For some positive integer L ≥ 2, let {1, 2, …, L} denote the finite set of states of nature exactly one of which will be realized at a future date. We will refer to a state of nature as SON and its plural as SONs.
A row vector x∈ where for each j∈{1, …, L}, the jth coordinate of x denoted by xj denotes the monetary return in SON j, from investment worth one unit of money, is said to be a unit return vector.
A vector p∈ satisfying = 1, such that for j∈{1, …, L}, pj is the probability of occurrence of SON j, is a probability vector.
A pair (x, p) where x is a unit return vector and p is a probability vector is called a unit risky investment pair.
Given x, y∈, let yTx denote .
The expected value of a unit risky investment pair denoted E(x, p) is pTx = .
The seminal contribution of Kahneman and Tversky (Kahneman and Tversky (1979)) noted the experimentally verified observation that agents tend to have a marginal utility of loss that is no less- if not higher-than the marginal utility of gain. Incorporating this idea in our analysis, we define the following.
A linear utility profile is an array in , i.e., u = <(, )| j = 1, …, L>, satisfying ≥ , for all j = 1, …, L.
The expected utility of a unit risky investment pair denoted by Eu(x, p) = , 0} + max{, 0}].
For some positive integer K, let <x(k)| k = 1, …, K> be an array of unit return vectors.
An investment plan is a (column) vector α∈ where for each k∈{1, …, K}, the kth coordinate of α denoted αk is the amount of money invested in the kth unit return vector.
Given an array of unit return vectors <x(k)| k = 1, …, K> the return from an investment plan α in SON j is .
The well-known version of the Arbitrage Theorem that is applicable for a linear utility profile satisfying = , for all j = 1, …, L is available as Theorem 4.4.1 in Ross (2004). In the following theorem we extend the result- to the extent possible- when linear utility profiles may exhibit loss aversion.
Weak Arbitrage theorem incorporating loss aversion: Let <x(k)| k = 1, …, K> be an array of unit return vector.
- (i)
Given a linear utility profile u = <(, )| j = 1, …, L> if there does not exist a probability vector p such that for all k = 1, …, K, Eu(x(k), p) = 0, then there exists an investment plan α such that utility of return from α is strictly positive in SON j for all j∈{1, …, L}.
- (ii)
If there exists an investment portfolio α such that the return from α is strictly positive in SON j for all j∈{1, …, L}, then for each j∈{1, …, L} there exists a non-degenerate left-closed right open interval Ij with min{a|a∈Ij} = 1, such that for any linear utility profile u = <(, )| j = 1, …, L> satisfying ∈Ij for all j∈{1, …, L}, the following holds: there does not exist any probability vector p such that for all k = 1, …, K, Eu(x(k), p) = 0.
Proof: (i) Let A be the (K+1)×L matrix whose (k, j)th term for k∈{1, …, K} and j∈{1, …, L} is and for j∈{1, …, L} the (K+1, j)th term is 1.
Then by Farkas’s lemma, the “non-existence” of p∈ satisfying Ap = where 0 is the K dimensional column vector all whose entries are 0, implies that there exists α∈ and a real number β such that + β ≥ 0 for all j∈{1 , …, L}, β < 0, but never both.
Thus, there exists α∈ such that > 0 for all j ∈{1, …, L}.
Since, ≥ , for all j = 1, …, L, ≤ = () = () for all j∈{1 , …, L}.
Thus, > 0 for all j∈{1 , …, L} implies () > 0 for all j∈{1 , …, L}.
Since, > 0, for all j∈{1 , …, L}, it must be the case that > 0 for all j∈{1 , …, L}.
(ii) Now suppose, there exists an investment portfolio α such that > 0 for all j∈{1, …, L}.
Thus, = + > 0 for all j∈{1 , …, L}.
Hence, > - ≥ 0 for all j∈{1 , …, L}.
For j∈{1 , …, L}, let Ij = [1, + ∞) if - = 0 and Ij = [1, ) if - > 0.
Clearly Ij is a non-degenerate left closed and right open interval in satisfying min{a|a∈Ij} = 1, for all j∈{1 , …, L}.
For j∈{1 , …, L}, let , > 0 be such that ∈ Ij. Thus ≥ , for all j∈{1 , …, L}.
Let u = <(, )| j = 1, …, L> be a linear utility profile.
Thus, () > () for all j∈{1 , …, L}, i.e., () + () > 0, for j∈{1 , …, L}.
Let β < 0 be such that - β = min{() + ()| j∈{1 , …, L}}.
Thus, β < 0 and () + () + β ≥ 0 for all j∈{1 , …, L}, i.e., β < 0 and + β ≥ 0 for all j∈{1 , …, L}.
Let A be the (K+1)×L matrix whose (k, j)th term for k∈{1, …, K} and j∈{1, …, L} is and for j∈{1, …, L} the (K+1, j)th term is 1.
Then, by Farkas’s lemma, there does not exist a column vector p∈ such that Ap = where 0 is the K dimensional column vector all whose entries are 0, i.e., there does not exist any probability vector p such that for all k = 1, …, K, Eu(x(k), p) = 0. Q.E.D.
References
- Kahneman, D.; Tversky, A. Prospect theory: An analysis of decision under risk. Econometrica 1979, 47, 263–291. [Google Scholar] [CrossRef]
- Ross, S. M. (2004): Topics in Finite and Discrete Mathematics. Cambridge University Press.
|
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).