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    <article-meta>
      <title-group>
        <article-title>Modeling Input Financial Flows of Insurance Companies as a Component of Financial Strategy</article-title>
      </title-group>
      <contrib-group>
        <contrib contrib-type="author">
          <string-name>Tatsiana Verezubova</string-name>
          <email>verezubova@mail.ru</email>
        </contrib>
        <contrib contrib-type="author">
          <string-name>Tetiana Paientko</string-name>
        </contrib>
      </contrib-group>
      <pub-date>
        <year>2016</year>
      </pub-date>
      <fpage>21</fpage>
      <lpage>24</lpage>
      <abstract>
        <p>The financial strategy of an insurance company has a significant impact on the success of that company's activity. A well-developed financial strategy is able to decrease financial risks and guarantee the discharge of insurance companies' liabilities in the long-run. One of the main components of financial strategy is financial flow modeling. Mathematical modeling allows a more accurate determination of the financial support of the tasks envisaged in the corporate strategies of insurers. Insurance companies located in the post-Soviet region have less experience with financial flow management. These companies are more vulnerable because they do business in an economically and sociologically very undeveloped environment. The aim of this article is to explain the role of financial flow modeling in order to develop financial strategies for insurance companies in the post-Soviet region. The methodology of this research is correlation and regression analysis. The result of the research is a regression equation which is useful to predict input financial flows of an insurance company. The proposed method of calculation will be used to support forecasts of premiums and revenues from other types of insurance.</p>
      </abstract>
      <kwd-group>
        <kwd />
        <kwd>Financial flow</kwd>
        <kwd>insurance company</kwd>
        <kwd>financial strategy</kwd>
        <kwd>forecast</kwd>
      </kwd-group>
    </article-meta>
  </front>
  <body>
    <sec id="sec-1">
      <title>-</title>
      <p>1 Belorussian State Economic University
2 Kyiv National Economic University Named After Vadym Hetman
The financial strength of insurance companies depends on efficient financial
strategies and management of financial flows. Optimal movement of financial flows
is able to create favorable conditions for the development and competitiveness of an
insurance company. Imbalances in the movement of financial flows increase the risks
for insurance companies and may undermine their ability to discharge liabilities.</p>
      <p>Developing a financial strategy is closely linked with financial flow modeling. In
accordance with modern economic science, financial strategy development can
include mathematical modeling. This is achieved mainly through the formalization of
the main features of the activities of the entity, identifying the relationship of its
parameters in a mathematical form. Thus it is possible to determine their dynamics</p>
      <p>- 567
with mathematical formulas that describe different economic processes, as well as
measuring their reaction to external and internal factors. Information technology and
the increased use of innovative financial instruments of analysis and forecasting are
transforming economic relations. This increases the usefulness of simulation to
optimize current and future challenges in the macro and microeconomic levels of
management. The importance of mathematical modeling is also gaining in the
financial sector, which is currently characterized by constant changes in market
conditions, subject to frequent fluctuations in exchange rates, as well as uncertainty in
the growth of cash turnover. With the increasing influence of many external and
internal factors on the stability of insurers' risk, this complicates making clear
predictions of final results of their activity. Insurance companies which are located in
the post-Soviet region have less experience in financial flow management. These
companies are more vulnerable because they act in an economically and
sociologically undeveloped environment. The aim of this article is to explain the role
of financial flow modeling for developing financial strategies for insurance
companies in the post-Soviet region.
