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  <front>
    <journal-meta />
    <article-meta>
      <title-group>
        <article-title>Modeling the Stability of the Country's Financial System</article-title>
      </title-group>
      <contrib-group>
        <aff id="aff0">
          <label>0</label>
          <institution>Kyiv National Economic University named after Vadym Hetman</institution>
          ,
          <addr-line>54/1, Peremohy Ave., Kyiv, 03057</addr-line>
          ,
          <country country="UA">Ukraine</country>
        </aff>
        <aff id="aff1">
          <label>1</label>
          <institution>Yuriy Fedkovych Chernivtsi National University</institution>
          ,
          <addr-line>2, Kotsyubynskoho Str., Chernivtsi, 58012</addr-line>
          ,
          <country country="UA">Ukraine</country>
        </aff>
      </contrib-group>
      <fpage>335</fpage>
      <lpage>344</lpage>
      <abstract>
        <p>The security of the public finance sector of Ukraine requires monitoring of indicators of the stability of the financial system of the country, as well as modeling the impact of these indicators on the country's financial security. It is shown that the stability of the financial system of the economy can be checked with the help of the provisions of econophysics. The concept of equilibrium is using to determine stability. The influence of factors on the level of financial security, which is one of the aspects of assessing the stability of the financial system of Ukraine is able to evaluate by simulation. The model of the financial system stability of the country is constructed in the paper. This research can serve as the basis for the adoption by the relevant state institutions of sound decisions on ensuring the stability of the financial system of Ukraine.</p>
      </abstract>
      <kwd-group>
        <kwd>stability of the financial system</kwd>
        <kwd>stability coefficient</kwd>
        <kwd>econophysics</kwd>
        <kwd>іndex financial stability</kwd>
      </kwd-group>
    </article-meta>
  </front>
  <body>
    <sec id="sec-1">
      <title>-</title>
      <p>At the present stage the main threat to the security of the public finance sector of
Ukraine is the deepening of the economic crisis. The deterioration in the financial
position of enterprises and banks increases the risks of a lack of government revenue
and leads to an increase in the state budget deficit and in public debt. All this requires
monitoring of indicators of the stability of the financial system of the country, as well
as modeling the impact of these indicators on the country’s financial security.</p>
      <p>
        The list of indicators to be monitored should include those indicators that have the
most significant impact on the sovereign credit rating of the country [
        <xref ref-type="bibr" rid="ref1">1</xref>
        ], taking into
account the constraints defined, in particular, by single-factor models [
        <xref ref-type="bibr" rid="ref2">2</xref>
        ], as well as the
indicators recommended by the Ministry of Economic Development and Trade of
Ukraine for the assessment of the budget security [
        <xref ref-type="bibr" rid="ref3">3</xref>
        ].
      </p>
      <p>
        The negative impact of military actions on the country’s economy in 2014 has
weakened the sustainability of public finances in Ukraine. The probability of default
has increased, which is reflected in the corresponding reaction of the financial markets
and the growth of the spread between the level of yield of debt obligations of Ukraine
and the US from 5.9 in. in 2010 to 9.3 in. in 2014 [
        <xref ref-type="bibr" rid="ref4">4</xref>
        ]. Exceeding all parameters of the
debt dependence of safe levels starting from 2014 in conjunction with the increase of
currency risks, deteriorating financial situation of the real and banking sectors in the
context of military operations in the East of the country creates a critically high threat
to the stability of the financial system of Ukraine.
2
      </p>
    </sec>
    <sec id="sec-2">
      <title>Data and Methods</title>
      <p>Since, according to the above-mentioned method the greatest impact on the stability of
the country’s financial system have the GDP and gross external debt, let us analyze
them for the presence of a trend, that is, a steady trend.</p>
      <p>
        More reliable estimates of the sustainable development of the financial system are
the analysis of fractal time series of the dominant parameters of the functioning of the
system and the creation of a model for its fractal development [
        <xref ref-type="bibr" rid="ref5">5</xref>
        ].
