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Trivariate Density Revisited Steven E. Shreve Carnegie Mellon University – Conference in Honor of Ioannis Karatzas Columbia University June 4–8, 2012 1 / 94 Outline Rank-based diffusion Bang-bang control Trivariate density Personal reflections 2 / 94 Rank-based diffusion E. R. Fernholz, T. Ichiba, I. Karatzas & V. Prokaj, Planar diffusions with rank-based characteristics and perturbed Tanaka equation, Probability Theory and Related Fields, to appear. dX1 = g dt + σ dB1 dX2 = −h dt + ρ dB2 dX1 = −h dt + ρ dB1 dX2 = g dt + σ dB2 ρ2 + σ 2 = 1 g +h >0 B1 , B2 independent Br. motions 3 / 94 Remarks Karatzas, et. al. examine: I Weak and strong existence and uniqueness in law; I Properties of X1 ∨ X2 and X1 ∧ X2 ; I The reversed dynamics of (X1 , X2 ); 4 / 94 Remarks Karatzas, et. al. examine: I Weak and strong existence and uniqueness in law; I Properties of X1 ∨ X2 and X1 ∧ X2 ; I The reversed dynamics of (X1 , X2 ); I Transition probabilities (X1 , X2 ). 5 / 94 The difference process Define Y (t) = X1 (t) − X2 (t). 6 / 94 The difference process Define Y (t) = X1 (t) − X2 (t). Then dY = lI{Y ≤0} (g + h) dt − Il {Y >0} (g + h) dt +lI{Y ≤0} σ dB1 − Il {Y ≤0} ρ dB2 + lI{Y >0} ρ dB1 − Il {Y >0} σ dB2 7 / 94 The difference process Define Y (t) = X1 (t) − X2 (t). Then dY = lI{Y ≤0} (g + h) dt − Il {Y >0} (g + h) dt +lI{Y ≤0} σ dB1 − Il {Y ≤0} ρ dB2 + lI{Y >0} ρ dB1 − Il {Y >0} σ dB2 = −λ sgn Y (t) dt + dW , 8 / 94 The difference process Define Y (t) = X1 (t) − X2 (t). Then dY = lI{Y ≤0} (g + h) dt − Il {Y >0} (g + h) dt +lI{Y ≤0} σ dB1 − Il {Y ≤0} ρ dB2 + lI{Y >0} ρ dB1 − Il {Y >0} σ dB2 = −λ sgn Y (t) dt + dW , where λ = g + h > 0, 9 / 94 The difference process Define Y (t) = X1 (t) − X2 (t). Then dY = lI{Y ≤0} (g + h) dt − Il {Y >0} (g + h) dt +lI{Y ≤0} σ dB1 − Il {Y ≤0} ρ dB2 + lI{Y >0} ρ dB1 − Il {Y >0} σ dB2 = −λ sgn Y (t) dt + dW , where λ = g + h > 0, dW = σ Il {Y ≤0} dB1 − Il {Y >0} dB2 | {z } dW1 +ρ Il {Y >0} dB1 − lI{Y ≤0} dB2 . | {z } dW2 10 / 94 The sum process Define Z (t) = X1 (t) + X2 (t). 11 / 94 The sum process Define Z (t) = X1 (t) + X2 (t). Then dZ = (g − h) dt + lI{Y ≤0} σ dB1 + Il {Y ≤0} ρ dB2 +lI{Y >0} ρ dB1 + Il {Y >0} σ dB2 12 / 94 The sum process Define Z (t) = X1 (t) + X2 (t). Then dZ = (g − h) dt + lI{Y ≤0} σ dB1 + Il {Y ≤0} ρ dB2 +lI{Y >0} ρ dB1 + Il {Y >0} σ dB2 = ν dt + dV , 13 / 94 The sum process Define Z (t) = X1 (t) + X2 (t). Then dZ = (g − h) dt + lI{Y ≤0} σ dB1 + Il {Y ≤0} ρ dB2 +lI{Y >0} ρ dB1 + Il {Y >0} σ dB2 = ν dt + dV , where ν = g − h, 14 / 94 The sum process Define Z (t) = X1 (t) + X2 (t). Then = (g − h) dt + lI{Y ≤0} σ dB1 + Il {Y ≤0} ρ dB2 dZ +lI{Y >0} ρ dB1 + Il {Y >0} σ dB2 = ν dt + dV , where ν = g − h, dV = σ lI{Y ≤0} dB1 + Il {Y >0} dB2 | {z } dV1 +ρ Il {Y >0} dB1 + Il {Y ≤0} dB2 . | {z } dV2 15 / 94 Summary X1 (t) + X2 (t) = Z (t) = X1 (0) + X2 (0) + νt + V (t), X1 (t) − X2 (t) = Y (t) Z = X1 (0) + X2 (0) − λ t sgn Y (s) ds + W (t), 0 where V and W are correlated Brownian motions. 16 / 94 Summary X1 (t) + X2 (t) = Z (t) = X1 (0) + X2 (0) + νt + V (t), X1 (t) − X2 (t) = Y (t) Z = X1 (0) + X2 (0) − λ t sgn Y (s) ds + W (t), 0 where V and W are correlated Brownian motions. I To determine transition probabilities for (X1 , X2 ), it suffices to determine transition probabilites for (Z , Y ). 