The chances of an investor in the stock market depends mainly on some certain decisions in respect to equilibrium prices, which is the condition of a system competing favorably and effectively. This paper considered a stochastic model which was latter transformed to non-linear ordinary differential equation where stock volatility was used as a key parameter. The analytical solution was obtained which determined the equilibrium prices. A theorem was developed and proved to show that the proposed mathematical model follows a normal distribution since it has a symmetric property. Finally, graphical results were presented and the effects of the relevant parameters were discussed.
2. An Empirical Approach for the Variation in Capital Market Price Changes
Int. J. Stat. Math. 165
that resolves to sustain its consumers are limited. Duroyaye & Uzome(2020) considered the nonlinear first order ordinary
differential equation model in stock market analysis, the considered two competing growth rates and its carrying capacity.
The analysis shows a continuous growth in the stock strength within the period. Moreso there have been some works with
considerable extensions such as Osu & Okorofor(2007) and Osu et al.( 2009)
Previous studies have therefore modelled equilibrium prices using different approaches. In particular, some studies, for
instance Osu (2010) stated cases such as linear and quadratic, where Bessel solutions were obtained.
The aim of this paper is first to establish a dynamic stochastic model of the capital market price aimed at determining the
equilibrium prices when the economic trend follows series price index function.
In this paper, a nonlinear ordinary differential equation was considered with volatility parameter included in the model. An
assumption of equilibrium price was stated to follow an index series price function. This problem was solved in detail and
a closed form analytical solution for equilibrium price was obtained. We proposed a theorem and proved to show the
effectiveness of the proposed model as it affects equilibrium prices.
The rest of this paper is arranged as follows: Section 2 presents preliminaries, the transformation of BS PDE to ODE is in
Subsection 2.1, Problem Formulation is presented in Section 2.2, method of solution is in Section 2.3, results are presented
in Section 3, discussion of results are in Section 4 and the paper is concluded in Section 5.
Mathematical Preliminaries of Underlying Asset
The following (1) is a Black-Scholes partial differential equation as applied in financial modelling
ππ
ππ‘
+
1
2
π2
π2
π2
π
ππ2
+ ππ
ππ
ππ
β ππ = 0 (1)
2.1 Transformation of BS PDE to Ordinary Differential Equation (ODE)
In this section, we use Cauchy-Euler method for the transformation of BS PDE to ODE. Let
π(π, π‘) = ππ‘(π )πππ‘
(2)
ππ
ππ‘
= ππ‘(π )ππππ‘
(3)
ππ
ππ
=
πππ‘(π)πππ‘
ππ
(4)
π2π
ππ2 =
π2ππ‘(π)πππ‘
ππ2 (5)
Putting (2) β (5) into (1) gives
ππ‘(π )ππππ‘
+
1
2
π2
π2
π2
ππ‘(π )πππ‘
ππ2
+ ππ
πππ‘(π )πππ‘
ππ
β πππ‘(π )πππ‘
= 0 (6)
1
2
π2
π2
π2
ππ‘(π )πππ‘
ππ2
+ ππ
πππ‘(π )πππ‘
ππ
+ ππ‘(π )ππππ‘
β πππ‘(π )πππ‘
= 0
Rearranging (6)
βΉ πππ‘ [
1
2
π2
π2
π2
ππ‘(π )
ππ2
+ ππ
πππ‘(π )
ππ
+ ππ‘(π)(π β π)] = 0 (7)
Let π = 0 but πππ‘
β 0, where π is a dummy market value, then (7) becomes
1
2
π2
π2 π2ππ‘(π )
ππ2 +
πππ‘(π )
ππ
β πππ‘(π) = 0 (8)
An investor observes prices and takes actions in discrete time periods π‘ = 0,1,2,. . ., π, the factors underlying price changes
are very uncertain and are described in probability terms. Uncertainty is captured by a stochastic π₯π‘, π‘ = 0,1,2,. . . ., π,
taking values in a measurable space X .The value of the random parameter π₯π‘ characterizes the state of the world at time
t, Evstigneev and Schenk Hoppe(2001).