2</p>
    </sec>
    <sec id="sec-2">
      <title>Theoretical and Methodological Background</title>
      <p>One important path in the development of a reliable financial strategy of any
organization is having methods of economic-mathematical modeling of financial
flows. They allow a more accurate determination of the needed financial support for
the tasks envisaged in the corporate strategies of insurers. It should be noted that the
development of economic process modeling has a long history. The concept of
constructing mathematical models from different forms of administrative processes
appeared in foreign literature in the middle of the nineteenth century. Modern
publications are connected to different fields of mathematical modeling. Some of
them are connected to optimization tasks of different economic processes (Sethi and
Thomson; 2000). The most important for our research are the mathematical models
which allow predicting different financial indicators. Statistical methods for
forecasting were very well explained by Abraham and Ledolter (1983). The need and
possibilities of a new approach for forecasting is shown in the work of Wieland and
Wolters (2013). The main characteristics of capital in the twenty-first century are
explained in a publication by Piketty (2014). New views on capital also require new
approaches to financial flow modeling. This was confirmed by Nedopil (2009) and
Cornelius (2003). The role of macro financial modeling was explained by Bernanke,
Gertler, and Gilchrist (1999). Insurance companies have their own special features for
financial flow modeling as was explained by Kuester and Wieland (2010). In this
paper we used correlation and regression analysis to predict input financial flows of
insurance companies.
We consider it appropriate forecasting the financial capacity of insurers by beginning
with a study of trends in the dynamics of related income and identification of the
impact of the dominant factors on the process. This allows us to develop a more
realistic approach to the forecasting of insurance premiums in the future compare to
approaches which were developed by Belarussian analysts. For example, the forecasts
of Belarussian Ministry of Finance (Ministry of Finance, 2015) and some investment
companies (Yupiter, 2015) are more optimistic. They believe that insurance premiums
will continue to increase. The growth of insurance premiums will be higher for
nonlife insurance companies than for life-insurance.</p>
      <p>In order to achieve the intended purpose, a methodology of determining the value
of insurance premiums in the future was developed. It includes the following stages:
 study of the organizational and assortment structure of a particular insurer and
identify its priority types of insurance;
 select the basic kinds of insurance services (one to three) and assess the dynamics
of income premiums in the past period, as well as depending on the primary
exogenous (external) factors influencing changes in their volume;
 calculate predictable amounts of premiums on the proposed perspective on selected
major types of insurance by using correlation and regression analysis;
 determine the projection of revenue premiums of other types of insurance through
the calculation of the arithmetic mean values between their average annual growth
rate for the previous period;
 study of a complex economic and mathematical model that describes the total
amount of the forecast of revenues for the future scheduled amount of insurance
payments on all types of insurance.</p>
      <p>In our view, for forecasting the whole magnitude of premiums in the medium term
it is advisable to use the proposed methodology for generating a moderate financial
strategy for the insurance companies for a five-year development period.</p>
      <p>Based on an examination of the terms of priority insurance services, exogenous
factors affecting the amount of premiums income were identified. Among them are:
employed population (x 1), nominal wages accrued (x 2), and the number of legal
entities (x 3).</p>
      <p>The model is based on the information on insurance premiums received on a
quarterly basis by Belarussian insurance companies between 2003-2013. All data has been
adjusted for inflation and organized as panel data. Panel analysis was used because a
large number of observations increases the number of degrees of freedom. This
reduces the dependence between the variables and the degree of errors.</p>
      <p>Correlation and regression analysis to identify linkages were used. It confirmed the
dependence of insurance contributions on selected factors. Verification of the
existence of satisfactory relationship variables was done through a pair-wise evaluation of
correlation. As a result, a correlation matrix was received (Table 1). Established ratios
of correlation confirm that the dependent variable y1 is intertwined with all variables
x (over 50%). The closest link identified with variable x 2 is 99.9%, because the
premiums directly depend on salary size. Wages are the dominant source of income for
Belarussian citizens. Also, 60% of insurance services are compulsory in Belorussia
and premiums depend on wage amount. The study found that independent variables x
1, x 2, x 3 do not have a significant impact on each other, i.e. There is no
multicollinearity. Thus, all three factors can be used to build an econometric multiple linear
regression model.</p>
      <p>
        As a result of regression analysis a formula of insurance premiums for this
insurance type and selected factors was defined (
        <xref ref-type="bibr" rid="ref1">1</xref>
        ):
y1= 2929724 – 645,769x1 + 0,208x2 + 0,634x3,
(
        <xref ref-type="bibr" rid="ref1">1</xref>
        )
where y1-insurance contributions, million rubles;
      </p>
      <p>x 1-the number of employed population in the Republic of Belarus, total, thou.