17 / 94 Summary X1 (t) + X2 (t) = Z (t) = X1 (0) + X2 (0) + νt + V (t), X1 (t) − X2 (t) = Y (t) Z = X1 (0) + X2 (0) − λ t sgn Y (s) ds + W (t), 0 where V and W are correlated Brownian motions. I I I To determine transition probabilities for (X1 , X2 ), it suffices to determine transition probabilites for (Z , Y ). (Z , W ) is a Gaussian process. Y is determined by W by dY (t) = −λ sgn Y (t) dt + dW (t). 18 / 94 Summary X1 (t) + X2 (t) = Z (t) = X1 (0) + X2 (0) + νt + V (t), X1 (t) − X2 (t) = Y (t) Z = X1 (0) + X2 (0) − λ t sgn Y (s) ds + W (t), 0 where V and W are correlated Brownian motions. I I I I To determine transition probabilities for (X1 , X2 ), it suffices to determine transition probabilites for (Z , Y ). (Z , W ) is a Gaussian process. Y is determined by W by dY (t) = −λ sgn Y (t) dt + dW (t). It suffices to determine the distribution of (W (t), Y (t)). 19 / 94 Bang-bang control Minimize Z E ∞ e −t Xt2 dt, 0 Subject to Z Xt = x + t us ds + Wt , a ≤ ut ≤ b, t ≥ 0. 0 20 / 94 Bang-bang control Minimize Z E ∞ e −t Xt2 dt, 0 Subject to Z Xt = x + t us ds + Wt , a ≤ ut ≤ b, t ≥ 0. 0 Beneš, Shepp & Witsenhausen (1980): Solution is ut = f (Xt ), where b, if x < δ, f (x) = a, if x ≥ δ, √ √ and δ = ( b 2 + 2 + b)−1 − ( a2 + 2 − a)−1 . 21 / 94 Bang-bang control Minimize Z E ∞ e −t Xt2 dt, 0 Subject to Z Xt = x + t us ds + Wt , a ≤ ut ≤ b, t ≥ 0. 0 Beneš, Shepp & Witsenhausen (1980): Solution is ut = f (Xt ), where b, if x < δ, f (x) = a, if x ≥ δ, √ √ and δ = ( b 2 + 2 + b)−1 − ( a2 + 2 − a)−1 . What is the transition density for the controlled process X ? (Beneš, et. al. computed its Laplace transform.) 22 / 94 Transition density by Girsanov Compute the transition density for X , where Z t Xt = x + f (Xs ) ds + Wt . 0 23 / 94 Transition density by Girsanov Compute the transition density for X , where Z t Xt = x + f (Xs ) ds + Wt . 0 Start with a probability measure PX under which X is a Brownian motion. Define W by Z t Wt = Xt − x − f (Xs ) ds. 0 24 / 94 Transition density by Girsanov Compute the transition density for X , where Z t Xt = x + f (Xs ) ds + Wt . 0 Start with a probability measure PX under which X is a Brownian motion. Define W by Z t Wt = Xt − x − f (Xs ) ds. 0 Change to a probability measure P under which W is a Brownian motion. Compute the transition density for X under P. 25 / 94 Transition density by Girsanov Compute the transition density for X , where Z t Xt = x + f (Xs ) ds + Wt . 0 Start with a probability measure PX under which X is a Brownian motion. Define W by Z t Wt = Xt − x − f (Xs ) ds. 0 Change to a probability measure P under which W is a Brownian motion. Compute the transition density for X under P. " # dP P{Xt ∈ B} = EX lI{Xt ∈B} , X dP Ft where Z t Z 1 t 2 dP = exp f (Xs ) dXs − f (Xs ) ds . 2 0 dPX Ft 0 26 / 94 Transition density by Girsanov (continued) To compute P{Xt ∈ B}, we need the joint distribution of Z t Z t Xt , f (Xs ) dXs , f 2 (Xs ) ds. 0 0 27 / 94 Transition density by Girsanov (continued) To compute P{Xt ∈ B}, we need the joint distribution of Z t Z t Xt , f (Xs ) dXs , f 2 (Xs ) ds. 0 0 Assume without loss of generality that δ = 0. Define Z x bx, if x ≤ 0, F (x) = f (ξ) dξ = ax, if x ≥ 0. 