INDEPENDENT JOURNAL OF MANAGEMENT & PRODUCTION (IJM&P)
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ISSN: 2236-269X
DOI: 10.14807/ijmp.v8i3.629
IMPACT OF SMARTPHONE ADDICTION ON ACADEMIC
PERFORMANCE OF BUSINESS STUDENTS: A CASE STUDY
Md. Shamsul Arefin
School of Business, Uttara University, Bangladesh
Email: arreefin@gmail.com
Md. Rafiqul Islam
School of Business, Uttara University, Bangladesh
Email: rafiq.mgt2009@gmail.com
Mohitul Ameen Ahmed Mustafi
School of Business, Uttara University, Bangladesh
Email: mustafi@uttarauniversity.edu.bd
Sharmina Afrin
School of Business, Uttara University, Bangladesh
Email: sharmina1970@gmail.com
Nazrul Islam
School of Business, Uttara University, Bangladesh
Email: nazrulku@gmail.com
Submission: 08/02/2017
Revision: 24/02/2017
Accept: 06/03/2017
ABSTRACT
The development of telecom technology has a profound impact on
the academic lives of the students. Smartphone usage became
popular to young generation because of its educational and
entertaining options by using the numerous applications. Among the
young people, students are increasingly using Smartphone. But
excessive Smartphone usage usually makes the students addicted to
it and that impacts on user’s academic performance, daily activities,
physical and mental health, withdrawal tendency, and social
relationships. This study aims at identifying the factors that affect the
level of Smartphone addiction to the students and its impact on their
overall academic performance.
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DOI: 10.14807/ijmp.v8i3.629
A structured questionnaire has been developed to gather data from the students. A
total of 247 questionnaires were collected from the business students of a private
university of Bangladesh. Using Structural Equation Modeling (SEM), data were
analyzed. Results revealed five Smartphone addiction factors such as, positive
anticipation, impatience, withdrawal, daily-life disturbance, and cyber friendship.
Factors like increased impatience and daily-life disturbance were found significantly
related to the academic performance of the business students of Bangladesh. This
study suggests that the students should reduce the intense use of Smartphone for
smoothly doing their daily-life activities.
Keywords: Smartphone Addiction, Structural Equation Modeling, Increased
Impatience, Daily-life Disturbance, Cyber Friendship.
1. INTRODUCTION
Smartphone has become one the important devices used to simplify human
lives and their activities. The usage of smartphone has been increased in recent
years in Bangladesh. The number of Smartphone users in Bangladesh has
increased by 8.20 million in 2015 and the figure will be more than doubled by 2021
(BTRC, 2016). In each year, more than 6.00 million new users are added to existing
smartphone users (ERICSSON MOBILITY REPORT, 2015).
Smartphone combines both computer and mobile phone features into one
device having web browsers that can be connected through mobile internet, and WiFi internet network. It is a source of education and entertainment through the usage
of numerous applications. Smartphone has become more popular to all generations
because of its social networking applications such as Twitter, Facebook that
connects people under one umbrella.
Smartphone users habitually engage in browsing web, checking e-mail,
pocking social networking sites, sending text messages with touch and giant screen
facility. However, the excessive usage of smartphone causes adverse effect on
users who gradually become addicted to it. It has been observed that smartphone
addiction is more severe than the addiction to mobile phones, computers, and even
internet.
Smartphones are generally used by young students, who study in college and
university. Students seem to be vulnerable to technology overuse because of their
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DOI: 10.14807/ijmp.v8i3.629
developmental dynamics, freedom, and lack of responsibility on society and family
(KANDELL, 1998).
As addiction is exhibited in many forms, the internet addiction is one of the
addictions, that has some common features. This study considers internet addiction
to identify the smartphone addiction criteria. Beyond the similarities between internet
and smartphone, the later has some salient features which are absent in preceding
one.
For example, the portability feature of smartphone gives its users comfort and
connects people with whom they interact. Furthermore, users can shape their
smartphones more personal by using various apps that are distinct from others.
Thus, internet addiction is quite distinct from smartphone addiction of the users.
