ISSN Electrónfico: 2500-9338
Volumen 24-N°1
Año 2024
Págs. 6 – 22
FINANCIAL EDUCATION EVALUATION MODEL IN EMERGING MARKET. A QUALITATIVE
COMPARATIVE ANALYSIS BY GENDER IN COLOMBIA
Abril-Teatin,
Jheisson Andres[1]
Enlace ORCID: https://orcid.org/0000-0002-4868-6561
Blanco-Mesa, Fabio[2]
Enlace ORCID: https://orcid.org/0000-0002-9462-6498
Romero-Muñoz, Jorge[3]
Enlace ORCID: https://orcid.org/0000-0003-4952-2435
Recepcion
Date: December 2, 2023
Date
of acceptance: March, 29 2024
ABSTRACT:
The objective of this
research is to determine the variables for a financial education evaluation
model in emerging market applied to a gender comparison. This study uses
principal component analysis (PCA) and comparative qualitative fuzzy set
analysis to determine the correlational of financial literacy variables and
identify their patterns through their causal relationships. For this, the data
set used has been collected through the application of 2499 questionnaires to
the adult population of the departments of central Colombia. Using PCA is found
7 latent variables that al-lows to the generation of different scenarios that
highlight the importance of the financial education variables analysed. Using
fsQCA analysis is carried out six rounds to evaluate the causal conditions
necessary for the occurrence of savings, credit and investment for the
community identified in the male and female gender This information is useful
for the different organizations in charge of the legislation and implementation
of the FE. Results confirms the existence of different perceptions and skills
in FE among the subjects analysed. Likewise, these differences underscore the
importance of gender-specific FE and how it influences their financial
decisions.
Keywords. Financial education, Emerging market, gender,
principal component analysis, fsQCA.
.
MODELO DE EVALUACIÓN DE LA EDUCACIÓN FINANCIERA EN MERCADOS
EMERGENTES. UN ANÁLISIS CUALITATIVO COMPARATIVO POR GÉNERO EN COLOMBIA
Resumen:
El objetivo de esta investigación es determinar las
variables para un modelo de evaluación de educación financiera en mercados
emergentes aplicado a una comparación de género. Este estudio utiliza análisis
de componentes principales (PCA) y análisis cualitativo comparativo de
conjuntos difusos para determinar la correlación de las variables de educación
financiera e identificar sus patrones a través de sus relaciones causales. Para
ello, el conjunto de datos utilizado ha sido recolectado mediante la aplicación
de 2499 cuestionarios a la población adulta de los departamentos del centro de
Colombia. Utilizando PCA se encuentran 7 variables latentes que permiten
generar diferentes escenarios que resaltan la importancia de las variables de
educación financiera analizadas. Mediante el análisis fsQCA se realizan seis
rondas para evaluar las condiciones causales necesarias para la ocurrencia de
ahorro, crédito e inversión para la comunidad identificada en el género
masculino y femenino. Esta información es de utilidad para las diferentes
organizaciones encargadas de la legislación e implementación del FE. Los
resultados confirman la existencia de diferentes percepciones y habilidades en FE
entre los sujetos analizados. Asimismo, estas diferencias subrayan la importancia
de la FE específica de género y cómo influye en sus decisiones financieras.
Palabras clave. Educación financiera, Mercados
emergentes, género, análisis de componentes principales, fsQCA.
MODELO DE AVALIAÇÃO DA EDUCAÇÃO FINANCEIRA EM MERCADOS EMERGENTES.
UN ANÁLISIS CUALITATIVO COMPARATIVO POR GÉNERO EN COLOMBIA
Resumo:
O objetivo desta pesquisa é determinar as variáveis
para um modelo de avaliação de educação financeira em mercados emergentes
aplicado a uma comparação de gênero. Este estudo utiliza análise de componentes
principais (PCA) e análise qualitativa comparativa de conjuntos difusos para
determinar a correlação das variáveis de alfabetização financeira e identificar
seus padrões por meio de suas relações causais. Para isso, o conjunto de dados
utilizado foi coletado através da aplicação de 2.499 questionários à população
adulta dos departamentos da região central da Colômbia. Utilizando a PCA são
encontradas 7 variáveis latentes que permitem a geração de diferentes cenários
que destacam a importância das variáveis de educação financeira analisadas.