0 Tanaka’s formula implies Z t 1 F (Xt ) = f (Xs ) dXs + (a − b)LX t 2 0 so Z t 1 f (Xs ) dXs = F (Xt ) − (a − b)LX t . 2 0 28 / 94 Transition density by Girsanov (continued) To compute P{Xt ∈ B}, we need the joint distribution of Z t Z t Xt , f (Xs ) dXs , f 2 (Xs ) ds. 0 0 Assume without loss of generality that δ = 0. Define Z x bx, if x ≤ 0, F (x) = f (ξ) dξ = ax, if x ≥ 0. 0 Tanaka’s formula implies Z t 1 F (Xt ) = f (Xs ) dXs + (a − b)LX t 2 0 so Z t 1 f (Xs ) dXs = F (Xt ) − (a − b)LX t . 2 0 We need the joint distribution of Z t X Xt , Lt , f 2 (Xs ) ds. 0 29 / 94 Transition density by Girsanov (continued) Define Z t Γ+ (t) = Z0 t Γ− (t) = Il (0,∞) X (s) ds, Il (−∞,0) X (s) ds = t − Γ+ (t). 0 30 / 94 Transition density by Girsanov (continued) Define Z t Γ+ (t) = Z0 t Γ− (t) = Il (0,∞) X (s) ds, Il (−∞,0) X (s) ds = t − Γ+ (t). 0 Then Z t f 2 (Xs ) ds = b 2 Γ− (t) + a2 Γ+ (t) = b 2 t + (a2 − b 2 )Γ+ (t). 0 31 / 94 Transition density by Girsanov (continued) Define Z t Γ+ (t) = Z0 t Γ− (t) = Il (0,∞) X (s) ds, Il (−∞,0) X (s) ds = t − Γ+ (t). 0 Then Z t f 2 (Xs ) ds = b 2 Γ− (t) + a2 Γ+ (t) = b 2 t + (a2 − b 2 )Γ+ (t). 0 We need the joint distribution of Xt , LX t , Z Γ+ (t) = t Il (0,∞) (Xs ) ds, 0 where X is a Brownian motion. 32 / 94 Trivariate density Theorem (Karatzas & Shreve (1984)) Let W be a Brownian motion, let L be its local time at zero, and let Z t Γ+ (t) , Il (0,∞) (Ws ) ds 0 denote the occupation time of the right half-line. Then for a ≤ 0, b ≥ 0, and 0 < t < T , P{WT ∈ da, LT ∈ db, Γ+ (T ) ∈ dt} 2 b (b − a)2 b(b − a) exp − − = p da db dt. 2t 2(T − t) π t 3 (T − t)3 33 / 94 Remark Because the occupation time of the left half-line is Z T lI(−∞,0) (Wt ) dt = T − Γ+ (T ), Γ− (T ) , 0 we also know P{WT ∈ da, LT ∈ db, Γ− (T ) ∈ dt} for a ≤ 0, b ≥ 0, and 0 < t < T . Applying this to −W , we obtain a formula for P{WT ∈ da, LT ∈ db, Γ+ (T ) ∈ dt}, a ≥ 0, b ≥ 0, 0 < t < T . 34 / 94 Classic trivariate density Theorem (Lévy (1948)) Let W be a Brownian motion, let MT = max0≤t≤T Wt , and let θT be the (almost surely unique) time when W attains its maximum on [0, T ]. Then for a ∈ R, b ≥ max{a, 0}, and 0 < t < T , P{WT ∈ da, MT ∈ db, θT ∈ dt} 2 b(b − a) b (b − a)2 = p exp − − da db dt. 2t 2(T − t) π t 3 (T − t)3 The elementary proof uses the reflection principle and the Markov property. 35 / 94 Positive part of Brownian motion W 0 T t Positive part of Brownian motion W 0 T t T t Γ+ 0 Positive part of Brownian motion W 0 T t T t Γ+ 0 W+ (t) , WΓ−1 (t) + 0 Γ+ (T ) t 38 / 94 Full decomposition W 0 T t Full decomposition W 0 T W+ (t) , WΓ−1 (t) + 0 Γ+ (T ) t t Full decomposition W 0 T W+ (t) , WΓ−1 (t) + Γ+ (T ) t 0 W− (t) , −WΓ−1 (t) − 0 t t Full decomposition W 0 T t T t W+ (t) , WΓ−1 (t) + Γ+ (T ) t 0 W− (t) , −WΓ−1 (t) − 0 t 42 / 94 Local time Local time at zero of W : Z Z 1 t 1 t δ0 (Ws ) ds = lim lI(−,) (Ws ) ds Lt = ↓0 4 0 2 0 Z Z 1 t 1 t = lim Il (0,) (Ws ) ds = lim Il (−,0) (Ws ) ds. ↓0 2 0 ↓0 2 0 43 / 94 Tanaka’s formula Tanaka formula: Z max{Wt , 0} = t Il (0,∞) (Ws ) dWs + 0 1 2 Z t δ0 (Ws ) ds 0 44 / 94 Tanaka’s formula Tanaka formula: Z max{Wt , 0} = t Il (0,∞) (Ws ) dWs + 0 1 2 Z t δ0 (Ws ) ds 0 = −Bt + Lt , where Z Bt = − t lI(0,∞) (Ws ) dWs , 0 45 / 94 Tanaka’s formula Tanaka formula: Z max{Wt , 0} = t Il (0,∞) (Ws ) dWs + 0 1 2 Z t δ0 (Ws ) ds 0 = −Bt + Lt , where Z Bt = − t lI(0,∞) (Ws ) dWs , hBit = Γ+ (t). 