Managerial Support, Time Constrain and User Pressure on Digital
Technology Adoption
Dyah Sugandini
1
, Helisia Margahana
2
and Istiana Rahatmawati
1
1
Management Department, Economic and Business Faculty,
Universitas Pembangunan Nasional Veteran Yogyakarta, Indonesia
2
Department of Management, Sekolah Tinggi Ilmu Ekonomi Trisna Negara, Indonesia
Keywords: Digital Technology Adoption, Managerial Support, Time Constrain and Pressure from User.
Abstract: This study aims to explore and analyze the factors that influence the adoption of digital technology mediated
by the intention to adopt the technology. The variables used as antecedents of digital adoption are managerial
support, time constraints and pressure from users. The object of this research is the adoption of digital
technology-based social media marketing. This study used a survey of respondents. The number of samples
used is 210 SMEs in the Special Region of Yogyakarta and South Sumatra Indonesia. The data analysis tool
used is Structural Equation Modeling. The results of this study indicate that the model of digital technology
adoption that is influenced by managerial support, time constraints and pressure from users by mediating the
intention to adopt can be accepted.
1 INTRODUCTION
1.1 Background
Industrial Revolution 4.0 has changed the industry
and forced businesses in Indonesia to be involved in
digitalization, and must be prepared to adopt digital
technology (Bettiol, Capestro & Di Maria, 2017;
Morrar, Arman & Mousa, 2017)). On the one hand,
small and medium enterprises in the Special Region
of Yogyakarta are late in applying technology
(Sugandini et al., 2018b).
Digital marketing technology is an option in
marketing products in the digital era. Digital
technology in production, customer service, and sales
can also increase business value (Hood, Brady and
Dhanasri, 2016). The development of the Internet and
its related technologies such as social media
platforms has rapidly changed the way people
communicate with each other. Many companies and
consumers prefer and switch to using online channels
rather than traditional channels (Aspasia & Ourania
2014). The last two decades have shown that more
and more companies have adopted electronic
communications to carry out their operational
activities and provide a platform for e-marketing.
Social media based marketing is something that is
very much needed by the company (El-Gohary 2012;
Ndekwa & Katunzi 2016). But unfortunately, not
many business companies have succeeded in
adopting the technology (Sugandini et al., 2018a).
Thus, research on the success of social adoption of
digital technology-based media is still very important.
Besides for reasons of competition, also because the
business demands of the 4.0 industrial revolution
have forced companies to digitize in all aspects of
their business.
This study aims to analyze the influence of
internal factors from companies in adopting Industrial
4.0 technology. Primarily, this study analyzes the
adoption of digital technology that is influenced by
managerial support, time constraints and pressure
from users. This research is based on the Technology
Organization Environment model (Tomatzky and
Fleicher, 1990), because: Technology-Organization-
Environment (TOE) is an organizational theory used
to understand new technology adoption decisions
(Matikiti and Mpinganjira, 2018). In addition, (1)
TOE can explain that innovation cannot be separated
from organizational conditions, the industrial
environment, and technological developments
(Matikiti & Mpinganjira, 2018). (2) TOE is able to
combine the schemes of technological characteristics,
organizational factors, and elements of the macro
environment (Ifinedo, 2012). (3) TOE can explain
304
Sugandini, D., Margahana, H. and Rahatmawati, I.
Managerial Support, Time Constrain and User Pressure on Digital Technology Adoption.
DOI: 10.5220/0008430603040309
In Proceedings of the 2nd International Conference on Inclusive Business in the Changing World (ICIB 2019), pages 304-309
ISBN: 978-989-758-408-4
Copyright
c
2020 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
that corporate innovation involves 3 contexts, namely
technological context, illustrating that adoption
depends on technology both from outside and inside
the company; organizational context, describing the
scope of the company's business, support of top
management, organizational culture, complexity of
managerial structures measured by centralization,
formalization, differentiation, quality of human
resources, and size of problems; and the
environmental context related to facilities and the
company's operating factors such as competition,
customer pressure, social cultural issues, government
encouragement, and technological infrastructure
(Awa, Ukoha, & Emecheta, 2012).