Utilizando a análise fsQCA são realizadas seis rodadas para avaliar as
condições causais necessárias para a ocorrência de poupança, crédito e
investimento para a comunidade identificadas no gênero masculino e feminino.
Esta informação é útil para as diferentes organizações responsáveis pela
legislação e implementação do FE. Os resultados confirmam a existência de
diferentes perceções e competências em FE entre os sujeitos analisados. Da mesma
forma, estas diferenças sublinham a importância da FE específica de género e como esta influencia as suas decisões financeiras.
Palavras chave. Educação
financeira, mercado emergente, género, análise de componentes principais,
fsQCA..
1. INTRODUCTION:
Financial Education (FE) is the
process of providing information and knowledge, as well as developing the
skills necessary to evaluate options and make the best finan-cial decisions,
enabling individuals to understand how money works and providing the tools
necessary to properly manage personal finances (Abril Teatin et al., 2022;
Lusardi & Messy, 2023; Yuesti et al., 2020). Since an important element for
the development of the economy of any country is the proper functioning of its
financial system, a tool that promotes such system in an efficient way is the FE
of its population. Society needs to be involved in economic and financial
aspects, for this it is necessary that they have the knowledge and basic tools
that allow them to plan, manage and save more, which will result in higher
levels of investment and growth of both personal and national econo-my (Bazán
et al., 2021). Based on the above, it is necessary to generate research that
addresses how have been the processes of approaching the FE, in different
territories of the terrestrial sphere, therefore it is necessary to generate
research that documents the state of progress of the FE, in a given territory,
allowing the analysis of particular con-ditions of the populations under study
(Bilal et al., 2021; Fu, 2020; A Lusardi, 2015; Steinert et al., 2018; Thomas
& Spataro, 2018).
The main aim is to determine the
variables for a financial education evaluation model in emerging market applied
to a gender comparison. A theoretical review of the different approaches to FE
was carried out to detaild review of the different variables on FE, as well as
its main definitions, importance, and key concepts. Methodology two methods are
used to determine the variables and observe their causal relationships. First,
principal component analysis (PCA) is used, which allows minimizing the num-ber
of variables analyzed (Lozares & López-Roldán, 1991; Terrádez, 2018).
Second, fuzzy set qualitative comparative analysis (fsQCA) is performed, which
is a different approach that consider multiple levels of explanation and
different causal paths that are satisfactory for the occurrence of a particular
outcome (Pappas & Woodside, 2021; Ragin, 1987, 2000). Findings show that 7
latent variables, which are used to establish causal conditions necessary for
the occurrence in savings, credit and investment com-paring male and female
gender in Colombia. On the one hand, women tend to focus on aspects such as
investments, interest, and retirement planning with the aim of reach-ing ideal
levels in savings, credit, and investments. In the other hand, men require a
broader and deeper understanding of different financial aspects, such as
insurance and regulations of the financial system, to achieve optimal levels of
savings. Results con-firms the existence of different perceptions and skills in
FE among the subjects ana-lysed.
This article is organized as follows:
Section 2 reviews the concepts about the FE. Section 3 presents the
methodological processes of the research. Section 4 presents the results of the
analyses. Finally,
Section 5 presents the conclusions.
One
of the fundamental challenges since the dawn of humanity has been education,
mainly teaching people to write and read so that they can communicate with each
other. Education continues to be fundamental throughout the world, where new
challenges arise as to how to teach in more developed environments and with
increasingly complex tasks. Within these aspects of complexity is related to
the development of skills, abilities, and knowledge in the use of financial
goods and services (Ba-ez-Palencia et al., 2019). The development of these
skills requires a cognitive and educational process in the short, medium, and
long term, and financial literacy can con-tribute to their acquisition. The
following is a brief presentation of key financial litera-cy concepts.
Financial
Literacy.
Financial
education (FE) has aroused interest due to the perceived need for people to
acquire advanced skills in accessing financial products and services,
generating trust and guarantees among the different economic agents involved in
financial intermedia-tion processes and activities (Gómez-Soto, 2009). There
are different approaches to FE that attempt to provide clarity on what is
meant. For example, Noctor et al., (1992) state that the FE is "the
ability to make informed judgments and effective decisions re-garding the use
and management of money" (p.4), where the main act is identified as the
ability of people to make the right decisions. For Vitt et al., (2000) FE
should take another perspective given that FE is: "The ability to read,
analyze, manage and communicate about personal financial conditions that affect
material well-being" (p.12) who were more emphatic in considering the
skills and abilities needed in FE.