While using smartphone, people become unmindful that cause thousands of
death and faulty activities. Its adverse effect is also seen in work-related tasks,
classroom leanings (HISCOCK, 2004; SELWYN, 2003), and academic performance
(KUSS; GRIFFTHS, 2011). In classroom, students engage in surfing web, social
networking, checking emails and text messages and consequently pay less attention
to their lessons (HISCOCK, 2004; SELWYN, 2003). Moreover, students spend more
time with their smartphone that hampers their regular studies.
It is necessary to identify the criteria of smartphone addiction that is
embedded with the features of smartphone. Hence, this study aims to identify the
smartphone addiction factors specifying the characteristics of smartphone.
Furthermore, the perception of undergraduate students on smartphone addiction
was investigated and the possible impact of this addiction on their academic
performance was evaluated.
The awareness of possible negative consequences of smartphone usage
certainly reduces the overuse of smartphone. Few studies have been articulated the
impact of smartphone addiction on students’ academic performance (e.g., SAMAHA;
HAWI, 2016; HAWI; SAMAHA, 2016), stress (CHIU, 2014) and life satisfaction
(SAMAHA; HAWI, 2016). Therefore, this study attempts to explore the impact of
smartphone addiction on students’ academic performance in tertiary level of
Bangladesh.
2. Background of the Study
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Glanze, Anderson, and Anderson (1998, p. 321) defined addiction as
“compulsive, uncontrollable dependence on a substance, habit, or practice to such a
degree that cessation causes a severe emotional, mental, or physiological reaction.”
Researcher argued differently on applications of addiction concept. Some researcher
emphasized on the application of addiction concept in chemical substances, such as
alcohol or drug (BRATTER; FORREST, 1985; WALKER, 1989; RACHLIN, 1990). On
the other hand, some researchers used this concept in problematic behaviors, such
as internet addiction (YOUNG, 1998; KANDELL, 1998; GRIFFITHS, 1998;
GOLDBERG, 1995), computer game playing (GRIFFITHS; HUNT, 1995), sex
(CARNES, 1983), and pathological gambling (GRIFFITHS, 1990).
Addiction is represented in different forms. Peele (1985) termed addiction as
compulsive or overused activity. Akers (1991) relates addiction to psychological
demand of a drag, which is represented through impatience, withdrawal, and
dependence. Here, the psychological demand is explained by the habitual behavior
represented an addicted person.
The addicted person intends to get relief of pain, anxiety, and other behavioral
demands such as increased power, comfort, control, and self-esteem (PEELE,
1985). Addictive behavior is assumed to enhance mood and emotional stability when
people intended to adjust themselves to different situation.
Technology addiction is becoming prevalent everywhere with various forms
such as Internet addiction, mobile addiction and smartphone addiction. Young (1998)
reported internet addiction having online dependency symptoms such as withdrawal,
impatience, loss of control, disorder in academic, job, and social performance.
Based on Internet Related Addictive Behavior Inventory, Brenner (1997)
reported some daily-life disturbances such as less sleeping time, less time
management, missing meal and other symptoms. Accordingly, Ko et al., (2006)
identified several factors of internet addiction, such as impatience, withdrawal,
compulsive use, and interpersonal problem.
In recent years, the extant research has been shifted from internet addition to
mobile phone addiction. Researcher of mobile phone addiction uses internet
addiction
measures
in
designing
mobile
phone
addiction
instrument.
Underpinning Young and Goldberg’s Internet Addiction tool, most researchers
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developed mobile addiction tool emphasizing withdrawal, impatience, dependency,
and self-control. In a study on adolescents, Koo (2009) identified key important
factors of mobile addiction, such as impatience, withdrawal, daily life disturbances,
and compulsive-impulsive control.
Previous mobile phone research focused on addictive symptoms as the
frequency of usage for calling and text messaging (OZCAN; KOCAK, 2003; WALSH;
WHITE, 2006, 2007), mobile phone involvement (WALSH; WHITE; YOUNG, 2010),
problematic usage (BIANCHI; PHILLIPS, 2005), compulsive usage (JAMES;
DRENNAN, 2005), heavy usage (JENARO; FLORES; GOMEZ-VELA; GONZALEZGIL; CABALLO, 2007), intensive usage (SANCHEZ-MARTINEZ; OTERO, 2009),
maladaptive usage (BERANUY; OBERST; CARBONELL; CHARMARRO, 2009),
mobile dependency (BILLIEUX; VAN DER LINDEN; D’ACREMONT; CESCHI;
ZERMATTEN, 2007) and addictive tendencies for mobile phone use (EHRENBERG;
JUCKES; WHITE; WALSH, 2008; WALSH; WHITE; YOUNG, 2007).