0 46 / 94 Tanaka’s formula Tanaka formula: Z max{Wt , 0} = t Il (0,∞) (Ws ) dWs + 0 1 2 Z t δ0 (Ws ) ds 0 = −Bt + Lt , where Z Bt = − t lI(0,∞) (Ws ) dWs , hBit = Γ+ (t). 0 Then B+ (t) , BΓ−1 (t) is a Brownian motion. + 47 / 94 Tanaka’s formula Tanaka formula: Z max{Wt , 0} = t Il (0,∞) (Ws ) dWs + 0 1 2 Z t δ0 (Ws ) ds 0 = −Bt + Lt , where Z Bt = − t lI(0,∞) (Ws ) dWs , hBit = Γ+ (t). 0 Then B+ (t) , BΓ−1 (t) is a Brownian motion. + Time-changed Tanaka formula: W+ (t) = −B+ (t) + L+ (t), where L+ (t) = LΓ−1 (t) . + 48 / 94 Tanaka’s formula Tanaka formula: Z max{Wt , 0} = t Il (0,∞) (Ws ) dWs + 0 1 2 Z t δ0 (Ws ) ds 0 = −Bt + Lt , where Z Bt = − t lI(0,∞) (Ws ) dWs , hBit = Γ+ (t). 0 Then B+ (t) , BΓ−1 (t) is a Brownian motion. + Time-changed Tanaka formula: W+ (t) = −B+ (t) + L+ (t), where L+ (t) = LΓ−1 (t) . + Conclusion: W+ is a reflected Brownian motion. It is the Brownian motion −B+ plus the nondecreasing process L+ that grows only when W+ is at zero. 49 / 94 Skorohod representation Time-changed Tanaka formula: W+ (t) = −B+ (t) + L+ (t). Skorohod representation: The nondecreasing process added to −B+ that grows only when W+ = 0 is L+ (t) = max B+ (s). 0≤s≤t In particular, B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s). 0≤s≤t 50 / 94 W+ and B+ B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s). 0≤s≤t W+ (t) , WΓ−1 (t) + 0 Γ+ (T ) t W+ and B+ B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s). 0≤s≤t W+ (t) , WΓ−1 (t) + 0 Γ+ (T ) t 0 t −W+ W+ and B+ B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s). 0≤s≤t W+ (t) , WΓ−1 (t) + Γ+ (T ) t 0 B+ t 0 −W+ W+ and B+ B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s). 0≤s≤t W+ (t) , WΓ−1 (t) + Γ+ (T ) t 0 B+ L+ (T ) = max0≤t≤Γ+ (t) B+ (t) t 0 −W+ 54 / 94 W+ and B+ . W− and B− . B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s) 0≤s≤t B− (t) = −W− (t) + L− (t) = −W− (t) + max B− (s). 0≤s≤t W+ 0 Γ+ (T ) T t W+ and B+ . W− and B− . B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s) 0≤s≤t B− (t) = −W− (t) + L− (t) = −W− (t) + max B− (s). 0≤s≤t W+ 0 Γ+ (T ) T t W+ and B+ . W− and B− . B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s) 0≤s≤t B− (t) = −W− (t) + L− (t) = −W− (t) + max B− (s). 0≤s≤t W− run backwards W+ 0 Γ+ (T ) T t W+ and B+ . W− and B− . B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s) 0≤s≤t B− (t) = −W− (t) + L− (t) = −W− (t) + max B− (s). 0≤s≤t W− run backwards W+ Γ+ (T ) 0 0 −W+ T t T t W+ and B+ . W− and B− . B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s) 0≤s≤t B− (t) = −W− (t) + L− (t) = −W− (t) + max B− (s). 0≤s≤t W− run backwards W+ Γ+ (T ) 0 0 −W+ −W− run backwards T t T t W+ and B+ . W− and B− . B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s) 0≤s≤t B− (t) = −W− (t) + L− (t) = −W− (t) + max B− (s). 0≤s≤t W− run backwards W+ Γ+ (T ) 0 T t T t B+ 0 −W+ −W− run backwards W+ and B+ . W− and B− . B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s) 0≤s≤t B− (t) = −W− (t) + L− (t) = −W− (t) + max B− (s). 