According
to the OCDE and CAF, (2020), FE is defined as the process in which financial
consumers improve their understanding of financial products, concepts and risks
through information, impartial advice, and education, enabling them to develop
skills and confidence to become more aware of financial risks and
opportunities, know where to turn for help, and take any effective and
efficient action to improve their fi-nancial well-being. Indeed, FE goes beyond
the simple provision of information and financial advice, which should be regulated,
as is often already the case, for the protection of financial consumers (García
et al., 2013). According to Romero-Muñoz et al., (2021b) FE has different
interpretations, which has sparked a discussion on what a FE should include.
The understanding of FE can consider the knowledge of financial concepts, the
ability to understand these concepts and the skills to make financial
decisions, which would contribute significantly to social formation in the
financial environment.
Currently,
there are several educational programs in FE for businesspeople, for pensioners
and for members of companies. However, FE is not implemented at the curricular
level at the secondary and professional levels, because there is a need for the
general population to study FE in greater depth so that they will be more
competent when dealing with the products and services of the financial sector
(Céspedes, 2018). The importance of FE derives from economics, since it
establishes vital aspects for ad-equate decision making in daily life by
incorporating three fundamental aspects a) gaining and understanding knowledge
about finance, b) developing financial compe-tencies, and c) having financial
responsibility (Pangestu & Karnadi, 2020). Likewise, the importance for the
welfare of the financial system, since it allows all the actors of this system
to be more apt and competent, avoiding information asymmetry in financial
products and services (Schuster de Hart, 2018). To this end, the promotion of
financial literacy is essential, as it should be considered a fundamental skill
in human life, and the population should be educated at an early age.
The
new generations will have to be exposed to increasingly complex financial
markets and products, and the FE will enable them to greatly reduce financial
risks due to lack of knowledge of these products (Villagómez, 2014). According
to Instituto Santalucía (2021) for the effective promotion of the FE at an
early age, 5 pillars must be developed: 1) if one has an adequate FE from a
young age, one will be able to effectively manage the personal economy; 2) the FE
will allow the understanding of how money works; 3) the FE provides knowledge
for a correct financial decision making; 4) the new communication and
information technologies have allowed and will be an important ally when
analyzing and requesting financial products and services; 5) the FE allows the
objective of reaching a financial stability.
Financial
knowledge.
Financial
knowledge involves understanding key financial concepts, based on people's
ability and capacity to develop them in their daily lives. According to Potrich
et al., (2015) financial knowledge is defined as the intellectual capital
acquired from the experience of managing income, savings and expenses that
occur during a person's lifetime. Endogenization of financial knowledge has
important welfare implications as policies aimed at improving the levels of
financial literacy in the general population (Gavurova et al.,2019). Financial
knowledge can also be determined as the confidence and skills one has about the
different terms and basic knowledge of finance that are of utmost importance
for an adequate performance in the management of financial re-sources (Aydin
& Akben Selcuk, 2019; Kalmi & Ruuskanen, 2019). According to Romero &
Ramírez (2018) financial knowledge can be defined as the knowledge of a person,
and that this in turn understands the close relationship between personal and
business finances making assertive decisions. The importance of financial
knowledge for a local or national economy lies in the fact that entrepreneurs
will be able to better assume the financial responsibilities involved in each
economic activity or cycle (Memarista, 2016).
For
Nguyen et al. (2017) Financial knowledge is an elementary component of the FE,
since it allows the adequate interpretation and analysis of financial concepts,
products and instruments. Financial knowledge is an intangible asset, which
allows the adequate and efficient processing of economic information and
decision making on credit, pensions, savings, investments, interest rates, and
planning of other variables on financial products and services (Zorrilla et
al., 2021). According to Cordero & Ped-raja (2016) The low level of
financial literacy in the population may be considered as one of the main
factors in the complications of a financial crisis that may become
international in nature. For this reason, more and more international
organizations and countries are implementing activities in their territories
for the implementation of FE at increasingly younger ages in the population.