      </p>
      <p>The method of normalized scope and the estimation of the Hurst index is an effective
method of studying fractal characteristics of time series in forecasting the dynamics of
economic indicators of the enterprise. The main difference between the normalized
scale method or the R/S prediction method from other statistical methods is that this
method includes in its analysis the direction of time, while other methods are invariant
with respect to time.</p>
      <p>
        The application of the method involves the following steps, which are described in
[
        <xref ref-type="bibr" rid="ref6">6</xref>
        ].
      </p>
      <p>By the value of the Hurst index, it can be concluded:
1. If H =0.5, the economic process is a random walk, and the scale of accumulated
deviations should increase proportionally to the square root of the time.
2. 0 &lt; H ≤ 0.5. This range corresponds to the ergodic anti-persistent series. This type
of process is often referred to as “return to the average”.</p>
      <p>The anti-persistent time series is more variable than a series of random ones, since it
consists of frequent “rebound” reverses. If the process demonstrates an increase in the
previous period, then the next period is most likely to begin to decline. Conversely, if
there was a downturn, then the upsurge is likely to happen. The stability of this behavior
depends on how close H is to zero. The closer its value to zero, the greater the value of
the coefficient of negative auto-correlation of the time series levels is.
3. If 0.5 &lt; H ≤ 1.0 then it is persistent, or trend-stable rows. If the series increases
(decreases) in the previous period, then it is likely to keep this trend for some time
in the future (trends are obvious). Trend-stability of behavior, or strength of
persistence, increases with the degree of approximation of H to unit, or 100% of
autocorrelation. The closer H is to 0.5, the more a series is exposed to noise and the
less pronounced its trend.
Persistent series is a generalized Brownian motion, or accidental wandering with drift.
The shear force depends on how much H exceeds 0.5. Such ranks are unstable, they are
characteristic of the capital markets. The persistent time series has a long-lasting
memory, so there are long-term correlations between current events and future events.</p>
      <p>The fact that H differs from 0.5 means that observations are not independent. Each
observation carries the memory of all past events. This is not a short-lived memory,
often referred to as “Markov”. This is another memory – a long-term, in theory it is
stored for a sufficiently long period. That is, recent events have a more powerful effect
than events are remote, but the residual effects of the latter are always tangible.
3</p>
    </sec>
    <sec id="sec-3">
      <title>Results</title>
      <p>Data for carrying out R/S are presented in Table 1.</p>
      <p>In Fig. 1 and 2 are the normalized magnitudes for the analyzed parameters.
1,14
1,12
1,10
P 1,08
D
G
)_ 1,06
S
/
R
l(n 1,04
1,02
1,00
0,98
0,96</p>
      <p>The calculated Hurst indicator for GDP is 0.014, which means that the GDP is
antipersistent and unstable (Fig. 1). A number of gross external debt is also anti-persistent
and unstable (H = 0.11) (Fig. 2).</p>
      <p>The above calculations point to the volatility of the dynamic series of key
macroeconomic indicators of economic development.</p>
      <p>Also, the stability of the financial system of the economy can be checked with the
help of the provisions of econophysics. The possibility of using models borrowed from
physics in the study of economic problems is considered in many works of scientists,
where it is proposed to use not only the concepts borrowed from statistical physics but
also classical mechanics in the study of economics.</p>
      <p>To determine stability, it is offered using the concept of equilibrium. From the
second law of Newton it follows that if the vector sum of all forces applied to the body
is zero, then the body retains its speed unchanged. In particular, if the initial velocity is
zero, the body remains unchangeble.</p>
      <p>Let us assume that the force that wants to shift the economy from a stable state in
our coordinate system (financial stability) is the amount of gross external debt, and the
force that opposes it is the volume of GDP. Then, in order for the financial system of
the country to remain in a stable state, it is necessary that the ratio of gross debt to GDP
does not exceed 1. This indicator is called the coefficient of stability of the financial
system of the country.</p>
      <p>The dynamics of the stability coefficient of the financial system of Ukraine,
calculated according to statistical data, is given in Fig. 3.</p>
      <p>1,6
t 1,4
b
e
d
sso1,2
r
g
o
ttcu1,0
d
o
r
p
tsc0,8
i
e
m
o
d
ss0,6
o
r
g
f
itoo0,4
a
r
e
h
T0,2
0,0
As it can be seen from this indicator, Ukraine’s economy has been in an unstable
position since 2014.</p>
      <p>The considered approach is a bit simplistic and can serve as a quick, rapid analysis
of the sustainability of the country’s financial system.</p>
      <p>Achieving an acceptable level of stability of the financial system requires the
subjects of financial relations to continuously improve the measures to identify existing
and potential threats and directions for their elimination in all areas of financial activity.
