Abstract
Technological innovations such as blended learning (BL) are rapidly changing teaching and learning in higher education, where BL integrates face to face teaching with web based learning. Thus, as polices related to BL increases, it is required to explore the theoretical foundation of BL studies and how BL were adopted and implemented in relation to students, lecturers and administration. However, only fewer studies have focused on exploring the constructs and factors related to BL adoption by considering the students, lecturers and administration concurrently. Likewise, prior research neglects to explore what practices are involved for BL implementation. Accordingly, this study systematically reviews, synthesizes, and provides meta-analysis of 94 BL research articles published from 2004 to 2020 to present the theoretical foundation of BL adoption and implementation in higher education. The main findings of this study present the constructs and factors that influence students, lecturers and administration towards adopting BL in higher education. Moreover, findings suggest that the BL practices to be implemented comprises of face-to-face, activities, information, resources, assessment, and feedback for students and technology, pedagogy, content, and knowledge for lecturers. Besides, the review reveals that the ad hoc, technology acceptance model, information system success model, the unified theory of acceptance and use of technology, and lastly diffusion of innovations theories are the mostly employed theories employed by prior studies to explore BL adoption. Findings from this study has implications for student, lecturers and administrators by providing insights into the theoretical foundation of BL adoption and implementation in higher education.
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1 Introduction
Blended learning (BL) has increasingly been utilized in higher education as it has the advantages of both traditional and online teaching approaches (Poon 2014). Findings from prior studies Edward et al. (2018); Ghazal et al. (2018) indicated that BL approach enhances students’ learning engagement and experience as it creates a significant influence on students’ awareness of the teaching mode and learning background. BL moves the emphasis from teaching to learning, thus enabling students to become more involved in the learning process and more enthused and, consequently, improves their perseverance and commitment (Ismail et al. 2018a). Poon (2014) concluded that BL is likely to be developed as the leading teaching approach for the future as one of the top ten educational trends to occur in the twentyfirst century. Poon (2014) started that the question is not whether higher education should adopt BL but rather the question should be aligned to the practice that should be included for successfully BL implementation.
The phrase blended learning was previously associated with classroom training to e-learning activities (Graham et al. 2013). Accordingly, BL is the integration of traditional face-to face and e-learning teaching paradigm (Wong et al. 2014). BL employs a combination of online-mediated and face-to-face (F2F) instruction to help lecturers attain pedagogical goals in training students to produce an algorithmic and constructive rational skill, aids to enhance teaching qualities, and achieve social order (Subramaniam and Muniandy 2019). BL entails the combination of different methods of delivery, styles of learning, and types of teaching (Kaur 2013). BL is frequently used with terms such as integrated, flexible, mixed mode, multi-mode or hybrid learning (Garrison and Kanuka 2004; Moskal et al. 2013). BL comprises integration of various initiatives, achieved by combining of 30% F2F interaction with 70% IT mediated learning (Anthony et al. 2019). Similarly, Owston et al. (2019) recommended that a successful BL delivery comprises of 80% high quality online learning integrated with 20% classroom teaching that is linked to online content. Respectively, BL is the combination of different didactic approaches (cooperative learning, discovery learning expository, presentations, etc.) and delivery methods (personal communication, broadcasting, publishing, etc.) (Graham 2013; Klentien and Wannasawade 2016).
Research has found that online systems possess the capability of providing platforms for competent practices in offering alternative to real-life environment, offering students a usable avenue for learning which support students to improve the quality of learning (Wong et al. 2014; Ifenthaler et al. 2015). When prudently and accurately deployed, IT can be deployed to achieve a reliable learning experience with practical relevancy to engage and motivate students (Tulaboev 2013). Thus, BL facilitates students to not only articulate learning but to also test on the knowledge they have attained through the semester (Aguti et al. 2013). Moreover, BL offers flexibility for students and lecturer, improved personalization, improved student outcomes, encourages growth of autonomy and self-directed learning, creates prospects for professional learning, reduced cost proficiencies, increases communication between students and lecturer, and among students (So and Brush 2008; Spring et al 2016). BL emboldens the reformation of pedagogic policies with the prospective to recapture the ideals of universities (Heinze and Procter 2004). BL seeks to produce a harmonious and coherent equilibrium between online access to knowledge and traditional human teaching by considering students' and lecturers' attitudes (Bervell and Umar 2018). BL therefore remains a significant pedagogical concept as its main focus is aligned with providing the most effective teaching and learning experience (Wang et al. 2004).