Promoting financial literacy in the population contributes to the empowerment
of the financial consumer, people will be able to protect their rights and
demand the effective fulfillment of the duties of financial organizations
(Rubiano, 2014).
Financial
conceptualization.
Financial
conceptualization allows people to acquire knowledge and skills when
interacting with different financial services and products, allowing them to
develop the necessary skills to make better decisions in the financial market.
Some factors of relevance to financial education are identified, namely:
savings, credit, investment, di-vision of money, time value of money,
inflation, risk diversification, interest calcula-tion, profitability,
budgeting, interest, insurance, retirement, and financial system standards.
Economic theory defines savings as the difference between disposable income, consumption,
and investment, given at the individual, family, and societal levels
(Melo-Becerra et al., 2006). This concept was practiced in ancient peoples
because these civilizations saved seeds to be used later in the sowing of
subsequent cycles. Also, part of what
was saved could be used to be exchanged for products of allied peoples, generating
the economic system known as barter (Oberst, 2014).
Credit:
A bank credit is the permission given by a financial institution to a specific
client, through a contract, so that the client can obtain certain financial
resources, which may or may not be made available immediately or partially
(Peña Pupo, 2012).
Investment:
An investment is any financial instrument in which funds are deposited with the
expectation that it will generate positive income by generating an in-crease in
its value. The yields or returns on an investment are received in two basic
forms, increase in value and current income. Money invested in a savings
account generates current income through periodic payments of the agreed
interest (Gitman & Joehnk, 2009; Valencia Nuñez et al., 2020). Likewise,
sophisticated investment strategies will allow the investor(s) to massively
increase the financial returns on their products. naïve diversification
strategies do not allow to obtain good financial returns and even increase the
financial risk of these strategies due to a lack of knowledge of the behavior
and particular conditions of the financial investment products to be accessed
(Benartzi & Thaler, 2001).
Interest
rate: The interest rate denotes the cost incurred or earned per unit of time
for every unit of capital invested, alternatively, it can be expressed as the
yield on a unit of money over a specific time or the yield on a unit of capital
within a given timeframe. The interest rate is expressed as a percentage and
represents the balance between the risk and potential gain of using a fund in
each situation and at a given time (Carrizo, 1977).
Inflation:
Inflation is a phenomenon observed in a country's economy and is re-lated to
the disorderly increase in the prices of most goods and services traded in its
market over a short or long period of time. When the economy experiences
inflation, it is difficult to allocate our income, plan trips, pay off debts or
invest in profitable things, because prices are distorted as a reference to
allocate our funds in the best way (Moreno-Brid et al., 2014).
Retirement
pension: The pension is understood as the amount of money received by the
worker to replace the normal payment of the salary, which has ceased to be
received due to having reached the pension age, because of the termination of
the labor activity. However, reaching a certain age is not the only scenario
that must occur to obtain a pension, since it can occur due to an illness or
permanent disability, among other particular situations (Casañas Lorenzo,
2018).
Budget:
A budget is a plan that shows how resources will be acquired and used over a
specified interval (Romero & Vega, 2015). While operations are in process,
the budget serves as a basis for comparison, and facilitates the control
process (Jiménez & Espinoza, 2007).
Financial
system: Financial system is the set of organizations which have been authorized
by the State to capture, manage and invest the money of individuals and legal
entities that carry out economic activities in the country (Dueñas, 2008).
Additionally, the term financial system also includes the grouping of
instruments, rules and regulations which are related to the relationship
between the client and the financial entity (Quispe et al., 2022).
Profitability:
Profitability turns out to be the biggest and most important motivation for
people who invest in financial products and services, which offer them some
kind of fixed or variable income in a certain period. This implies that the
person must analyze and understand adequately if a certain type of investment
is useful according to the particular needs of this person (Martins &
Rialp, 2013; Morillo, 2001).
Insurance:
The purpose of insurance is to transfer the risk of possible losses due to the
occurrence of a specific event, through the payment of an amount established as
a premium by a third-party entity, which is essentially the Insurance Company.
In short, insurance is the financing of a risk and its cost is the premium
(Valero, 1991).
