Laibson Loewenstein Ainslie Ainslie-Hernnstein

  12. E.g. Thaler experiment • How much money would you need in the future in lieu of $15 today? • Fits hyperbolic model with β = 1/2

  13. Rabin Story • Girl asked to clean her room today vs tomorrow. Much rather do it tomorrow. • When asked to clean her room in 365 days or 366 days, it doesn’t matter to her. The ratio of what she would pay today to get out of doing it in 365 days to getting out of it in 366 days is barely bigger than 1.

  14. Iroquois constitution • Gayanashagowa -- Great Law of Peace --constitution of the Haudenosaunee • In every deliberation we must consider the impact on the 7th generation … even if it requires having skin as thick as the bark of a pine.

  15. Even animals use hyperbolic discounting Widely viewed as “irrational”, or at least “behavioral”.

  16. Is hyperbolic discounting time consistent? • Clearly agents could not be Samuelson discounters. • If D(t)/D(t+1) goes down, is that time consistent behavior?

  17. Hyperbolic discounting seems irrational • Only way for D(t+1)/D(t) → 1 seems to be if people think in the future they will become more patient. • Or in future will become less likely to die in one year. • Or will develop better imagination about the future as they get older. • All implausible.

  18. Hyperbolic discounting is irrational • If world is certain • People do not think they will grow more patient, or less likely to die, etc

  19. Rabin Story • Girl asked to clean her room today vs tomorrow. Much rather do it tomorrow. • When asked today to clean her room in 365 days or 366 days, it doesn’t matter to her. • But if asked today whether she thinks in 365 days if she is asked to clean her room it will matter whether it is then or the next day, she will say it likely will matter • Sounds time inconsistent, and Rabin and most others agree. They exult in the irrationality. • But public policy should be rational!

  20. Solution: One Period Discount is Random! • Future interest rates are not known today for sure. • People don’t know how urgent their one period impatience will be. • Death probabilities vary. • An entire industry on Wall Street built to analyze values when future interest rates unknown. • How does this help if future interest rates on average are at least as high as today?

  21. Geometric Random Walk Interest Rate Model • Called Black-Derman-Toy model • (Ho-Lee model same but with random walk) • Workhorse of finance. • Analyzed to death for t < 30 years • But not for large t

  22. .5 .5 v = volatility .5 .5 .5 .5

  23. D(t)= how much would you pay today for $1 for sure at time t • Clearly discount factor D(t) must depend on what market expects future one period discounts to be; otherwise there would be arbitrage opportunities. • Two wrong answers! • D(τ)=e-E₀[r₀]e-E₀[r₁]...e-E₀[rτ-1]< e-r₀τ • D(τ)=E₀[e-r₀]E₀[e-r₁]...E₀[e-r(τ-1)]≈ K(1/2)τ • Both wrong answers lead to more discounting!

  24. D(t)= how much would you pay today for $1 for sure at time t • Suppose common knowledge that at any time t, can always make bet at even odds that interest rate will go up or down. • Then correct answer by no-arbitrage must be average product of one period discounts over all paths to period t. • D(τ)=E₀[e-r₀e-r₁...e-r(τ-1)]

  25. .5 .5 v = volatility .5 .5 .5 .5

  26. Theorem • In geometric random walk, the discount factor D(τ) goes down exponentially at first, at rate faster than r0, but converges to • D(τ) = Kτ-1/2 as τ→∞. So hyperbolic discounting is rational. • D(t+1)/D(t) ≈ √(t+1)/√t • Length of time before entering hyperbolic region is shorter if vol is higher. • Here K is a constant, or maybe a slowly varying function like 1/log. Logt/ √t is tiny.

  27. r0=4%, v = 50% Farmer and Geanakoplos

  28. Comparison of discount factors x 100 (15% annual volatility, 4% initial rate)

  29. Fits Thaler data

  30. Why is this true? • Think of one period discount as coming from one year death probability. • Hazard probability follows random walk. • Conditional on living for 100 years, likely were following path with very low one year death rates. If one year death probs got bad, you would already be dead. • Hence conditional probability of living one more year after making it to 100 is very high. • Familiar idea in economics.