BL offers access to online resources and information that meet the students’ level of knowledge and interest. It supports teaching conditions by offering opportunities for professional collaboration, and also improve time adeptness of lecturers (Guillén-Gámez et al. 2020; Owston et al. 2019). BL proliferates students’ interest in their individual learning progression (Chang-Tik 2018), facilitates students to study at their own speed, and further organize students for future by providing real-world skills (Ustunel and Tokel 2018), that assist students to directly apply their academic skills, self-learning abilities, and of course computer know how into the working force (Güzer and Caner 2014; Yeou 2016). As pointed out by Al-shami et al. (2018) BL improves social communication in university’ communities, improves students’ aptitude and self-reliance, increased learning quality, improve critical thinking in learning setting and incorporate technology as an operative tool to convey course contents to students (Bailey et al. 2015; Baragash and Al-Samarraie 2018a).
Existing studies mainly considered BL in the context of students and lecturers in improving teaching and learning. Prior studies paid attention to BL adoption towards improving the quality of student learning and lecturers teaching. But only fewer studies explored BL implementation process as well explored administrators’ who initiate policies related to BL adoption in higher education. To fill this gap in knowledge, this current study aims to systematically reviews and synthesizes prior studies that explored BL adoption and implementation related to students, lecturers and administration based on the following six research questions:
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RQ1 What are the research methods, countries, contexts, and publication year of selected BL studies?
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RQ2 Which BL studies proposed model related to BL adoption in higher education?
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RQ3 Based on RQ2 what are the theories, location, and context of the selected BL studies?
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RQ4 Based on RQ3 what are the constructs of the identified theories employed to explore BL adoption in higher education?
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RQ5 What are the constructs and factors that influence students, lecturers and administration towards adopting BL?
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RQ6 What are the practices involved for BL implementation in higher education?
Therefore, to address the research questions this study review and report on BL adoption model (constructs and factors), BL implementation processes, prior theories employed, and related studies that were mainly focused on BL adoption in relation to students, lecturers, and administrator’s perspective. The remainder of the article is organized as follows. Section 2 is the literature review. Section 3 is the methodology and Sect. 4 describes the findings and discussion. Section 5 is the implications and Sect. 6 is the conclusion, limitation, and future works.
2 Literature Review
Learning in higher education refers to process of acquiring new knowledge, skills, intellectual abilities which can be utilized to successfully solve problems. The deployment of technologies in teaching and learning is not a new paradigm in higher education (Poon 2012). Undeniably, in the twentyfirst century students are familiar with digital environments and therefore lecturers are encouraged to use Information Technology (IT) in teaching to stimulate and employ students’ learning (Ifenthaler and Widanapathirana 2014; Edward et al. 2018). Teaching and learning with the aid of BL practices have become a common teaching approach to involve students in learning (Garrison and Kanuka 2004). As such, BL has progressed to incorporate diverse learning strategies and is renowned as one of the foremost trends in higher education (Ramakrisnan et al. 2012). BL provides pedagogical productivity, knowledge access, collective collaborations, personal development, cost efficiency, simplifies corrections and further resolves problems related to attendance (Mustapa et al. 2015). Findings from prior studies (Wai and Seng 2015; Nguyen 2017) suggested that BL offers benefits and is also productive than traditional e-learning.
BL in higher education is a prevailing approach to create a more collaborative and welcoming learning environment to curb students' anxiety and fear of making mistakes (Wong et al. 2014). Adopted in universities in the late 1990s (Edward et al. 2018), it found wider acceptance in the 2000s with many more university courses offered in blended mode (Graham et al. 2013). BL employs a combination of online-mediated and face-to-face instruction to help lecturers attain pedagogical goals in training students to produce algorithmic and constructive rational skills, aids to enhance teaching qualities and achieve social order (Kaur 2013). Some researchers [such as Bowyer and Chambers (2017)] argued that technology integration in teaching promotes learning via discovery. And adds interactivity and more motivation, leading to better feedback, social interactions, and use of course materials (Sun and Qiu 2017).