This study uses
a fuzzy set qualitative comparative analysis (fsQCA) to examine the
relationship between 7 variables of FE (Ragin, 2000). which is the result of a principal
components analysis (PCA), where initially there have been 14 variables, whose
data set has been compiled through the application of 2499 questionnaires to
the adult population of the departments of the central Colombian zone. The
population of the departments of the central region of Colombia was analyzed,
which in economic terms is recognized as the most important region in the
country, comprising the departments of Meta, Tolima, Boyaca and Cundinamarca,
together with Bogotá Capital District. These territories comprise a population
of approximately 14.633.137 inhabitants (DANE, 2019). The people included are
the adult population of these departments and are financial consumers from
different social groups, such as businessmen, university students, salaried
employees, pensioners and, in general, common people linked to the financial
system, who previously accepted to participate in this study. Given this
in-formation, a stratified probabilistic sample is made, to find the sample for
Bogota and each department determined, with a confidence level of 95% and a
margin of error of 5%, obtaining a sample of 2.499 people out of a population
of 10.931.036 inhabitants who belong to Bogota and the departments listed in
Table 1.
For the
collection of information, an evaluation questionnaire is designed based on the
theoretical analysis and literature review, including fourteen financial categories
that make up the FE (Appendix A), which was applied to the sample population
established in each of the departments. This evaluation includes simple and
clear questions to identify the knowledge of the participants. The evaluation
questions are classified into 14 variables.
Adult population by department and Bogotá.
Department |
Adult population |
Sample |
Bogota |
5.967.518 |
1.364 |
Boyaca |
995.970 |
228 |
Cundinamarca |
2.070.075 |
473 |
Meta |
780.856 |
179 |
Tolima |
1.116.617 |
255 |
Total |
10.931.036 |
2.499 |
Source: Data of Abril Teatin et al., (2022).
As an analysis
strategy and support technique, principal component analysis (PCA) is used,
which is a statistical technique for the synthesis of information, or
re-duction of the number of variables (Navarro et al., 2010). Since, given a
certain amount of data with many variables, the objective of this will be to
reduce them to a smaller number by losing as little information as possible.
The new principal compo-nents or factors will be a linear combination of the
original variables, and they will also be independent of each other. A key
aspect in PCA is the interpretation of the factors, since this is not given a
priori, but will be deduced after observing the relationship of the factors
with the initial variables (Terrádez, 2018). The PCA analysis was carried out
using R software, which is a statistical and graphical analysis system. It is
distributed free of charge and is quite friendly to the researcher since this
system has a relatively simple programming language and the add-ons that may be
needed are also free (Cwynar et al., 2019; The R Foundation, 2017).
With the results
found in the PCA, the fuzzy methodology will be applied to them using the FsQCA
3.0 program. Since this program uses the theory of fuzzy sets together with
Boolean algebra, to comprehensively analyze the degree to which certain
combinations or factors are present or absent in relation to the occurrence or
non-occurrence of a given phenomenon of interest (Ragin, 1987, 2000; Surco
Guillen, 2021; Zadeh, 1965). An important process is the calibration of
variables. The calibration of variables in fsQCA is direct, indicating three
qualitative breakpoints: 10% indicating that the result is outside the set, 50%
intermediate and 90% completely inside. The causal conditions for the savings,
investment and credit variables are related, in addition to generating two
categories for each variable where the results are analyzed according to the
gender of the people participating in the research (Pappas & Woodside,
2021).
Being aware of the importance of the FE and its
various effects on daily life, this section unfolds the results of the research
concerning the characterization and under-standing of the 14 variable questions
posed for the purpose of knowledge. One of the first stages in the process of
conducting the PCA and fsQCA involved the initial evaluation of the data
distribution and the validation of the scale used in the survey. For this,
Cronbach's Alpha coefficient is used on a sample of 2499 study participants,
without applying any exclusion criteria. This coefficient was calculated
considering the 14 variables present in the survey, resulting in a value of
0.889. This result is con-sidered an appropriate indicator of the internal
reliability of the survey and suggests a significant level of confidence in the
data collected.
Principal Component Analysis Results.
