Game-Theoretic Optimal Portfolios for Jump Diffusions

This paper studies a two-person trading game in continuous time that generalizes Garivaltis (2018) to allow for stock prices that both jump and diffuse. Analogous to Bell and Cover (1988) in discrete time, the players start by choosing fair randomizations of the initial dollar, by exchanging it for a random wealth whose mean is at most 1. Each player then deposits the resulting capital into some continuously-rebalanced portfolio that must be adhered to over [0, t]. We solve the corresponding “investment φ-game,” namely the zero-sum game with payoff kernel E[φ{W1Vt(b)/(W2Vt(c))}], where Wi is player i’s fair randomization, Vt(b) is the final wealth that accrues to a one dollar deposit into the rebalancing rule b, and φ(•) is any increasing function meant to measure relative performance. We show that the unique saddle point is for both players to use the (leveraged) Kelly rule for jump diffusions, which is ordinarily defined by maximizing the asymptotic almost-sure continuously-compounded capital growth rate. Thus, the Kelly rule for jump diffusions is the correct behavior for practically anybody who wants to outperform other traders (on any time frame) with respect to practically any measure of relative performance.

1 Introduction 1.1 Literature Review Bell and Cover (1980) studied a static, zero-sum competitive investment game whose payoff kernel is the probability that Player 1 has more wealth than Player 2 after a single period's fluctuation of the stock market. They found it necessary to introduce the device of "fair randomization" of the initial dollar for a random capital whose mean is at most 1. This being done, in equilibrium both players use the Kelly (1956) rule (or log-optimal portfolio) in conjunction with uniform(0,2) randomizations of the initial dollar. Kelly (1956) initially found his criterion by considering repeated bets on horse races by a wire fraudster whose advance knowledge is not 100% reliable. Kelly's example, which is beautiful in its simplicity, leads one to recover the logarithm as the "correct" utility function. As naturally as ever, Kelly considered fixed-fraction betting schemes and found the one with the highest possible almost-sure asymptotic capital growth rate. This gave him his "New Interpretation of the Information Rate" of the wire. Bell and Cover's (1988) sequel replaces the probability of outperformance by the expectation of some arbitrary measure φ(•) of the two gamblers' relative performance.
They again found that the Kelly rule reigns supreme, along with fair randomizations that are completely characterized by φ(•). Thus, for practically any egotist whose only goal is to outperform other traders over the short term (by whatever his personal criterion), the correct behavior is specified by the Kelly criterion. Well, maybe not correct for everybody: Samuelson's (1979) simplified approach to critiquing the Kelly rule uses only one-syllable words. Garivaltis (2018) wanted to see whether or not Bell and Cover's results hold up in the context of a stochastic differential investment φ-game for several Itô processes with state-dependent drift and diffusion. They do; the correct behavior is to use Bell and Cover's (1988) randomizations W i [φ] in conjunction with the feedback control , which is the local version of the multivariate Kelly rule in continuous time. Here, µ(S, t) is the local drift vector, Σ(S, t) is the local covariance matrix of instantaneous returns per unit time, and 1 is a vector of ones.

Contribution
The present paper extends the analysis of Garivaltis (2018) to a general stock market where security prices both jump and diffuse, as introduced by Merton (1976). We define the corresponding leveraged Kelly rule and show that it is the unique saddle point of the expected ratio of the players' final wealths. Jumps arrive at an expected rate of λ per unit time; when the diffusion parameters are zeroed out, we recover Bell and Cover (1988), albeit with the proviso that the players must twiddle their thumbs while waiting for jumps to arrive. In this connection, we have extended Bell and Cover's analysis to allow for leveraged portfolios in so far as solvency can be guaranteed for all possible jump realizations x in some compact, arbitrage-free support Ξ.