As seen in Fig. 1, BL implementation usually involves F2F and other corresponding online learning delivery methods. Normally, students attend traditional lecturer-directed F2F classes with computer mediated tools to create a BL environment in gaining experiences and also promote learners’ learning success and engagement (Moskal et al. 2013; Baragash and Al-Samarraie 2018b). In fact, Graham (2013); Graham et al. (2013) projected that BL will become the new course delivery model that employs different media resources to strengthen the interaction among students. BL provide motivating and meaningful learning through different asynchronous and synchronous teaching strategies such as forums, social networking, live chats, webinars, blog, etc. that provides more opportunities for reflection and feedback from students (Graham 2013; Moskal et al. 2013; Dakduk et al. 2018).
BL is facilitated with virtual learning management systems such as Blackboard WebCT, Moodle, and other Web 2.0 platforms which are employed to facilitate collaborative learning between students and lecturers (Edward et al. 2018; Anthony et al. 2019). Accordingly, Aguti et al. (2014) stated that 80 percent of institutions in developed regions dynamically employ BL approach to support teaching and learning, with 97 percent of institutions reported to be deploying one or more forms of IT mediated learning. Figure 1 indicates that BL instructional design and type of delivery includes online activities such as wordbook, reading materials, online writing tool, message board, web links, tutorials, discussion forum, reference material, simulations, quizzes, etc. (Anthony et al. 2019). Conversely, F2F teaching involves lectures, laboratory activities, assessment skill practices, presentation, individual/group, and discussions carried out by the lecturer to examine the learning performance of students (Sun and Qiu 2017).
There has been rapid development in BL adoption focused on improving teaching and learning outcome, thus prior studies assessed the effectiveness of BL by comparing the traditional teaching and online teaching (Van Laer and Elen 2020). However, there are limited studies that investigated the theoretical foundation of BL adoption and implementation for teaching and learning (Wai and Seng 2015), and very limited studies focused on investigating administrative adoption related to BL. To this end, Garrison and Kanuka (2004) mentioned that it is important to examine BL adoption from the lens of institutions administrators. Researchers such as Wong et al. (2014) argued that while there are studies in BL, research that focused on BL adoption and implementation are limited, and that this is a gap to be addressed. Given the above insights, it is felt that more BL based research is needed to guide policy makers to strategically adopt BL in higher education towards improving learning and teaching. Therefore, this study systematically reviews and synthesizes prior studies that explored students, lecturers and administration adoption and implementation of BL.
3 Methodology
It is important to carry out an extensive literature review before starting any research investigation (Anthony et al. 2017a). Literature review finds research gaps that exists and reveals areas where prior studies has not fully explored (Anthony et al. 2017b). Likewise, a systematic literature review is a review that is based on unambiguous research questions, defines and explores pertinent studies, and lastly assesses the quality of the studies based on specified criteria (Al-Emran et al. 2018). Accordingly, this study followed the recommendation postulated by Kitchenham and Charters’s (2007) in reporting a systematic review. Therefore, the research design for this study comprises of five phases which includes the specification of inclusion and exclusion criteria, presenting of search strategies and data sources, quality assessment, and data coding and analysis, and lastly findings. The research design of this review study is shown in Fig. 2.
Figure 2 depicts the research design for this study, where each phase is presented in the subsequent sub-sections.
3.1 Inclusion and Exclusion Criteria
The inclusion and exclusion criteria (Table 1) and quality assessment criteria (see Table 2) are employed as the sampling/selection methods used to select the articles involved in this study. The inclusion and exclusion criteria are defined in Table 1.
3.2 Search Strategies and Data Sources
The articles involved in this study were retrieved through a comprehensive search of prior studies via online databases which included Google Scholar, ScienceDirect, Emerald, IEEE, Sage, Taylor & Francis, Inderscience, Springer, and Wiley. The search was undertaken in December 2018 and March 2020. The search terms comprise the keywords ((“blended learning practices” OR “blended learning variables” OR “blended learning factors” OR “blended learning constructs”) AND (“implementation” OR “adoption” OR “approach” OR “model” OR “framework” OR “theory”)) AND (“components” OR “elements”)). The mixture of the keywords is a crucial step in any systematic review as it defines articles that will be retrieved.
Figure 3 depicts the Preferred Reporting Items for Systematic Reviews and Meta-Analysis (PRISMA) flowchart which was employed for searching and refining of the articles as previously utilized by Al-Emran et al. (2018). The search output presented 388 articles using the above stated keywords. 93 articles were establish as duplicates, as such were removed. Therefore, resulted to 302 articles. The authors checked the articles against the inclusion and exclusion criteria and added 12 new articles based on snowballing techniques which was used to get more articles from the references of 82 studies. Accordingly, 94 research articles meet the inclusion criteria and were included in the review process. Additionally, four studies (Kitchenham and Charters 2007; Anthony et al. 2017, b; Al-Emran et al. 2018) were included in the reference since they discuss SLR process.