  31. Where does 1/√t come from? 2n n ≈ 22nK/√n t = 2n Proportion of 22n possibilities is about K/√n ≈ K/√t

  32. Idea of Proof • Consider the case where volatility v = ∞. • Then have three kinds of paths: • Good paths: Those in which from time 1 onward remain strictly below median. • Mediocre paths: Those in which from time 1 onward hit median but remain below median. • Bad paths: Those in which at some date go above median. These contribute zero to value

  33. Good Path: starts down and never hits r0 r0 0 -1 -3

  34. Another Good Path: same number of ups as downs r0 0

  35. Good paths • Might as well start all paths at -1 at time 1, and go for T-1 periods = 2n. • End up at -1 or -3 or -5 etc. • So can count total number of good paths by adding number that end at -1 plus number that end at -3 plus number that end at -5 etc. • Total paths that start at -1 and end at -1 have right proportion 1/√T. But need to subtract out non-good paths that start and end at -1, and add good paths that end at -3 plus -5 etc.

  36. Bad Path r0

  37. Reflection Principle r0

  38. Reflection Principle for paths end -1 • Number of non-good paths that start at -1 and hit or cross 0 and end at -1 is equal to all paths that start at +1 and end at -1. • But that is equal to number of all paths that start at -1 and end at -3. • Hence number of good paths that start at -1 and end at -1 is equal to the number of all paths that start at -1 and end at -1 minus the number of all paths that start at -1 and end at -3.

  39. Reflection Principle for paths end -3 • Number of non-good paths that start at -1 and hit or cross 0 and end at -3 is equal to all paths that start at +1 and end at -3. • But that is equal to number of all paths that start at -1 and end at -5. • Hence number of good paths that start at -1 and end at -3 is equal to the number of all paths that start at -1 and end at -3 minus the number of all paths that start at -1 and end at -5.

  40. Number of good paths equals • All paths that end at -1 minus all paths that end at -3 • Plus • All paths that end at -3 minus all paths that end at -5 • Plus etc • Equals all paths that end at -1.

  41. End of Proof for v = ∞ • So all good paths has right proportion of all paths. • Must count total number of mediocre paths that hit 0 but do not cross zero. • Same technique can be used to show that is exactly equal to number of paths that never hit 0. These paths all get discounted. • In fact can compute how many paths get discounted k times, for each k.

  42. Proof for v < ∞ • Key idea is that when interest rate goes down exponentially, discount rate goes up doubly exponentially. So after logT periods of going down, discount factor is essentially 1. • D = 1/(1+r0(e-v)(1/v)logT)= 1/(1+r0/T) • Even if one period discount factor is D from then on until T, get virtually no discounting • DT = (1/(1+r0/T))T = e-r0

  43. Strip: Everything Below is Good Path Period T Period 0 r0 (1/v)logT Good path starting here

  44. Proof for v < ∞ • Let N = logT + 1. Note N/√T ≈ 0. • So probability that path starting at 0 goes first to -1 is ½. • For T large probability that path exits strip is ≈ 1. • Then probability the path exits at bottom of strip before exiting at top is 1/N by gambler’s ruin theorem. • Once out at bottom fraction of good paths that never enter strip again is at least 1/√T. • So get D(t) ≥ 1/2N√T times discounting while in strip.

  45. Discounting While in Strip • Actually spend pretty long in strip before exiting at bottom. If visited every line equally while in strip before exiting at bottom, then too much discounting. • But can show spend most of time while in strip before exiting at bottom near middle of strip, where discount factor already near 1.

  46. Discounting While in Strip • Let Π(i) = i/N = prob of exiting at N starting at i. • Let E(i,k) = expected number of times you hit k starting at i before exiting, with i≤ k ≤ N. • Clearly E(i,N) = Π(i). • Π(i) = E(i,k)(1/2)(1/(N-k)) if i < k < N • E(i,k) = 2 Π(i)(N-k) • Let W(i,k) = expected hits of k that also exit at N. • W(1,k) = (k/N)E(1,k) = 2k(N-k)/N2 • W(1,k)N = 2k(N-k)/N = expected number of hits of k starting at 1 conditional on exiting at N

  47. Generalizatios • Asymptotic Behavior of Stochastic Discount Rate • Geanakoplos-Sudderth-Zeitouni • Instead of binary, let v be any bounded random variable with zero mean and positive variance. Then • 1/√t-o(1) < D(t) < 1/√t+o(1)

  48. End

  49. Utility today and in the future over certain prizes

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