Investment φ-Game for Jump Diffusions
We consider a two-person trading game in continuous time that generalizes Garivaltis (2018). A discrete-time version of the game was studied by Cover (1980, 1988). The game has several moving parts, which we discuss presently. Each player starts with a dollar.  At the start of the game, each player i ∈ {1, 2} picks a fair randomization W i .
The money is then deposited into a continuously-rebalanced portfolio over a stock market with n correlated securities whose prices jump and diffuse. We let S it denote the price of stock i, which follows a jump diffusion Here, µ i and σ i are the drift and volatility, respectively, of stock i, and W it is a standard Brownian motion. We let ρ ij := Corr(dW it , dW jt ) be the correlation of the unanticipated (diffusive) instantaneous returns of stocks i and j. We let Σ ij := Cov(dS it /S it , dS jt /S jt )/dt = ρ ij σ i σ j denote the covariance of instantaneous returns per unit time. We assume that the matrix Σ := [Σ ij ] n×n is invertible, and therefore positive definite.
Jumps arrive according to a Poisson process, at an expected rate of λ jumps per unit time. We let N t denote the number of jumps that occured over [0, t]. Thus, we have N t ∼ poisson(λt) and 3 The gross-returns on jumps are random vectors X := (X 1 , ..., X n ) , where X i := is the gross-return on stock i for a jump that occurs at t. We let x i := X i − 1 be the net return, and we write x := (x 1 , ..., x n ) for the vector of net returns on a jump. We assume that jumps X are drawn iid according to some CDF F (•). We assume that all sources of randomness in the game, namely X, N t , W 1 , W 2 , We allow the players to use leveraged, continuously rebalanced portfolios (or fixedfraction betting schemes), denoted b := (b 1 , ..., b n ) ∈ R n . During diffusion, the rebalancing rule b trades continuously so as to maintain fixed fractions b i of wealth in each stock i. We assume that there is a risk-free bond whose price B t := e rt follows While diffusing, there is no risk of bankruptcy over the differential time interval [t, t + dt], no matter how much leverage is used. However, in order to avoid bankruptcy after jumps X, there must be limits on how much leverage each trader can use.
Accordingly, we assume the net return vectors x have a closed and bounded support, denoted Ξ ⊆ R n . Limited liability means that Ξ is bounded below by the vector −1 = (−1, ..., −1) , e.g. x i ≥ −100%. Ξ generates a corresponding set B of non-bankruptable (admissible) rebalancing rules, where Here 1 + b x is the gross-return of the rebalancing rule b during a jump. We assume that no bond interest is received (or paid) during a jump, since no time elapses.
During diffusion, the trader's margin loan balance is Example 5. For a market with a single stock whose jumps have a net return x ∈ The wealth V t (b) that accrues to a one dollar deposit into b evolves according to where 1 := (1, ..., 1) is an n×1 vector of ones. The trader's growth factor from jumps , where x k is the net return vector of the k th jump. Applying Itô's lemma for several diffusions (Wilmott 2001), the trader's growth factor from diffusion Definition 2. The investment φ-game is the two-person zero-sum game with pay- where Player 1 (numerator, maximizing) picks a rebalancing rule b ∈ B and a fair randomization W 1 , and Player 2 (denominator, minimizing) picks a rebalancing rule c ∈ B and a fair randomization W 2 . φ(•) is any increasing function meant to measure the relative performance of the two traders.
, e.g. the expected ratio of Player 1's wealth to the aggregate wealth.

The Basic Saddle Point
We start by solving the simplified game with payoff kernel E[V t (b)/V t (c)]. This will culminate in The maximin strategy b * and the minimax strategy c * are both equal to the Kelly rule (log-optimal continuously-rebalanced portfolio) for jump diffusions.
In preparation for proving the theorem, we explain and define the Kelly rule for jump diffusions. The trader's realized continuously-compounded capital growth rate which converges to Γ(b) : The asymptotic growth rate Γ(b) is strictly concave over B.
Next, we calculate that Thus, we will work with the simplified payoff kernel This is precisely the first-order condition that defines the Kelly rule for jump diffusions. The equation has a unique solution that serves to define c * . In just a moment, we will take the gradient of π(b, c) with respect to c, by using the product rule. To this end, we let D denote the differential (an n × n matrix) of the mapping c → E x 1+c x of R n into itself. We have We note that D is negative semi-definite, since it is the Hessian matrix of the concave function c → E[log(1 + c x)]. This being done, we apply the product rule and get the first-order condition where I n is the n × n identity matrix (e.g. the differential of c → c). Now, note that the matrix −Σ + λD is negative definite (therefore invertible), since it is the sum of a negative definite matrix and a negative semi-definite matrix. Thus, from the equation This proves that the unique saddle point is for both players to use the Kelly rule for jump diffusions, and that the value of the