Smartphone addiction and mobile phone addiction are not same. Apart from
mobile phone addiction tool, smartphone addiction demands some salient criteria
based on its numerous distinct features (KWON, et al., 2013). Although, previous
studies have mixed-up these two distinct tools and used interchangeably (HONG, et
al., 2012). Addiction in smartphone deserves distinct tool for on its salient features,
such as multitasking, installing applications, internet usability. People also
personalize their smartphones with various apps.
In a study, Hong et al. (2012) have developed smartphone addiction scale
using mobile phone related addictive items ignoring distinct features of smartphone.
Although some features of mobile phone and smartphone are same, researchers are
emphasizing on the separate tool for smartphone addiction.
Some papers discuss about smartphone addiction on academic arena such
as nursing student (CHO; LEE, 2015; JEONG; LEE, 2015), others emphasize
specific group of generation such as youths (KIM; LEE; LEE; NAM; CHUNG, 2014)
ignoring the addictive behavior of university students (with exception of SAMAHA;
HAWI, 2016; HAWI; SAMAHA, 2016).
Thus, it is necessary to investigate further on academic consequences of
smartphone addiction among the young generation, especially university students.
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On the basis of the smartphone addiction criteria, the addiction level can be
identified. For example, if a user stick with the smartphone usage and fails to reduce
the usage time and feels happy in interaction with virtual friends rather than family
members and friends, it indicates that the user is in addiction.
There are few studies on smartphone addiction. In a study on smartphone
addiction, Cho and Kim (2014) identified gender, average daily using time in a week,
average daily using time in weekend, wrist pain in using smartphone, accident in
using smartphone, sociality, impulsiveness, and Social Networking Sites (SNS)
addiction as significant predictors. They have found 43.3% explained variance of
these factors in smartphone addiction.
Jeong and Lee (2015) studied smartphone addiction on nursing students in
Korea and revealed several influencing factors of smartphone addiction that includes
reading quality, the number of friends, the number of groups involved, academic
achievement, average daily hours of smartphone use, and personal distress. They
reported 17.4% explanatory power of these variables.
Jeong and Lee (2015) like other study (e.g., KIM; KIM; JEE, 2015) in Korea
used Smartphone Addiction Proneness Scale (SAPS) that is developed by the
National Information Society Agency (SHIN; KIM; JUNG, 2011). The SAPS contains
15 items consisting of four sub-domains, such as impatience, withdrawal,
disturbance of adaptive functions, and virtual life orientation.
Following the previous addiction research we incorporate impatience,
withdrawal,
positive
anticipation,
cyberspace-oriented
friendship,
daily-life
disturbance factors as influencing factors to check the smartphone addiction of
undergraduate students. We hypothesize that the smartphone addiction factors
influence students’ academic performance. Therefore, the following hypotheses may
be generated:
• H1: There is an impact of cyber friendship exposed by smartphone addiction
on students’ academic performance;
• H2: There is an impact of daily-life disturbance exposed by smartphone
addiction on students’ academic performance;
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• H3: There is an impact of positive anticipation exposed by smartphone
addiction on students’ academic performance;
• H4: There is an impact of impatience exposed by smartphone addiction on
students’ academic performance;
• H5: There is an impact of withdrawal exposed by smartphone addiction on
students’ academic performance.
In Bangladesh, the mobile phone users are increasing rapidly and a major
portion of the users are smartphone users. Among the users of smartphone, most
users are young adults. Smartphone is becoming more popular among young
generation, especially students.
According
to
Bangladesh
Telecommunication
Regulatory
Commission
(BTRC), the total number of internet subscriber is 66.862 million up to September
2016, of which 62.968 million subscribers use mobile internet. About 80 percent
internet users of Bangladesh are on a single social networking website, Facebook
(BTRC, 2016).
With the rapid growth of smartphone users, the negative consequences of
mobile phone usage are increasing. Usage of mobile phone becomes one of the
death causes when the victims walk and use mobile phone on the rail tracks.
3. METHODOLOGY
This is an empirical study for the identification of the Smartphone addiction
factors of undergraduate students of Bangladesh. Through literature review, 35
independent variables concerning smartphone addiction have been identified and a
questionnaire has been developed based on it. The reliability and validity of the
questionnaire has also been tested.