0≤s≤t W− run backwards W+ Γ+ (T ) 0 B+ T t T t B− run backwards 0 −W+ −W− run backwards W+ and B+ . W− and B− . B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s) 0≤s≤t B− (t) = −W− (t) + L− (t) = −W− (t) + max B− (s). 0≤s≤t W− run backwards W+ Γ+ (T ) 0 B+ T t T t B− run backwards 0 −W+ −W− run backwards 62 / 94 W+ and B+ . W− and B− . B+ (t) = −W+ (t) + L+ (t) = −W+ (t) + max B+ (s) 0≤s≤t B− (t) = −W− (t) + L− (t) = −W− (t) + max B− (s). 0≤s≤t W− run backwards W+ Γ+ (T ) 0 B+ T t T t B− run backwards 0 −W+ −W− run backwards Local time L+ (T ) = LT time has become the maximum. Γ+ (T ) has become the time of the maximum. 63 / 94 Personal reflections 64 / 94 In the beginning.... S. Shreve, Reflected Brownian motion in the “bang-bang” control of Browian drift, SIAM J. Control Optimization 19, 469–478, (1981). 65 / 94 In the beginning.... S. Shreve, Reflected Brownian motion in the “bang-bang” control of Browian drift, SIAM J. Control Optimization 19, 469–478, (1981). Acknowledgment in the paper The author wishes to acknowledge the aid of V. E. Beneš, who found an error in some preliminary work on this subject and suggested the applicability of Tanaka’s formula. He also wishes to thank the referee for pointing out the uniqueness of the transition density corresponding to the weak solution in Section 5. 66 / 94 In the beginning.... S. Shreve, Reflected Brownian motion in the “bang-bang” control of Browian drift, SIAM J. Control Optimization 19, 469–478, (1981). Acknowledgment in the paper The author wishes to acknowledge the aid of V. E. Beneš, who found an error in some preliminary work on this subject and suggested the applicability of Tanaka’s formula. He also wishes to thank the referee for pointing out the uniqueness of the transition density corresponding to the weak solution in Section 5. I Work on stochastic control (monotone follower, bounded variation follower, finite-fuel, ....) 67 / 94 In the beginning.... S. Shreve, Reflected Brownian motion in the “bang-bang” control of Browian drift, SIAM J. Control Optimization 19, 469–478, (1981). Acknowledgment in the paper The author wishes to acknowledge the aid of V. E. Beneš, who found an error in some preliminary work on this subject and suggested the applicability of Tanaka’s formula. He also wishes to thank the referee for pointing out the uniqueness of the transition density corresponding to the weak solution in Section 5. I I Work on stochastic control (monotone follower, bounded variation follower, finite-fuel, ....) Work on optimal investment, consumption and duality with John Lehoczky, Suresh Sethi, Gan-Lin Xu, Jaksa Cvitanič .... 68 / 94 ....and then THE BOOK, 69 / 94 ....and then THE BOOK, 70 / 94 and mathematical finance took off. 71 / 94 and mathematical finance took off. 72 / 94 Ten things I learned from Ioannis Karatzas 73 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 74 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 75 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, 76 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. 