The 14 variables have been analysed through principal
component analysis. In Figure 1. Analysis of the principal components,
dimension 1 corresponds to capture 41.90% and dimension 2 captures 7.91% and
accumulates 49.81% of the information. It is also observed that there are two
groups that are related, the first with the variables investment, inflation,
interest calculation, division of money, financial system standards, insurance,
retirement, savings, and interest. The second with risk diversification,
budgeting, time value of money, profitability, credit. These correlations can
be ob-served according to the intensity of the colours represented.
Figure 1.
Principal component analysis.
Source: own elaboration with
data from R software.
The Pearson diagram (see
Table 2 and Table 3), allows to numerically demonstrate the existence of a
relationship between two variables, quantifying the intensity of this
relationship. This makes it possible to show the relationship between two types
of data and to quantify the intensity of this relationship. It is used to find
out if there is indeed a correlation between two magnitudes or parameters of a
problem and, if so, what type of correlation it is (Abril Teatin et al., 2022).
According to the results in Table 3, the correlations of the 14 variables can
be observed. The correlation with the highest index is found in financial
system standards and investment with 0.6, followed by a correlation of 0.56
between insurance and Retirement. However, the lowest correlation index with
0.11 was found between the variables budget and division of money.
In
addition, the largest groupings of correlations between the research variables
are shown, in this case the correlations with the highest index have been
selected, where the largest correlation group with the highest result is
created with the results of the variable financial system standards. This group
is composed of 7 variables which are Savings with 0.5, Credit with 0.51,
Interest with 0.5, Investment with 0.6, Retirement with 0.54, and insurance
with 0.53. A second grouping generated with the in-vestment variable where 6
variables are presented, is composed of Savings with 0.52, Credit with 0.54,
Financial system standards with 0.6, Profitability with 0.5, Insurance with
0.52. On the other hand, the grouping of variables with the lowest results is
made up of the variable interest, savings, and financial system standards with
0.5 (see Table 2 and Table 3).
Table 2.
Scatter plot
between the 14 variables
Source:
Own elaboration, with results of software R. SA: Savings; IC: Interest
calcula-tion; CR: Credit; RD: Risk diversification; DM: Division of money; IF:
Inflation; IT Inter-est; IV: Investment; RE: Retirement; FS: Financial system
standards; BU: Budget; PR: Profitability; IN: Insurance; TV: Time value of
money.
According
to these PCA results, it is determined that, from the 14 initial study
variables, it is generated 7 latent variables: financial system standards,
savings, credit, interest, investment, retirement, and insurance (see Table 3).
Table
3.
Scatter plot
between the 7 variables.
Fuzzy
set qualitative comparative analysis (fsQCA) results.
The
variables considered in the analysis with the fsQCA 3.0 program are based on
the seven obtained in the PCA, which are: Financial system standards, savings,
credit, interest, investment, retirement, and insurance. Six rounds of fsQCA
analysis are carried out, evaluating the causal conditions necessary for the
occurrence of savings, cred-it and investment for the community identified in
the male and female gender.
Variables
analyzed in fsQCA.
The
variables of savings, credit and investment are selected since these are
fundamental components of an adequate FE. Savings provide financial stability
and re-sources for the future (Melo-Becerra et al., 2006; Oberst, 2014), credit
facilitates access to financing and consumption (Antonio-Anderson et al., 2020;
Mora-Torres, 2017) and investment stimulates economic development and wealth
generation (Ahmed & Salleh, 2016; Valencia Nuñez et al., 2020). These
variables are interrelated and are crucial both at the individual level and for
the development of the economy.
This
analysis using fsQCA allows the identification of the key combinations
(configurations) of conditions that act as causally sufficient to generate the
results of be-longing to each variable in question. Based on the data presented
in Table 4, 12 relevant combinations have been identified in relation to the
savings variable. These combinations reveal consistency intervals ranging from
0.87302 to 1. In addition, an average range of presence among the study
subjects is observed, varying from 0% to 2.825%, along with probabilities of
occurrence ranging from 0.00111 to 0.60055.
Table 4.
Conditions necessary for the presence of the
savings variable analysis.
Source: Own elaboration,
with results from FUZZY software. CR: Credit; IT: Interest; IV: Investments;
RE: Retirement; FS: Financial system standards; IN: Insurance.
Table 5.
Analysis of the necessary conditions for the presence
of the Credit variable.