pers.;
x 2-nominal average monthly wages, rub;
x 3-the number of existing legal persons, u.</p>
      <p>2329724 – random variable describing the deviation factor X from the regression
line.</p>
      <p>The results of the statistical significance evaluation of the parameters of the
equation as a whole on heteroscedasticity of critical values and t-F-statistics (t-test and
Fisher), and for autocorrelation (Durbin-Watson test) demonstrate that the
construction of a stochastic model has a positive quality. Its parameters confirm the
plausibility of the impact of selected factors on the change in the volume of premiums income.
Therefore, this feature can be applied to calculate their predictions for the future.</p>
      <p>Scatter charts for each of the factors were constructed and set the trend line, as well
as defined the equation squares and odds (Table 2).</p>
      <p>Based on the data in Table 2, the trend line accounted for more appropriate
functions: linear, exponential, logarithmic, polynomial, and exponential. For the x 1
factor, coefficients of determination of the relevant function were determined (Table 3).
Coefficient of determination R2 differentiates effective communication layer indicator
x 1 and the independent variable t for the analysis of selected polynomial functions in
which were the highest coefficient of determination (0.8818).</p>
      <p>Functional dependency on the adequacy of the model was checked using the
criterion of Goldfelda-Kvandt. It showed that the residues are homoscedastic.
Homoskedasticity of residues means that for each value of the factor xj residues have
the same dispersion (the confidence level is 95%). This allows us to recognize a
resulting regression equation adequately reflecting the relationship of variables,
vindicating his use population projections for future periods.</p>
      <p>
        x1 = –7,0661t2 + 112,96t + 4169,5.
(
        <xref ref-type="bibr" rid="ref2">2</xref>
        )
      </p>
      <p>Other selected factors were identified and verified the adequacy of equations in the
same way. For x 2 (nominal, accrued monthly wage), despite the higher coefficient of
determination on exponential model (R2 = 0.975), after checking for
heteroscedasticity, the best model proved to be a power function with R2 = 0.959.</p>
      <p>x2 = 445,96t 3,876 .</p>
      <p>Using the criteria of Fisher and Student ratio statistics, it was proven that the third
factor x3 (number of existing legal persons) of the logarithmic function model is best
when R2 = 0.9685.</p>
      <p>
        On the basis of the calculations, interdependent revenue premiums and the
influence of primary factors, as well as selected functions to establish themselves as
factors trends was defined. They are used in justifying the value of the forecast of
premiums in the developed financial strategy for Belgosstrakh (Table 4). Reducing
the number of employees can be explained as a result of the improvement of
technologies that reduce the need for workers specialties. Promoting business
development will contribute to growth in the number of enterprises, mostly small.
This explains the growth of nominal wages. Forecasts reality is achieved mainly due
to a planned increase of priority indicators of the national economy development. As
already noted, premiums are a priority, but not the only source of financial base of the
Coefficient of
determination
R2=0,5953
R2=0,5915
R2=0,7162
R2=0,8818
R2=0,7217
(
        <xref ref-type="bibr" rid="ref3">3</xref>
        )
(
        <xref ref-type="bibr" rid="ref4">4</xref>
        )
development strategy of any insurance company. In recent years the investment
activity of insurance companies increased. However, the amount of investment
income of Belarussian insurance companies are relatively low compared to developed
countries.