Division of both sides of (8) by
π2
2
gives
π2
π2
ππ‘(π )
ππ2
+
2
π2
πππ‘(π )
ππ
β
2π
π2
ππ‘(π) = 0
Setting
2π
π2 = 1 gives
3. An Empirical Approach for the Variation in Capital Market Price Changes
Nwobi and Azor 166
π2
π2
ππ‘(π )
ππ2
+
πππ‘(π )
ππ
β ππ‘ = 0 (9)
We assume that stock price is a deterministic function of the stock price itself, so that the stock price is still the only source
of uncertainty (see Osu,2010).
Divide both sides of (9) by S gives
ππππ‘(π )
ππ2
+
πππ‘(π )
ππ
β
ππ‘(π )
π
= 0 (10)
To determine the value of an economic asset, like stock; we need to take full cognizance of its aspect of random variability
such as value of the underlying asset and its price, the variance and standard deviation of the asset at a particular time.
Now, suppose S is the unit price of the underlying asset, ππ‘ the value of the asset at time t and standard deviation Ο is
the volatility of the underlying asset.
Assuming the dividends are declared at time π‘, thus we define the index price function to be of the form
ππ‘(π)
π
= ππ2
ππ‘
which is known as the aggregate intrinsic value of stock (see, Osu et al., 2009).
Now we replace
ππ‘(π )
π
with ππ2
ππ‘ in (10), giving the differential equation of the form
π
π2
ππ‘(π )
ππ2
+
πππ‘(π )
ππ
β ππ2
ππ‘ = 0 (11)
Problem Formulation
Here, consider the problem of an investor who at the beginning of an investment period is faced with series of decisions
on the optimal choice of investment that will maximize profit at equilibrium. Assuming such equilibrium price follows a
series of an index price function such that
πΊππ΄: πβπππ π΄ = (
πΎπ
ππ‘
)
2
+ (
πΎπ
ππ‘
)
4
+ (
πΎπ
ππ‘
)
6
+ (
πΎπ
ππ‘
)
8
+ β―
So, describing this type of series needs stock volatility as a key and relevant parameter in the model. Therefore, volatility
increases the chances that the stock will improve adequately.
Following the method of Bunonyo et al(2016), we replace the Right Hand Side of (11) with
βπ β πΊππ΄ (12)
where P is a constant term and Gr is the value of stock variables or quantities
Equating (11) to (12) gives a non-homogenous differential equation in (13)
π
π2
ππ‘(π )
ππ2
+
πππ‘(π )
ππ
β ππ2
ππ‘ = βπ β πΊππ΄ (13)
with the following boundary conditions;
ππ‘ = ππ ππ π = 1 (14)
ππ
ππ
= 0 ππ π = 0 (15)
METHOD OF SOLUTION
Using Frobenius method on the LHS of (13)
ππ‘ = β ππ
β
π=0
ππ+π
= ππ β ππ ππ
β
π=0
(16)
ππ‘
β²
= β ππ
β
π=0
(π + π)ππ+πβ1
= ππβ1 β ππ(π + π)ππ
β
π=0
(17)
ππ‘
β²β²
= β ππ
β
π=0
(π + π)(π + π β 1)ππ+πβ2
= ππβ2 β ππ(π + π)(π + π β 1)ππ
β
π=0
(18)
Putting (16) β (18) into (12) gives
π. ππβ2 β ππ
β
π=0
(π + π)(π + π β 1)ππ