Table 6 shows that for the
credit variable, 2 combinations can be identified. These combinations reveal
coherence intervals that vary between 0.87954 and 1. In addition, average
ranges of participation of the study subjects are found, ranging from 0.142% to
65.295%. Also, probabilities of occurrence are observed in the range from
0.00142 to 0.65295.
Table 6.
Analysis of the
necessary conditions for the presence of the Credit variable.
Variables analyzed in fsQCA
by gender of the population.
Table 7 shows a total of 13
different combinations, in which variability in the coherence results is
observed, ranging from 0.85294 to 1. These results are accompanied by average
ranges of participation by the study subjects, ranging from 0.099% to 2.783%.
In addition, the probabilities of occurrence range from 0.00099 to 0.70875.
Table 7.
Analysis of the
necessary conditions for the presence of savings in the female gender
In Table 8, a total of 13
combinations have been identified, which show a diversity in the levels of
consistency, ranging from 0.81818 to 1. These results are accompanied by
average ranges of participation by the study subjects, ranging from 0.127% to
3.304%. In addition, probabilities of occurrence ranging from 0.00127 to
0.50953 are recorded.
Table
8.
Analysis
of the necessary conditions for the presence of savings in the male gender.
The results presented in Table
7 and Table 8 shed light on the complex relationships and patterns of financial
behavior observed in the study. Table 8 highlights a set of 13 unique
combinations that reveal a diverse range of coherence levels, varying be-tween
0.85294 and 1. These coherence values capture the strength of the relationships
between the conditions studied, providing detailed insight into the underlying
interactions.
The first combination of
variables in both tables highlights the influence of financial education on
savings-related decision making. In Table 8, it is evident that women achieve a
high level of savings by acquiring knowledge in investment, interest, and
retirement, while in Table 9, it is established that the male population needs
to under-stand investment, interest, insurance, and retirement concepts to
achieve an adequate level of savings.
fsQCA results by gender on
the investment variable.
Table 9 shows a set of 4
specific combinations that have yielded consistency results ranging from
0.95981 to 1. The average ranges of participation of the study sub-jects in
these combinations range from 0.124 to 73.913. Additionally, the probabilities
of occurrence recorded in this table range from 0.00124 to 0.74162.
Table
9.
Analysis
of the necessary conditions for the presence of investment in the female
gen-der.
Table 10 presents a total of
5 specific combinations that yield consistency results ranging from 0.95981 to
1. The average ranges of presence of the study subjects within these
combinations range from 0.168% to 54.698%. In addition, the probabilities of
occurrence recorded in this table range from 0.00168 to 0.54698.
Table
10.
Analysis
of the necessary conditions for the presence of investment in the male gender.
In the first combination of
variables in Table 10, it is concluded that for the fe-male study population to
reach an adequate level of investment, it is essential that they acquire
knowledge in areas such as Savings and Credit. In addition, the importance of
having limited knowledge in Interest, but an appropriate level of understanding
in In-surance and Retirement highlights the specificity of the conditions that
influence the investment decisions of the female participants.
On the other hand, in the
first combination of variables in Table 11, it is established that for the male
study population to achieve an adequate level of investment, in-depth knowledge
in areas such as Savings, Credit, Insurance, Retirement and Financial system
standards is required. This finding underscores the breadth and depth of
knowledge necessary for men to make well-informed investment decisions.
fsQCA results by gender on
the credit variable.
In Table 11, a total of 6 specific
combinations have been identified that have produced consistency scores ranging
from 0.81395 to 1. These consistency values reveal the strength of the
underlying relationships and reflect the influence of the different conditions
in the study. The average ranges of participation of the study subjects in
these combinations span from 0.164% to as high as 52.951%. In addition, the
probabilities of occurrence recorded in this table range from 0.00164 to
0.57213.
Table
11.
Analysis
of the necessary conditions for the presence of credit in the male gender.
Table
12.
Analysis
of the necessary conditions for the presence of credit in the female gender.
Source: Own elaboration,
with results from FUZZY software. SA: Savings; CR: Credit; IT: Interest; IV:
Investments; RE: Retirement; FS: Financial system standards; IN: Insurance.