1.2 Originality/Value
This study analyzes the factors that influence
organizations in adopting technology innovation. It is
different from the research conducted by previous
researchers which emphasize the readiness of users in
information system adoption and emphasizes the ex
post benefits to adoption testing, namely benefits
after adoption occurs or after they estimate the
benefits to be enjoyed after innovation adoption
(Rubas, 2004; Al- Nashmi & Amer, 2014).
2 LITERATURE REVIEW
2.1 Industry 4.0
Industrial Revolution 4.0 is a new industrial
revolution that is activated by the application of
advanced technology (such as information
technology). Industry 4.0 brings new values and
services to customers and organizations, as well as
quality flexibility in production and marketing
systems to meet the demands of new business service
models, which are more innovative and faster.
Digitalization and virtualization are tools to bring
end-to-end services throughout the product life cycle
(starting from product design to recycling) in an
effective and cost-effective way. Industry 4.0 is often
referred to as a smart factory (Dutton, 2014). In smart
factories, virtual copies of the physical world and
decentralized decision making can be developed, and
people can also work together and communicate with
each other in real time (Buhr, 2015). Industry 4.0 has
a global impact that includes: digitalization, the
internet, intelligent knowledge, and systems (Friess &
Ibanez, 2014; Vermesan et al., 2014). Although
industry 4.0 brings high uncertainty, if utilized
properly it will increase the speed of technological
innovation in various aspects of human life. The
industrial revolution has changed buyer-seller
relations, both in Business to business (B2B), in
business to consumer (B2C), and emphasizes the
company's ability to respond quickly to customer
needs (Obal & Lancioni, 2013). Companies must be
closer to their customers and more reactive in
interpreting customer needs. companies must be able
to increase customer involvement at the value chain
level - in designing and developing product designs.
Another recent study highlights how B2B companies
are starting to use digital marketing tools, especially
social media marketing, in the same way as B2C
companies (Wang, Pauleen & Zhang, 2017)
2.2 Technology Organization
Environment Model
Tornatzky & Fleischer (1990) proposed a TOE model
for analyzing factors that could influence the adoption
of new technologies. The TOE model identifies three
important aspects of the organization that influence
the process of adoption and application of
technology, namely, technology, organization, and
environment. The technological context refers to
internal and external technologies that are useful to
the company (Tornatzky & Fleischer 1990). The
technology context can also show the relevant skills
needed to use certain technologies (Dwivedi &
Schneberger, 2011). The organizational context
describes the size and scope of the organization and
management structure (Oliveira & Martins 2011).
The environmental context shows the external aspects
that influence a company's decision to adopt new
technology, which includes competitors, customers,
and government involvement. As such, the TOE
model provides a platform for assessing the
application of social media marketing; in this case, it
highlights both internal (technical knowledge) and
external aspects (such as pressure from competitors)
from an organization that can influence the adoption
of new technology. The TOE model also provides the
framework needed to assess the adoption of new
technologies such as social media (Chao & Chandra
2012; Wamba & Carter 2014).
2.3 Hypothesis
H1: Managerial support affect the intention to adopt
digital technology.
H2: Time constraints affect the intention towards the
adoption of digital technology.
H3: User pressure affect the intention towards the
adoption of digital technology.
Managerial Support, Time Constrain and User Pressure on Digital Technology Adoption
305
H4: Intention to adopt digital technology has an
effect on digital technology adoption.
3 RESEARCH METHODS
This research is a survey. The setting of this research
is the adoption of social media marketing. The study
population consisted of all SMEs in the Special
Region of Yogyakarta and South Sumatra. The
number of samples used is 210 respondents. The data
analysis using SEM-AMOS techniques. According to
Hair et al., (1998) in testing using SEM the
recommended number of samples ranged from 100-
200 samples, but as many as 200 samples were
considered critical for testing with SEM. The sample
units in this study are organizations. This study uses
purposive sampling technique because respondents
must meet the criteria, namely: as individuals
involved in the innovation decision-making process.