+ ππβ1 β ππ(π + π)ππ
β
β
π=0
β π2
ππππ+π+1
β
π=0
5. An Empirical Approach for the Variation in Capital Market Price Changes
Nwobi and Azor 168
π
π(π) = {1 +
π2
π2
4
+
π4
π4
(2 Γ 4)2
+
π6
π6
2 Γ 4 Γ 6)2
+
π8
π8
2 Γ 4 Γ 6 Γ 8)2
+ β― }
= {π +
ππ2
π2
4
+
ππ4
π4
(2 Γ 4)2
+
ππ6
π6
2 Γ 4 Γ 6)2
+
ππ8
π8
2 Γ 4 Γ 6 Γ 8)2
+ β― }
π(π) = π
π + ππ which is the general solution
π(π) = {π +
ππ2
π2
4
+
ππ4
π4
(2 Γ 4)2
+
ππ6
π6
2 Γ 4 Γ 6)2
+
ππ8
π8
2 Γ 4 Γ 6 Γ 8)2
+ β― } + {π΄0 + π΄1π2
+ π΄2π4
+ π΄3π6
+ π΄4π8}
Collecting like terms gives a general solution
π(π) = π + π΄0 + (
ππ2
4
+ π΄1)π2
+ (
ππ4
(2 Γ 4)2
+ π΄2)π4
+ (
ππ6
(2 Γ 4 Γ 6)2
+ π΄3)π6
+ (
ππ8
(2 Γ 4 Γ 6 Γ 8)2
+ π΄4)π8
(33)
Differentiating (33) with respect to S gives
πβ²(π) = 2 (
ππ2
4
+ π΄1)π + 4 (
ππ4
(2 Γ 4)2
+ π΄2)π3
+ 6 (
ππ6
(2 Γ 4 Γ 6)2
+ π΄3)π5
+ 8 (
ππ8
(2 Γ 4 Γ 6 Γ 8)2
+ π΄4)π7
(34)
Differentiating (34) with respect to S gives
πβ²β²(π) = 2 (
ππ2
4
+ π΄1) + 12 (
ππ4
(2 Γ 4)2
+ π΄2)π2
+ 30 (
ππ6
(2 Γ 4 Γ 6)2
+ π΄3)π4
+ 56 (
ππ8
(2 Γ 4 Γ 6 Γ 8)2
+ π΄4)π6
(35)
where π΄0, π΄1,π΄2, π΄3 πππ π΄4 are constants
Symmetric Characteristic of the Model
The solution of stock quantity or variable follows a normal distribution since it has symmetric property. Hence the solution
will be subjected to analysis in order to ascertain the symmetric characteristics of stocks. Therefore, we state the theorem
as follows:
THEOREM 1 (Symmetric characteristics): The solution (33) is symmetrical about the centre of the curve. That is
ππ
ππ π=0
Proof
To show that the moment of stock variable is symmetrical.
From (33)
π(π) = π + π΄0 + (
ππ2
4
+ π΄1)π2
+ (
ππ4
(2 Γ 4)2
+ π΄2)π4
+ (
ππ6
(2 Γ 4 Γ 6)2
+ π΄3)π6
+ (
ππ8
(2 Γ 4 Γ 6 Γ 8)2
+ π΄4)π8
Differencing π(π) with respect to S gives
ππ
ππ
= 2 (
ππ2
4
+ π΄1)π + 4 (
ππ4
(2 Γ 4)2
+ π΄2)π3
+ 6 (
ππ6
(2 Γ 4 Γ 6)2
+ π΄3)π5
+8 (
ππ8
(2 Γ 4 Γ 6 Γ 8)2
+ π΄4)π7
ππ
ππ
= 2 (
ππ2
4
+ π΄1)(0) + 4 (
ππ4
(2 Γ 4)2
+ π΄2)(0)3
+ 6 (
ππ6
(2 Γ 4 Γ 6)2
+ π΄3)(0)5
+8 (
ππ8
(2 Γ 4 Γ 6 Γ 8)2
+ π΄4)(0)7
.
That is
ππ
ππ π=0
Therefore, the claim is true, which touches around a vertical axis of symmetry
= 0
= 0
6. An Empirical Approach for the Variation in Capital Market Price Changes
Int. J. Stat. Math. 169
RESULTS
This section presents the computational results for the problem transformed in (2) β (5) whose solution is in (33)-
(35) in Section 2.
The tabular solutions in Tables1-6 are obtained by substituting the parameter values C= 55, π΄0 = 0.03, π΄1 =
0.02, π΄2 = 0.023, π΄3 = 0.015 πππ π΄4 = 0.04 into (33)-(35) in Section 2.
The graphical solutions are obtained using MATHEMATICA to plot the tabular solutions.