Academic performance has been used as dependent variable in this study
that is described as class concentration, connecing social network sites during class,
class grades, study work, and overall class performance of the students.
For data collection, structured questionnaire with 5-point scale ranging from 1
(“Strongly disagree”) to 5 (“Strongly agree”) was used. Convenience sampling
method was used for data collection. After data collection, incomplete and biased or
abnormally answered data were discarded thorough scrutinizing process.
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By using SPSS software the reliability of 30 items has been tested and the
Alpha Coefficient was identified as 0.746 which is at the acceptable limit as per
Nunnally (1967 and 1978). To analyze data both descriptive and inferential statistics
were used. A multivariate analysis technique Partial Least Square (PLS) was used to
identify the significant Smartphone addiction factors from the factors identified
through factor analysis. The theoretical framework of smartphone addiction of
students of Bangladesh is shown in Figure 1.
Figure 1: Conceptual Framework of Smartphone Addiction
3.1.
Sample Selection
The sample of this study consisted of students from a private University
situated in Dhaka city of Bangladesh. This study followed convenience sampling and
invited students to deliberately participate in the study. We ensured whether the
students have used the smartphone last twelve months continuously or not.
Because, in the pilot study we found that some students used both mobile
phone and smartphone having different SIMs. Undergraduate students studying first
year to fourth year participated in the study. A total of 247 students were surveyed of
which 54.25% were male and 45.75 % were female. The minimum and maximum
age was 18 and 27 respectively. The demographic profiles of the respondents are
shown in Table 1.
Table 1: Demographic Profile of the Respondent Students
Demography
Gender Difference with Age
Sex
Male
Female
Frequency
Percentage
134
113
54.25
45.75
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Age
3.2.
Below 20 years
48
19.43
21-25 years
168
68.01
25-30 years
31
12.55
Statistical Tools
Both descriptive and inferential statistics were used to analyze the data.
Inferential statistics like Factor Analysis (FA) was used to separate the factors
related to smartphone addiction factors of Bangladeshi students. Partial Least
Square Method was used to identify the significant factors from the factors identified
through factor analysis. SmartPLS is a software with graphical user interface for
variance-based Structural Equation Modeling (SEM) using the Partial Least Squares
(PLS) method. The software can be used in empirical research to analyze collected
data (e.g. from surveys) and test hypothesized relationships (RINGLE, et al., 2015).
3.3.
Reliability Analysis
To analyze the reliability (internal consistency) of the variables, this study
used Cronbach’s alpha coefficient and composite reliability (CR) value. Table 2
shows all Cronbach’s alpha values that are above 0.60 cut off values as suggested
by Nunnally and Berstein (1994). Standardized Cronbach's alpha formula is given
below.
(1)
Here, N is equal to the number of items, C-bar is the average inter-item
covariance among the items, and V-bar equals the average variance.
3.4.
Coefficient of Determination
The reliability also finds that the coefficient of determination R square (R2) is
0.581 for the dependent variable i.e., academic disturbance. This means that the five
factors are daily-life disturbance, positive anticipation, withdrawal, cyber friendship,
and impatience or tolerance moderately explain 58.10% of the variance in
Smartphone addiction factors of students of Bangladesh. The reliability and validity
test results are under the acceptable limits (Table 2).
Table 2: Results of Reliability Tests
Average Variance
Composite
Cronbach's
Discriminant
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1. Cyber Friendship
2. Daily-life Disturbance
3. Positive Anticipation
4. Impatience / Tolerance
5. Withdrawal
Extracted (AVE)
0.603
0.508
0.592
0.613
0.520
Reliability
0.751
0.754
0.743
0.755
0.763
Alpha
0.647
0.639
0.612
0.692
0.742
Validity
0.776
0.713
0.769
0.783
0.721
Generally, a Global Fit measure (GOF) was conducted for path modeling. It is
defined as the geometric mean of average communality and average R2 (especially
endogenous variables) (Chin, 2010) (see the formula). In this study, GOF value was
0.46 (R2= 0.581, average AVE = 0.5674 for overall addiction factors). So, the value
of GOF exceeded the largest cut-off value (0.46) and it was indicated that the
proposed model of this study had better explaining power based on the
recommended value of GOF small= 0.1, GOF medium= 0.25, and GOF large= 0.36
(AKTER et al., 2011).