That is why it is necessary to be able to evaluate the influence of factors on the level of
financial security, which is one of the aspects of assessing the stability of the financial
system of Ukraine.</p>
      <p>
        In order to assess the level and dynamics of external debt load and monitor the use
of external loans and loans, the National Bank of Ukraine has developed its own
indicator system. It consists of 18 indicators and adequately reflects the risks that may
be encountered by the banking and financial systems of Ukraine and allows us to
analyze the stability of the Ukrainian financial system [
        <xref ref-type="bibr" rid="ref11">11</xref>
        ]. Calculated indicators of
stability of the financial system of Ukraine are presented in Table 2.
      </p>
      <p>To construct the model, we use the data in Table 2.</p>
      <p>Since there is little statistical observation for adequate modeling, we use the
bootstrap method for reproduction of the sample, which was proposed in 1977 by
B. Efron of Stanford University (USA). As a result of the application of the method, 15
samples were generated. For each sample, a regression model of the dependence of the
level of stability of the financial system on GDP, gross external debt, domestic debt,
volumes of their servicing, exports of goods and services and consolidated budget
revenues was constructed.</p>
      <p>Formally, this dependence can be presented as:</p>
      <p>ISF=a+b1GDP+b2Dex+b3Din+b4SDin+b5SDex+b6Ex+b7PB,
()
where ISF – the index of financial security level (indicator of stability of the financial
system), GDP – nominal gross domestic product; Dex – external public debt; Din –
domestic state debt; SDin – domestic state debt service; SDex – servicing of external
public debt; Ex – total annual export of goods and services; and PB – total annual
consolidated budget revenues.</p>
      <p>The calculations of the model parameters were carried out in the Statictica system
10 (see Table 3). On the basis of analysis of the estimated parameters for the samples,
the estimations of the parameters of the model are found:
a = 0.5957, b1 = 0.000004, b2 = –0.000001, b3 = -0.00003, b4 = -0.00003,
b5 = -0.0003, b6 = 0.000006, and b7 = -0.00001.</p>
      <p>Consequently, the model given by equation (1), on the basis of the estimated values
of the parameters of the model adequately describes the dependence of the level of
stability of the financial system on these indicators (see equation (2))</p>
      <p>ISF=0.5975+0.000004GDP–0.000001Dex–0.00003Din–
–0.00003SDin–0.0003SDex+0.000006Ex–0.00001PB,
(2)
Let’s analyze this model. Multiple determination coefficient R2  0.9848 .
Consequently, 98.48% of the variation in the level of stability of the financial system
of the country is determined by the variation of the analyzed factors, and 1.52% – by
the influence of unregarded factors (Fig. 4).</p>
      <p>Sample
Export of goods and 0.000003 0.000002 0.000003 0.000003 0.000003 0.000002 0.000006
services
Consolidated Budget -0.000011 -0.000011 -0.000011 -0.000011 -0.000011 -0.000011 -0.000010
Revenues</p>
      <p>Analysis of the statistical significance of the model parameters allows us to conclude
that they are significant. The zero hypothesis in this case is not taken into account,
because what actually means that the coefficient of determination is significant.
4</p>
    </sec>
    <sec id="sec-4">
      <title>Conclusion</title>
      <p>Consequently, model (2) can be used for further analysis. Proceeding from this, it can
be stated that with an increase in the volume of gross external debt by 1 thousand dollars
of US , the level of stability of the financial system of the country decreases by an
average of 1 point, with the growth of GDP per 1 thousand dollars. The US level of
stability of the financial system of the country increases by an average of 0.4 and with
an increase in exports by 1 thousand dollars. The US level of stability of the financial
system of Ukraine increases by an average of 0.6 points.</p>
      <p>This research can serve as the basis for the adoption by the relevant state institutions
of sound decisions on ensuring the stability of the financial system of Ukraine.</p>
    </sec>
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