The items in the questionnaire were adopted from Al-
Mamary and Shamsuddin (2015), Matikiti et al.,
(2018); Sugandini et al., (2018a) which was adopted
adjusting to the research of digital technology
adoption. This study uses structural equation
modeling (SEM) technique
4 RESULT
4.1 The Characteristic of the
Respondent
All respondents in this study were SMEs managers.
The description of the respondents presented below
contains the demographics of the respondents
consisting of gender, age, level of education, and
length of time the UMKM operates. Description of
respondents about the data of respondents who
participated in the study can be seen in table 1.
Table 1: Characteristics of respondents.
Classification Characteristics %
Gender
Female 43
Male 57
Age
20 – 35 40
36 – 55 60
Educational level
High school 26
Diploma 21,6
Bachelor 52
Master 10,1
Doctor 0,4
The duration of SMEs
operating
< 10 years 19,8
10 years 80,2
4.2 The Test Results for Adoption
Models of Digital Technology
The results of testing the model of digital technology
adoption using SEM can be seen in Figure 1.
Evaluation of the results of testing the model can be
seen in table 2.
Table 2: Evaluation of Criteria for Goodness of Fit Indices.
Criteria Result Critical Value *) Evaluation
Cmin/DF 4.495
1
Cmin/DF 5
Good
Probability 0.058
0,05
Good
RMSEA 0.012
0,08
Good
GFI 0.994
0,90
Good
TLI 0.927
0,95
Good
CFI 0.977
0,94
Good
Figure 1: Digital Technology Adoption Model.
From table 2 and figure 1 above, it can be stated
that the model of digital technology adoption is
acceptable. To test the hypothesis of a causal
relationship between managerial support, time
constraint, user pressure, intention to adopt and
digital technology adoption seen from the CR value
greater than 2 or the probability value is less than 0.05
(p 0.05). Based on these criteria, all paths are
significant. The causal relationship between these
variables is shown in Table 3.
Table 3: Standardize Regression Weight between
Variables.
Path Estimate p C.R. Result
MS IA 0.500 .008 2.654 Supported
TC IA 0.370 *** 4.061 Supported
UP IA 0.709 *** 4.554 Supported
IA Adopt 0.662 *** 5.209 Supported
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5 DISCUSSION
The first hypothesis in this study which states that
managerial support influences the intention of
adopting digital technology is accepted. The
influence of managerial support on the intention to
adopt is positive. This shows that managers in SMEs
studied have been aware of the benefits that can be
achieved by using digital marketing through social
media. SMEs managers also support their business
organizations to use information systems and provide
access to both hardware and software. This access is
given to all Human Resources (HR) and SMEs
business units so that the support provided by these
managers is able to increase the intention to adopt
social media-based digital marketing for the SMEs
they lead. The better the support given by the UKM
manager will increase the intention to use digital
marketing based on social media. The results of this
study support the results of the research of Nguyen
(2009) and Dahnil et al., (2014), which states that the
process of adopting digital technology is influenced
by top management because all innovation decisions
are the authority of top managers. Matikiti et al.,
(2012) also state that the role of managers is
important to support digital technology innovation
(Tarafdar & Vaidya 2006).
The second hypothesis in this study which states
that time constraints influence the intention of
adopting digital technology is accepted. The effect of
time constraints on the intention to adopt is positive.
This shows that managers feel that the application of
social media innovation is not too time-consuming so
the intention to adopt social media marketing will
increase. Proxy time constraints with the time needed
to prepare the system that can support the success of
this innovation, the difficulty of allocating time in
initiating social media marketing applications for his
business, and the perception that social media
marketing spends a lot of time turn out to affect SMEs
intention to adopt social marketing media. Thus it can
be concluded that the faster the time needed by SMEs
to adopt social media marketing, it will increase the
intention to adopt social media marketing. The results
of this study support Braun (2004) which states that
the adoption of digital technology requires time
(Braun 2004). Braun (2004) and Au (2010) also state
that time constraints can improve technology
adoption.