GOF=
3.5.
(2)
Validity Analysis: Convergent Validity
Whenever many items are utilized to measure a single construct, the item
(indicator) convergent validity should be one of the main concerns to the researcher.
In this article the model was tested for convergent validity to measure the extent to
which different items are in agreement (MACKINNON, 2008).
When all the factor loadings for the items used in the same construct are
statistically significant convergent validity is tested (GERBING; ANDERSON,1988).
In addition, it could also be accessed through factor loadings, composite reliability
and the average variance extracted (HAIR, et al., 1998).
The findings of the model (Table 2) show that the factor loadings for all items
exceeded the recommended value of 0.50 (Hair et al., 1998). Composite reliability
(CR) values in this study are ranged from 0.743 to 0.763 which exceeded the
acceptable value of 0.70 (HAIR, et al., 1998). Thus, the model confirmed adequate
convergent validity.
3.6.
Validity Analysis: Discriminant Validity
The discriminant validity indicates the degree to which the variables of a given
model vary from variables of other variables in the same model (MACKINNON,
2008). To conduct Partial Least Squares (PLS) analysis the important thing for
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discriminant validity is its construct that share more difference with its variables than
that of other constructs in a specific model (HULLAND, 1999).
In this study, the discriminant validity of the instrument has been tested. It has
been evaluated by examining the correlations between the measures of potentially
overlapping constructs. Factor loadings are stronger on their own constructs in the
model and the square root of the average variance extracted for each construct is
greater than the levels of correlations involving the construct (FORNELL; LARCKER,
1981).
The square root of the average variance extracted for each construct is
greater than the items on off-diagonal in their corresponding row and column, thus,
indicating the adequate discriminant validity (Table 2). The inter-construct
correlations demonstrate that every construct shares greater variance values with its
own measures than other measures. Thus, the model confirmed adequate
discriminant validity.
3.7.
Average Variance Extracted
All values of the Average Variance Extracted (AVE) that deals the variance
captured by the indicators relative to measurement error were greater than 0.50 that
indicate acceptability of the constructs (FORNELL; LARCKER, 1981; HENSELER;
RINGLE; SINKOVICS, 2009). Table 2 shows that these indicators satisfied the
convergent validity of the constructs.
4. RESULTS & DISCUSSIONS
4.1.
Results of Factor Analysis
Exploratory factor analysis was used in analyzing the data which is a widely
utilized and broadly applied statistical techniques in social science. The factor
analysis technique has been applied to identify the factors that affect the smartphone
addiction of the business students in Bangladesh.
A total of 35 variables were identified for smartphone addiction of students
through literature review. The variables were categorized into five factors which were
found from rotated factor matrix analysis (Table 3). The factors are: (i) Daily-life
Disturbance, (ii) Positive Anticipation, (iii) Withdrawal, (iv) Cyber Friendship, and (v)
Impatience or Tolerance.
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4.1.1. Daily-life Disturbance
This factor includes variables like: “Missing planned works hard time
concentrating in class, Felling tired and lacking adequate sleep”, “Decreasing
relationship with family”, “Feeling pain in the wrists”, etc. which are the major
components of daily-life disturbances.
It is the most important factor concerned with smartphone addiction of the
business students in Bangladesh as it contains highest eigenvalue. This indicates
that the use of smartphone is not only the concern of the academic performance but
also disturbes the family relationhsips, planned work, on-time show up in class and
physical soundness.
4.1.2. Positive Anticipation
The second important factor of smartphone addiction is positive anticipation
that includes the variables like “Feeling pleasant or excited”, “Feeling confident”,
“Being able to get rid of stress, life would be empty without my Smartphone”, etc.
These are found to be the major components of positive anticipation.
4.1.3. Withdrawal
The third important smartphone addiction factor is withdrawal that includes
variables like “Feeling impatient and fretful”, “Bringing my smartphone to the toilet”,
“Feel anxious about not being able to receive important calls”, “Can’t stop using my
Smartphone”, etc. These are the major components of withdrawal.
4.1.4. Cyber Friendship
This factor includes variables like “relationships with my smartphone buddies
are more intimate”, “Constantly checking my Smartphone”, “Checking SNS sites”,
etc. which are the major components of cyber friendship.