Tables 1 β 2: Equilibrium Prices Displaying Different Stock Volatilities
Table 1 Table 2
S Volatility V(S) S Volatility V(S)
0.1 1.25 55.25 0.1 2.5 55.89
0.2 1.25 55.89 0.2 2.5 58.52
0.3 1.25 56.98 0.3 2.5 63.03
0.4 1.25 58.53 0.4 2.5 69.67
0.5 1.25 60.54 0.5 2.5 78.71
0.6 1.25 63.05 0.6 2.5 90.61
0.7 1.25 66.09 0.7 2.5 105.94
0.8 1.25 69.70 0.8 2.5 125.44
0.9 1.25 73.92 0.9 2.5 150.06
1.0 1.25 78.80 1.0 2.5 181.03
1.1 1.25 84.43 1.1 2.5 219.88
1.2 1.25 90.89 1.2 2.5 268.53
Tables 3 β 4: Equilibrium Prices Displaying the First Rate of Change as a Results of Price Increase
Table 3 Table 4
S Volatility π½β²(πΊ) S Volatility π½β²(πΊ)
0.1 1.25 4.31 0.1 2.5 17.33
0.2 1.25 8.67 0.2 2.5 35.47
0.3 1.25 13.13 0.3 2.5 55.29
0.4 1.25 17.75 0.4 2.5 77.73
0.5 1.25 22.59 0.5 2.5 103.89
0.6 1.25 27.70 0.6 2.5 135.04
0.7 1.25 33.15 0.7 2.5 172.72
0.8 1.25 39.03 0.8 2.5 218.84
0.9 1.25 45.43 0.9 2.5 275.71
1.0 1.25 52.47 1.0 2.5 346.22
1.1 1.25 60.29 1.1 2.5 433.91
1.2 1.25 69.07 1.2 2.5 543.19
Tables 5 β 6: Equilibrium Prices Displaying 2nd
Rate of Changes as a Result of Price Increase
Table 5 Table 6
S Volatility π½β²β²(πΊ) S Volatility π½β²β²(πΊ)
0.1 1.25 43.26 0.1 2.5 175.96
0.2 1.25 44.03 0.2 2.5 188.32
0.3 1.25 45.33 0.3 2.5 209.64
0.4 1.25 47.17 0.4 2.5 241.04
0.5 1.25 49.61 0.5 2.5 284.18
0.6 1.25 52.70 0.6 2.5 341.34
0.7 1.25 56.52 0.7 2.5 415.54
0.8 1.25 61.22 0.8 2.5 510.65
0.9 1.25 66.97 0.9 2.5 631.57
1.0 1.25 74.01 1.0 2.5 784.43
1.1 1.25 82.65 1.1 2.5 976.75
1.2 1.25 93.32 1.2 2.5 1217.73
7. An Empirical Approach for the Variation in Capital Market Price Changes
Nwobi and Azor 170
Figure 1: Graphical Solution of the First Equilibrium Price
0.2 0.4 0.6 0.8 1.0 1.2
S
Figure 2: Equilibrium Price with its first Rate of Change
0.2 0.4 0.6 0.8 1.0 1.2
Volatility=1.25
Volatility=2.5
Volatility=1.25
Volatility=2.5
S
8. An Empirical Approach for the Variation in Capital Market Price Changes
Int. J. Stat. Math. 171
0.2 0.4 0.6 0.8 1.0 1.2
S
Figure 3: Equilibrium Price with its second rate of change
DISCUSSION OF RESULTS
In Tables 1 and 2, it can be observed that an increase in stock volatility increases equilibrium price. The two
plots start at a particular point and grow exponentially; which shows the rate of equilibrium price throughout
the trading days. The changes are as a result of volatilities which serve as a guide and an eye-opener to
investors on how to manage their portfolio of investments.
It is clear that increase in stock volatility increases equilibrium price. The changes in the two plots seem to
start at a particular point before it starts deviating differently. These changes are as a result of little changes
in the stock market business which can be detrimental or of good profit margin throughout the trading days.
See Tables 3 and 4 respectively
Tables 5 and 6 are the variation of volatilities against equilibrium price on second rate of change. It shows
that increase in stock volatility increases the equilibrium prices. This remark is beneficial to investors in
trading business in order to maximize profit.
A critical look at the two plots, show upward trends with greater changes in the equilibrium price.
CONCLUSION
In this paper, a non-linear ordinary differential equation with volatility parameter in the model is considered herein. The
proposed system of equation was solved analytically and solution verified graphically. The graphical results showed the
behaviour of the system as follows:
(i) Equilibrium price increases with increasing volatility parameter (ii) increase in stock volatility leads to an increase in
equilibrium price for first rate of change and(iii) Increase in stock volatility increases the equilibrium for second rate of
change. A theorem was developed and proved to show that the proposed model follows a normal distribution and obeys
the concept of financial modelling. However, introducing stochastic term in the system will be another important area to
explore.
Volatility=1.25
Volatility=2.5