3.3 Quality Assessment
One of the vital determinants that are required to be checked along with the inclusion and exclusion criteria is the quality assessment. To this end, a quality assessment checklist which comprises of “10” criteria was designed and employed as a means for evaluating the quality of the studies selected (n = 94) (see Fig. 3). The quality assessment checklist is shown in Table 2. The checklist was adapted from recommendation from (Kitchenham and Charters 2007). Accordingly, the question was measured based on a 3-point scale which ranges from, 1 point being assigned for “Yes”, 0 point for “No”, and 0.5 point for “Partially”. Hence, each article score ranges from 0 to 10, where a study that attains higher total score, possess the capability to provide addresses the specified research questions. Table 11 in appendix shows the quality assessment results for all the 94 studies. Respectively, it is apparent that the selected studies have passed the quality assessment, which indicates that all the articles are eligible to be utilized for further meta-analysis.
3.4 Data Coding and Analysis
The characteristics related to the research methodology outcome were coded to include purpose of research, (BL adoption constructs and factors or BL implementation practice), research approach (e.g., literature review, conceptual, survey questionnaire, case study interviews, or experimental), country, context (e.g., student, lecturer and/or administrator), and model/framework or theory employed (e.g., Technology Acceptance Model (TAM), information system success model, the Unified Theory of Acceptance and Use of Technology (UTAUT), Diffusion of Innovations theory (DoI), Adhoc, etc.). In between the data analysis procedure, the articles that did not directly describe BL adoption model variables and implementation practices were excluded from the synthesis.
4 Findings and Discussion
Based on the selected 94 studies published in regard to BL adoption and implementation from 2004 to 2020, this review reports the findings of this systematic review in relation to the specified six research questions.
4.1 RQ1: What are the Research Methods, Countries, Contexts, and Publication Year of Selected BL Studies?
With regard to the first research question, the findings for distribution of studies related to BL adoption and implementation in higher education based on year of publication is presented in Fig. 4. As shown, the studies are ranged from 2004 to 2020. Findings from Fig. 4 indicate that there seems to be an increase in studies on BL over the last few years as seen from 2004 to 2020, with 2018 being the highest with publications on BL adoption and implementation with 17 studies published. It is evident that the frequency of these publications in 2018 could be accredited to the fact that the intensity of BL implementation in 2018 across higher education has improved mainly in developed and developing countries across the world.
Considering the research methodology applied in the 94 BL studies, findings from Fig. 5 show that questionnaire survey is the most employed method for data collection (N = 49, 62%), followed by studies that were conceptual by design with (N = 14, 16%). Next, is studies that adopted mixed method both survey and interview with (N = 11, 13%) and studies that are qualitative in nature as case study/interview with (N = 8, 9%). For the remaining studies (N = 5, 5%) employed experimental using LMS dataset, (N = 4, 4%) conducted literature review, and lastly only (N = 1, 1%) study deployed a mixed experimental and survey approach. These findings are analogous with the prior review studies conducted by (Holton III et al. 2006; Kumara and Pande 2017) who discussed that quantitative studies were the main approach employed in prior BL studies. Furthermore, this finding is consistent with the fact that surveys are considered as the most suitable tool to collect data in validating constructs/factors in developed BL adoption model in investigating students and lecturers’ perceptions towards BL practice in higher education (Ghazali et al. 2018; Ismail et al. 2018b).
With regard to the 94 BL studies country distribution, findings from Fig. 6 shows research related to BL adoption in higher education. Accordingly, most of the studies are conducted in Malaysia (N = 28), this is based on the fact that the Malaysia ministry of education initiated an educational blueprint for all higher education to adopt BL from 2015 to 2022. Therefore, there were several studies that proposed models to examine BL adoption in universities in Malaysia context. Next, research articles related to BL adoption was carried out in United States of America with (N = 11), and Australia (N = 10) and United Kingdom with (N = 7), followed by Turkey with (N = 4), Canada, Indonesia, and Spain with (N = 3) respectively. Additionally, Fig. 6 indicates that (N = 2) studies were conducted in Norway, Dubai, UAE, India, Singapore, Saudi Arabia, and Taiwan. Lastly, (N = 1) study was each conducted in Greece, Germany, Philippines, South Korea, The Netherlands, Thailand, Vietnam, Belgium, Bulgaria, China, Poland, Israel, Morocco, Colombia, Sri Lanka, and Ghana. This finding also suggest that most of the first researchers of BL adoption such as Garrison and Kanuka (2004), Graham et al. (2013), Poon (2014) and Porter and Graham (2016) are from USA, Canada, Australia and UK who are one of the most cited researchers in BL practice in higher education as compared to other regions.