4.1.5. Increased Impatience or Tolerance
This factor includes variables like “Always thinking that I should shorten my
Smartphone use time”, “Feel the urge to use my smartphone”, “I spend my break
time, thinking -just give me some more minutes” etc. which are the major
components of impatience. This indicates that the use of smartphone increases
impatience among the students for doing their regular activities as it consumes most
of their valuable times.
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Table 3: Smartphone Addiction Factors of the Business Students
Factors
Cyber Friendship
Daily-life Disturbance
Positive Anticipation
Impatience/Tolerance
Withdrawal
4.2.
Outer
Loadings
Items
Relationships with
Smartphone buddies are
more intimate
Checking SNS sites right
after waking up
Relationship with family
members is decreasing
Never give up using
Smartphone even if it hurts
everyday life
Feeling pain in the wrists
or at the back of the neck
Feeling pleasant or excited
while using a Smartphone
Feeling confident while
using a Smartphone
Used Smartphone for
longer than intended
Thinking just give me some
more minutes to use
smartphone
Feeling impatient and
fretful when not holding
Smartphone
Bringing Smartphone to
the toilet
Lacking adequate sleep
due to smartphone use
t-value
CR
AVE
Alpha
0.647
0.751
0.603
VIF
0.707
5.603
0.840
8.343
1.046
0.606
8.434
1.202
0.785
32.323
0.736
26.085
0.730
6.666
0.639
0.754
0.508
1.046
1.211
1.080
1.035
0.612
0.743
0.592
0.806
9.133
1.035
0.652
6.755
1.063
0.894
19.717
0.779
12.202
0.692
0.755
0.613
1.063
1.152
0.742
0.763
0.520
0.755
14.348
1.183
0.619
6.454
1.113
Results of Multivariate Analysis - Partial Least Squares (PLS)
A multivariate analysis technique like Structural Equation Modeling (SEM), by
using ‘SmartPLS’, has been used to identify the significant smartphone addiction
factors from the factors identified through factor analysis. Path diagram of
smartphone addiction factors of business students of Bangladesh suggested that the
disturbance of daily-life activities (β=1.123) has the strongest effect on student’s
academic performance.
The
hypothesized
path
relationships
between
daily-life
disturbance,
impatience and academic disturbance of the students are highly significant at 1%
level of significance. This is due to direct link with the academic affairs of the
students. On the other hand, the cyber friendships, positive anticipation, and
withdrawal factors are not significantly related to academic disturbance of the
students (Figure 2). The reasons might be attributed by the adaptation with the new
technology and the satisfaction of the students.
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Figure 2 also shows relationships of the variables constituted the smartphone
addiction factors and their relative importance, relationships with the factors, and the
overall students’ academic performance of the students of Bangladesh.
Figure 2. Relationships of Smartphone Addiction Factors with the Academic
Performance of the Students
The path coefficients of the factors concerned with smartphone addiction
factors of students show that daily-life disturbance is the most important factor of
academic performance due to smartphone addiction (β=1.123) (Table 4).
Table 4: Path Coefficient of the Smartphone Addiction Factors
Original
Sample
(O)
Path Coefficients
Cyberspace-oriented
Friendship ->Academic
performance in school and
its influence
Daily life Disturbance >Academic performance in
school and its influence
Positive Anticipation >Academic performance in
school and its influence
Impatience ->Academic
performance in school and
its influence
Withdrawal ->Academic
performance in school and
its influence
R Square
Sample
Mean
(M)
Standard
Deviation
(STDEV)
T Statistics
(|O/STDEV|)
-0.004
-0.004
0.009
0.503
0.615
1.123
1.124
0.034
33.200
0.000
P
Values
Supported/
Not
Supported
Not
Supported
VIF
1.185
Supported
-0.008
-0.007
0.009
0.883
0.378
-0.260
-0.257
0.043
6.115
0.000
0.008
0.006
0.010
0.773
0.440
1.752
Not
Supported
1.165
Supported
1.588
Not
Supported
1.431
0.581
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R Square Adjusted
0.559
In Table 4, all the Variance Inflation Factor (VIF) values are less than 3 that
range from 1.165 to 1.752, which indicates there is no Multi Co-linearity problem.