In Table 12, 3 specific
combinations have been identified that have yielded consistency scores ranging
from 0.90152 to 1. These consistency values reflect the strength of the
relationships observed in the study. The average ranges of presence of the study
subjects within these combinations ranged from a modest 0.127% to an
outstanding 75.412%. In addition, the probabilities of occurrence recorded in
this table range from 0.00127 to 0.75412.
A comparison of the results
presented in Table 11 and Table 12 provides insight into the differences in
financial behaviour patterns between genders in the study. In the first
combination of variables in Table 12, it is concluded that for the male population
to achieve an adequate level of credit, it is essential that they acquire
knowledge in areas such as investments. Although these participants may have a
low level of under-standing in interest and in insurance, it is observed that
it is crucial that they have an adequate level in retirement and limited
knowledge in financial system standards.
On the other hand, the
first combination of variables in Table 12, it is established that for the
female population of the study to reach an adequate level of credit, it is
fundamental that they acquire knowledge in areas such as investments and
interest. Although these participants may show a low level of understanding in
insurance, retirement, and financial system standards.
These results underscore
the importance of financial education and the complex interactions between the
conditions studied in financial decision making. These findings may have
significant implications for the formulation of strategies and policies aimed
at improving the financial health of different demographic groups.
5.
This research focuses on
the adult population of the departments located in the central region of
Colombia; an area known for exhibiting outstanding economic indicators.
Currently, there is a marked interest on the part of the academic,
governmental, and business community in developing continuous efforts to
promote the improvement of financial education in the general population.
Financial education is a key factor that enables people to acquire the
necessary skills and knowledge to make informed decisions regarding future
financial planning. It also facilitates the effective management of monetary
resources, avoiding the accumulation of unnecessary debt and reducing financial
stress, which contributes to both individual and collective economic
well-being.
Two methodological tools
were used: Principal Component Analysis (PCA) and Comparative Qualitative
Analysis (fsQCA). The PCA proved valuable for its ability to identify and
visualize the essential information contained in the data collected (Chacón et
al., 2021), achieving a reduction from fourteen initial variables to seven,
without im-plying a substantial loss of information, with similar results.
Subsequently, the results of the fsQCA analysis confirmed the existence of
diverse perceptions and competencies in financial education among the subjects
analysed. It should be noted that the purpose of the fsQCA method is not to
demonstrate a direct causal relationship between two variables, but rather to
identify patterns that support the presence of such a causal relationship
(Mejía Trejo, 2021).
The results show that women
tend to focus on areas such as investments, interest, and retirement to achieve
optimal levels of savings, credit, and investment. However, men need broader
and deeper knowledge in various financial areas such as insurance and financial
system standards to achieve optimal levels of savings. These differences
underscore the importance of gender-specific FE and how it influences their
financial decisions. Thus, findings emphasize the need for strategies and
policies that address the different financial needs of demographic groups, with
the goal of improving their financial health.
However, this research has
certain limitations, since the population sample is limited to the departments
of central Colombia and is based on data collected in a specific period. In
terms of implications, the findings of this research suggest the im-portance of
implementing educational programs that promote financial literacy in the adult
population, especially in regions with intermediate economic indicators.
Furthermore, it highlights the need to adapt these programs according to the
differences in perceptions and competencies identified in the analysis.
As for future lines of
research, consideration could be given to exploring how socioeconomic and
cultural factors influence the financial education of the population. In
addition, it would be valuable to delve deeper into the impact of financial
education on concrete decision making, as well as the evaluation of the
long-term effectiveness of financial education programs implemented in
different contexts. These areas of research could provide additional insights
on how to improve the financial management of the population and its
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[1] Magister en
Administración de Organizaciones, (Universidad Pedagógica y Tecnológica de
Colombia), Colombia, Universidad pedagógica y tecnológica de Colombia, Joven
Investigador, Jheisson.abril@uptc.edu.co
[2] Doctor Internacional en Empresa (Universidad de Barcelona),
Colombia, Universidad Pedagógica y Tecnológica de Colombia, Director Escuela de
Posgrados Ciencias Económicas y Administrativas, fabio.blanco01@uptc.edu.co
[3] Magister en
Administración de Empresas, (Universidad Externado de Colombia), Colombia,
Universidad Pedagógica y Tecnológica de Colombia, Director Maestría en
Finanzas, jorge.romero@uptc.edu.co