Solution of the Investment φ-Game
On account of the fact that the unique saddle point of E[V t (b)/V t (c)] is to set b * and c * equal to the Kelly rule, we have the inequalities which hold for all b, c ∈ B. Thus, when the numerator player uses the Kelly rule it guarantees that the expected payoff is ≥ 1, and when the denominator player uses the Kelly rule it guarantees that the expected payoff is ≤ 1. With these guarantees in mind, we proceed to solve the general investment φ-game. First, we need a definition.
The random wealths W 1 and W 2 are independent of each other.
Theorem 2. The investment φ-game has the same value v[φ] as the primitive φgame. In equilibrium, both players use the Kelly rule for jump diffusions, and the players use the same fair randomizations (W * 1 , W * 2 ) that solve the primitive φ-game.
Proof. The proof given in Garivaltis (2018) carries over to the more general case of several jump diffusions. We start by showing that E φ{W * for any fair randomization W 2 and any rebalancing rule c ∈ B, where b * is the Kelly Thus, since W * 1 , is Player 1's maximin strategy in the primitive φ-game, we have Similarly, we show that E φ{W for any fair randomization W 1 and any rebalancing rule b ∈ B, where c * is the Kelly rule. Note is Player 2's minimax strategy in the primitive φ-game, we must have Thus, we have shown that ( and (W * 2 , c * ) guarantees that the expected payoff is ≤ v[φ] when b * and c * are equal to the Kelly rule and (W * 1 , W * 2 ) are the equilibrium strategies from the primitive φ-game. This proves the theorem.

Examples
To close the paper, we simulate some gameplay for a market with a single stock that diffuses according to the parameters ν := 0.07, σ := 0.15, and µ = ν +σ 2 /2 = 0.08125.
We assume a risk-free rate of r := 0.03, and that jumps arrive at an expected rate of λ := 1 per year. On jumps, the gross-returns X will be distributed according to (λt/2) n u!(n − u)! P (n, u, t; b, c), where, for b = c, where Φ(•) is the cumulative normal distribution function and γ(b) := r + (µ − r)b −     This paper formulated and solved a two person trading game in continuous time that generalizes Garivaltis (2018) to the case of several jump diffusions. Following a train of thought initiated by Cover (1980, 1988), we solved a leveraged "investment φ-game" where the object is to outperform the other investor with respect to some more or less arbitrary criterion φ(•) of relative performance.
At the start of the game, each player makes a "fair randomization" of the initial dollar by exchanging it for a random wealth whose mean is at most 1. Each player then deposits the resulting capital into some continuously-rebalanced portfolio (or fixed-fraction betting scheme) that is adhered to over a fixed interval of time. We showed that the unique saddle point of the expected final wealth ratio is for both players to use the Kelly rule for jump diffusions, in conjunction with appropriate fair randomizations that are completely determined by the criterion φ(•).
From time immemorial (Kelly 1956) the Kelly rule has been defined by maximizing the almost sure asymptotic continuously-compounded growth rate of one's bankroll.
However, the above analysis shows that, even for an egotist whose sole objective is to outperform his peers over very short time periods, the Kelly rule for jump diffusions is the correct behavior. On the one hand, although the investor knows the distribution of jump returns, he cannot anticipate their exact arrival times. Thus, his only recourse is to build a portfolio that is continuously ready to perform well when the lightning strikes. On the other hand, he wants a trading strategy that performs well during purely diffusive movements of security prices. The Kelly rule is the sweet spot that perfectly balances these two concerns.
Thus, the present paper constitutes a direct generalization of both Bell and Cover (1988) and Garivaltis (2018). If the expected jump arrival rate is zero, we specialize to Garivaltis (2018). If the diffusion parameters are zeroed out, then we get a leveraged version of Bell and Cover's original (1988) game-theoretic optimal portfolios, albeit with the proviso that the players must watch the paint dry as they wait for jumps to arrive. If everything is zeroed out, then we get the "primitive φ-game" of choosing fair randomizations W i that constitute a saddle point of E[φ(W 1 /W 2 )].