The third hypothesis which states that user
pressure influences the intention to adopt digital
technology is accepted). The results of this study
indicate that the user, in this case, is HR who handles
the marketing of SMEs expecting and demanding that
SMEs are time to apply digital technology in social
media marketing. Marketing through social media
can satisfy customers, and the user is also ready to
adopt digital technology. With the encouragement of
the user, the manager is increasingly convinced to
adopt marketing through social media. The results of
this study support El-Gohary (2012) stating that new
technology is a competitive tool that enables MSMEs
to have a rapid leap in the face of competition.
Wanyoike et al., (2012) stated that the pressure of
competitors and users determine the application of
Internet-based technology.
The fourth hypothesis states that the intention of
adopting digital technology influences digital
technology adoption is accepted. The results of this
study indicate that SMEs will continue to use social
media marketing. SMEs plan to increase social media
marketing budgets and intend to adopt more social
media sites for digital marketing. The increasing
intention to adopt social media marketing means that
SMEs have extensive social media marketing
policies, have guidelines for social media marketing,
SMEs often interact with customers in social media
and SMEs have provided a number of links from
major social networking pages to other important
sites. The intention to use social media has
encouraged SMEs engaged in the manufacturing and
tourism industry in the Special Region of Yogyakarta
and South Sumatra to adopt social media marketing.
The results of this study support the TAM theory
which states that intention is the cause of someone
using a technology (Davis et al., 1989; Davis 1989).
Praveena and Thomas (2014) and Shen (2015) also
state that technology usage levels are influenced by
the intention to use Web technology.
6 CONCLUSIONS
The results of this study indicate that the model of
social media marketing adoption as a form of
adoption of digital technology from SMEs is
accepted. Furthermore, it was explained that the
intention of adopting digital technology was signed to
affect managerial support, time constraint and
pressure from the user. The TOE used as the
theoretical basis in this study is also supported.
Managerial support and user pressure are internal
organizational factors that are found to have an
influence on social media marketing adoption. The
adoption of digital technology analyzed in this study
is the adoption of technology related to digital
marketing based on social media. In this study, it can
show that intention has a dominant influence on
Managerial Support, Time Constrain and User Pressure on Digital Technology Adoption
307
social media adoption. This reinforces the reasoned
action theory of Fishbein & Ajzen (1975), which
states that intention is the most appropriate factor for
predicting behavior. This research also supports TAM
from Davis (1989) who shows that on information
system adoption, intention to use is a predictor of the
adoption of Information systems. Another factor that
is very influential towards adopting intentions is
managerial support. Dahnil et al., (2014); Matikiti et
al., (2012); Al-Mamary & Shamsuddin (2015) in his
research also showed that in adopting IS, manager
support was needed because it was managers who
determined innovation policies for their business
units. Managers also play a role in determining
budgets for technological innovation.
This research is limited to the adoption of digital
marketing innovations based on social media. In
future research, researchers should conduct research
by analyzing the readiness of users (human resources)
available in SMEs in accepting new technology,
because, in SMEs, the knowledge and skills of HR to
adopt new technologies are still lacking (Sugandini et
al., 2018b). In addition, several other factors also
need to be analyzed in predicting adoption of digital
technology innovation, namely consumer pressure
(Matikiti, Mpinganjira & Lombard, 2018) and
training for HR (Al-Mamary and Shamsuddin, 2015).
Matikiti et al., (2018) states that consumer pressure is
very influential on the need for the adoption of digital
technology. Besides that, the pressure of the industrial
revolution 4.0 also requires SMEs to make new
breakthroughs in the field of digital technology
(Ndekwa & Katunzi 2016).
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