77 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 78 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata 79 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 80 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate 81 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate (Diaeresis: [Ancient Greek] The separate pronunciation of two vowels in a diphthong.) 82 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate (Diaeresis: [Ancient Greek] The separate pronunciation of two vowels in a diphthong.) I Scholarship 83 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate (Diaeresis: [Ancient Greek] The separate pronunciation of two vowels in a diphthong.) I Scholarship 6. Appreciate the work of others. 84 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate (Diaeresis: [Ancient Greek] The separate pronunciation of two vowels in a diphthong.) I Scholarship 6. Appreciate the work of others. 5. Revise, revise, revise. 85 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate (Diaeresis: [Ancient Greek] The separate pronunciation of two vowels in a diphthong.) I Scholarship 6. Appreciate the work of others. 5. Revise, revise, revise. I Advising 86 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate (Diaeresis: [Ancient Greek] The separate pronunciation of two vowels in a diphthong.) I Scholarship 6. Appreciate the work of others. 5. Revise, revise, revise. I Advising 4. Choose excellent students. 87 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate (Diaeresis: [Ancient Greek] The separate pronunciation of two vowels in a diphthong.) I Scholarship 6. Appreciate the work of others. 5. Revise, revise, revise. I Advising 4. Choose excellent students. 3. Teach students to appreciate the work of others and to revise, revise, revise. 88 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate (Diaeresis: [Ancient Greek] The separate pronunciation of two vowels in a diphthong.) I Scholarship 6. Appreciate the work of others. 5. Revise, revise, revise. I Advising 4. Choose excellent students. 3. Teach students to appreciate the work of others and to revise, revise, revise. I Administration 89 / 94 Ten things I learned from Ioannis Karatzas I Greek culture 10. Macedonia is a province in Greece. 9. All Greeks plan to return home some day, until the opportunity to do so actually arises. I Spelling 8. Lemmata (From the Greek ληµµατ α; not commonly used in West Virginia dialect.) 7. Coördinate (Diaeresis: [Ancient Greek] The separate pronunciation of two vowels in a diphthong.) I Scholarship 6. Appreciate the work of others. 5. Revise, revise, revise. I Advising 4. Choose excellent students. 3. Teach students to appreciate the work of others and to revise, revise, revise. I Administration 2. Avoid it. 90 / 94 Number one 91 / 94 Number one 1. A professional colleague who is also a friend is more precious than Euros/Drachmae. 92 / 94 Number one 1. A professional colleague who is also a friend is more precious than Euros/Drachmae. Thank you, Yannis, 93 / 94 Number one 1. A professional colleague who is also a friend is more precious than Euros/Drachmae. Thank you, Yannis, for all you have done I for your students, I for your colleagues, I for science, I and for me personally. 94 / 94