The hypothesis testing was carried out by examining the path coefficients
(beta) between latent constructs and their significance. To test the significance of the
path coefficients the bootstrapping technique was utilized with a re-sampling of 500
(e.g., BRADLEY et al., 2012).
The R2 value of endogenous latent construct illustrates the predictive
relevance of the model. The R2 value is 0.581. The findings show that the
hypotheses H2, and H4 were rejected on the basis t-values which is higher than 3.3 at
the 0.1% level of significance but H1, H3 and H5 were not rejected the null hypothesis
on the basis of t-values which is not more than 1.96 at the 5% level of significance.
This is also depicted in Figure 2. The outcome of each hypothesis is mentioned into
the conclusions. Table 5 presents the results of the hypotheses testing.
Table 5: Results of the Relationships
H1
H2
H3
H4
H5
There is an impact of cyber friendship exposed by
addiction on students’ academic performance
There is an impact of daily-life disturbance exposed by
addiction on students’ academic performance
There is an impact of positive anticipation exposed by
addiction on students’ academic performance
There is an impact of impatience exposed by smartphone
students’ academic performance.
There is an impact of withdrawal exposed by smartphone
students’ academic performance
smartphone
NotSupported
smartphone
Supported
smartphone
Not Supported
addiction on
Supported
addiction on
Not Supported
5. CONCLUSIONS AND RECOMMENDATIONS
Five factors concerning smartphone addiction of the business students of
private university in Bangladesh were identified in this study. The factors are positive
anticipation, increased impatience or tolerance, withdrawal, daily-life disturbance,
and cyber friendship. Although, all the factors identified in this study are not equally
significant but as a whole those are the significant factors that determine the
addiction of smartphone use of business students and has impact on their academic
performance.
As longer time is spent on the smartphone by the students, reading quantity
and participation in group activities concerning academic assignments are reduced
(JEONG; LEE, 2015; SAMAHA; HAWI, 2016). The relationships between the uses of
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smartphone and classroom listening is significant for good academic performance
(JUMOKE; OLORUNTOBA; BLESSING, 2015).
This study identified that the regular academic performance of the students
are hampered by the extensive use of smartphone that contradicts the findings of the
research conducted by Ezemenaka (2013). Students know that the excessive use of
smartphone is harmful to their body and mind. Sometimes, the use of smartphone is
uncontrollable to the students (JUMOKE; OLORUNTOBA; BLESSING, 2015).
They, sometimes, try to shorten their smartphone usage but are unable to do
it due to addiction. This study found that students use their smartphone longer than
they plan. Sometimes, they want to engage in smartphone usage time beyond the
regular usage. Students use smartphone in the break-time of classes when they are
supposed to relax.
The addictive behavior of smartphone usage also hampers students’
concentration to their studies (HISCOCK, 2004; SELWYN, 2003; SAMAHA; HAWI,
2016; HAWI; SAMAHA, 2016). Students feel anxious when they do not have
smartphone with them. This study found that they bring smartphone in the toilet even
if they are hurry to get there. Some students even use their smartphone until the late
night. These can cause tension and poor academic performance of the students.
It is commonly known that smartphones are used in the daily-life of the
people. But addiction to smartphone causes disturbances of the daily-life activities.
This study found that due to excessive use of smartphone, the relationships of the
students with the family members are hampered.
They cannot give enough time to their families due to extensive use of
smartphone. When student gossip with family members, they simultaneously
communicate with their virtual friends even if they are in the middle of the discussion.
This causes pain in the wrists or at the back or neck of the students.
The major findings of this study are concerned with the disturbance of the
daily life activities and the increased impatience of the students due to intense use of
smartphone. Smartphone addiction not only the cause of poor academic
performance but also disturbs daily-life activities of the students. It creates
impatience among the students for doing their daily-life activities.
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Based on the findings, it is recommended that the students should reduce the
use of smartphone and addiction to it and priorities their day-to-day tasks
(HISCOCK, 2004; SELWYN, 2003). However, this study did not include the factors
that are not related to the use of smartphone that also create addiction such as,
availability of the smart phones and its services, low cost of the internet connection,
extensive use of the phones by all the classes of the people even street beggar, and,
of course, demonstration effect.
This study only concentrates on the business students of a private university
of Bangladesh. The results might be different in case of other students like science,
engineering, arts, and social sciences of the other Universities of Bangladesh.
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