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<title>OPTIMAL PORTFOLIO OF A SENSITIVE INVESTOR IN A FINANCIAL MARKET</title>
<link>http://hdl.handle.net/123456789/956</link>
<description/>
<pubDate>Thu, 09 Apr 2026 05:41:46 GMT</pubDate>
<dc:date>2026-04-09T05:41:46Z</dc:date>
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<title>OPTIMAL PORTFOLIO OF A SENSITIVE INVESTOR IN A FINANCIAL MARKET</title>
<link>http://hdl.handle.net/123456789/957</link>
<description>OPTIMAL PORTFOLIO OF A SENSITIVE INVESTOR IN A FINANCIAL MARKET
ACHUDUME, Celestine
A sensitive investor seeks to diversify assets and optimal portfolio which provide&#13;
the maximum expected returns at a given level of risk. Optimal portfolio problems&#13;
of an investor with logarithmic utility have been studied. However, there is scarce&#13;
information on other utility functions, such as power utility function, which cap tures the concept of diversification of portfolios. This study was therefore designed&#13;
to consider the general expected utility of a sensitive investor in a financial market.&#13;
Two models were derived from the Itˆo’s integral with respect to power utility&#13;
function. The extension of the Itˆo’s integral by forward integral with its lofty&#13;
properties was used to diversify the investors portfolio. A filtration was built&#13;
and used as a set of information for the investor. A semimartingale was used to&#13;
enlarge the investors information. A probability function was defined to capture&#13;
the activity of an insider in the market and penalty function was established to&#13;
punish such an insider. A priority Mathematical software was used to compute the&#13;
investors varying rates of volatility.&#13;
The models derived were:&#13;
U&#13;
0&#13;
(Sβ1γ1+yφ(T)) Sβ1γ1+yφ(T)|M(y)| = S&#13;
y&#13;
β1γ1+yφ(T)|M(y)|&#13;
and n&#13;
dis&#13;
t = (1 − C1C2)(ρ&#13;
k&#13;
t + πt), respectively, where U&#13;
0&#13;
(x) = dU(x)&#13;
dx is satisfied if&#13;
supy∈(−δ,δ){E[Sβ1γ1&#13;
y+yφ(T)|M(y)|&#13;
p&#13;
] &lt; ∞} for some p &gt; 1&#13;
0 &lt; E[U&#13;
0&#13;
(Sβ1γ1+yφ(T)) Sβ1γ1+yφ(T)] &lt; ∞&#13;
Sβ1γ1+yφ(T) = Sβ1γ1+yφ(T)Nβ1γ1&#13;
(y),&#13;
where&#13;
Nβ1γ1&#13;
(y) := s0 exp Z T&#13;
0&#13;
[µ(s) − r(s) − σ&#13;
2&#13;
(s)β1(s)γ1(s)]ds +&#13;
Z t&#13;
0&#13;
σ(s)dW(s)&#13;
for all β1γ1, φ ∈ AG such that AG is the set of admissible portfolios with diversi fication and φ bounded, then there was existence of δ &gt; 0 and y ∈ (−δ, δ), where&#13;
W(t) is the Brownian motion (representing the fluctuation of the risky asset), on&#13;
a filtered probability space (Ω, F, {Ft}t ≥ 0, P) and the coefficients r(t), µ(t), σ(t)&#13;
are G = {Gt}0≤t≤T adapted with Gt ⊃ Ft&#13;
for all [0, T], T &gt; 0 a fixed final time.&#13;
i&#13;
The Itˆo’s integral is adapted to the filtration F = {Gt}0≤t≤T . The forward in tegral showed that when an investor buys a stochastic amount α units of this&#13;
asset at some random time τ1 and keeps all these units up to a random time&#13;
τ2 : τ1 &lt; τ2 &lt; T, and eventually sells them at a subsequent time, the profits re alised would be αW(τ2)−αW(τ1) expressed as forward integration of the portfolio&#13;
φ(t) = αI(τ1, τ2](t), t ∈ [0, T] with respect to the Brownian motion W(t) i.e.&#13;
Z T&#13;
0&#13;
φ(t)d&#13;
−W(t) = lim&#13;
∆j→0&#13;
X&#13;
j&#13;
φ(tj ) × ∆W(tj ) = Z τ2&#13;
τ1&#13;
dW(t) = αW(τ2) − αW(τ1)&#13;
The filtration G = {Gt}0≤t≤T outlined the information flow of the investor. The&#13;
semimartingale integral R T&#13;
0&#13;
φ(t)dW(t) = R T&#13;
0&#13;
φ(t)d&#13;
−W(t) gives a decomposition&#13;
W(t) = Wˆ (t)+A(t), 0 ≤ t ≤ T, where R T&#13;
0&#13;
φ(t)dW(t) = R T&#13;
0&#13;
φ(t)dWˆ (t)+R T&#13;
0&#13;
φ(t)dA(t);&#13;
for Gt = Ft ∨ αW(T0); 0 ≤ t ≤ T i.e. Gt&#13;
is the result created by Ft and the fi nal value W(T0), where Wˆ (t) is a Gt-Brownian motion and A(t) is a continuous&#13;
Gt-adapted finite variation process. The probability of detecting and punishing an&#13;
insider was λ1 = 1 and λ2 showed the penalty on an insider observation. The&#13;
varying rates of volatility σ = 1, 0.5, s0 = 100, µ = 1, revealed that the expected&#13;
return is more when volatility σ = 1, thereby yielding optimal portfolio.&#13;
The optimal portfolio of a sensitive investor was established using power utility&#13;
function and showed higher investors return as the investor diversified his invest ment.
</description>
<pubDate>Wed, 01 Jan 2020 00:00:00 GMT</pubDate>
<guid isPermaLink="false">http://hdl.handle.net/123456789/957</guid>
<dc:date>2020-01-01T00:00:00Z</dc:date>
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