      </p>
      <p>
        As already noted, the projected volume of insurance premiums in direct insurance
and investment income are crucial sources of financial resources for any insurance
company. With regard to other income from reinsurance, regression to the
perpetrators of insurance claims, property rental, sale of fixed assets, positive exchange rate
differences and other input financial flows, they are less likely to affect the overall
size of financial support the strategic objectives of insurers. This is largely due to their
economic nature, a kind of occurrence of sources, as well as the unpredictability of
their occurrence in the activities of insurance companies. The study of the sources of
these revenues in the Republic of Belarus insurance sector confirms the value of their
oscillation in time and the complexity of identifying persistent factors influence their
dynamics. However, these circumstances do not give reason to abandon their account
as other income is able to some extent to expand the financial strategy of insurance
companies. Therefore, it becomes a more reasonable use of the simplified method of
predicting the future. It is based on the determination of the average annual dynamics
of related income in the previous period and their relation to the total volume of
insurance premiums (
        <xref ref-type="bibr" rid="ref5">5</xref>
        ):
      </p>
      <p>
        K pri=
ai+bi+ci+di
zi
(
        <xref ref-type="bibr" rid="ref5">5</xref>
        )
where Kpri - the ratio of other income to total insurance premiums in the i-th year;
ai - the amount of reinsurance premiums on risk-taking in the i-th year;
bi - the amount of insurance indemnities received from reinsurers in the i-th year;
ci - the amount of reinsurance commission on ceded reinsurance in the i-th year;
di - the amount of other revenues to the i-th year;
zi - the overall outlook of the input cash flow from premiums in the i-th year.
      </p>
      <p>Calculation results for the "Belgosstrakh" are represented in Table 5. Belgosstrakh
was used as an example because this is a major Belarussian insurance company,
holding more than 50% of the insurance market. Also this company offers more than 70
different insurance services, which allows it to diversify its financial flows.
As can be seen from Table 5, other input financial flows to the total amount of
insurance premiums Belgosstrakh for the last period under review range from 2.17% to
11.28% (2011 increased due to exchange rate differences). Their average share in the
total volume of premiums is 4.6% over 5.</p>
      <p>By combining the targets of all sources of income financial flows and using the
mathematical model that determines the total amount of input financial flows, the
Belgosstrakh financial strategy for the 2014-2018 was built. (Table 6).</p>
      <p>The successful solution of the tasks planned depends on the exact definition of the
input of financial flows in the first year of the formation of financial strategy. For
subsequent years, the projections of revenues are only approximate, and require
constant refinement based on the actual achievement of the projected parameters for
the previous period, as well as adjustments based on the occurrence of a new
situation.
4</p>
    </sec>
    <sec id="sec-3">
      <title>Conclusions</title>
      <p>The dynamics of relevant income are primarily influenced by an increase of nearly
3.05 times the amount of gross wages and salaries. It is to a lesser extent affected by
changes in the number of operating entities and employees. The proposed method of
calculation is used to support forecasts of premiums and revenues from other types of
insurance. Modern computer technology and software allow greater speed of
simulations and accuracy. This can ensure greater continuity and effectiveness for an
organization in the long run. A correct solution of the issues involves the simultaneous
support of optimal value and costs. For forecasting financial flow inputs in the future,
insurance companies are encouraged to use a moderate financial strategy. However,
each individual financial strategy of a particular insurer should be based on the
identification of the features of its activities. It should consider alternatives for its planned
strategic objectives. Also it is necessary to adapt them to a choice of verification
methods of the projected input and output dynamics of financial flows.</p>
      <p>The main problem of the Belarussian insurance company’s financial strategy
development is the weak diversification of input financial flows. Domestic analysts
mainly pay attention to the ratio of incoming flows from the financial capacity of
compulsory and voluntary insurance, life insurance or other risks. However, with low
investment activity, Belarussian insurance companies will be deprived of flexibility.
If the identified trends continue, insurance companies quickly reach their limits of
growth and face the challenge of long-term scarcity.</p>
      <p>Available</p>
    </sec>
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