Considering the selected studies context distribution of BL adoption in higher education findings from Fig. 7 indicate that (N = 59, 62%) studies mainly examined BL adoption by considering students perspective. This finding is consistent with results from prior studies (Wai and Seng 2013; Rahman et al. 2015) which advocated for the need for developing a model of measuring student satisfaction, perception (So and Brush 2008), commitment (Wong et al. 2014), effectiveness (Wai and Seng 2015) in the BL. In addition, findings from Fig. 7 reveal that (N = 9, 10%) studies mainly examined BL adoption by considering lecturers perspective. This finding is very consistent with results from the literature (Wong et al. 2014; Zhu et al. 2016), where the authors mentioned the need for a study to investigate the current level of adoption of BL among the academicians to identify the factors that influence BL adoption.
Furthermore, the findings suggest that (N = 7, 8%) studies mainly examined BL adoption by considering administrative perspective. Similarly, this finding is analogous with results from qualitative studies conducted by prior researchers (Koohang, 2008; Graham et al. 2013; Porter et al. 2016; Bokolo Jr et al. 2020) which revealed that there are limited studies that explored policy and governance issues related BL adoption. Additionally, findings from Fig. 7 show that (N = 10, 10%) studies that concurrently examined BL in the context of students and lecturers, this aligns with findings presented by Brahim and Mohamad (2018); Edward et al. (2018) where the authors called for the need for empirical evidence on BL implementation to improve academic activities. Lastly, (N = 9, 10%) studies investigated BL in the context of student, lecturer, and administrators. This finding suggests that there are limited studies that examine students, lectures and administrators simultaneously as mentioned by (Machado 2007; Wong et al. 2014; Bokolo Jr et al. 2020). Accordingly, this review presents the constructs and factors that influence BL adoption from the perspective of students, lecturers, and administrators in higher education.
4.2 RQ2: Which BL Studies Proposed Model Related to BL Adoption in Higher Education?
Several studies have been carried out directed towards investigating the adoption of BL in higher education. Thus, Table 3 shows that out of the selected 94 studies only 51 studies developed models to examine BL where each study is compared based on the authors, contribution, purpose and identified factors/attributes and methods.
Based on the selected 51 BL studies that develop a research model to examine BL adoption in higher education, the review indicates that none of the studies is concerned with BL practices to be implemented in higher education, they are mainly concerned about BL adoption factors/attributes. As seen in Fig. 8 out of the reviewed 51 BL studies that developed models to examine BL adoption. The results suggest that survey questionnaire was most employed, whereas experimental and survey was least employed to validate the developed models. Also, Fig. 9 presents the clustered of issues addressed in the reviewed 51 BL studies. The identified factors/attributes derived from the reviewed 51 BL studies are presented in Fig. 10 and further discussed in Tables 6, 7 and 8.
4.3 RQ3: Based on RQ2 What are the Theories, Location, and Context of the Selected BL Studies?
Among the selected 51 BL studies, this sub-section presents prior theories that have been utilized to examine BL adoption in higher education. Moreover, the location and BL context of the 51 BL studies are presented as seen in Table 4.
Findings from Table 4 and Fig. 11 indicate that out of the reviewed 51 BL studies, (N = 37, 72%) studies investigated BL by considering the students context similar to previous studies Tuparova and Tuparov (2011); Roszak et al. (2014), while (N = 2, 4%) studies examined BL by considering only lecturers’ context. Besides, (N = 4, 8%) studies only examined administration context analogous with prior study Mercado (2008), while another (N = 6, 12%) studies examined BL by considering the students and lecturers context similar to prior studies Maulan and Ibrahim (2012); Mohd et al. (2016). Lastly, (N = 2, 4%) studies examined BL by considering the students, lecturers and administration context analogous to research conducted by Mercado (2008); Anthony et al. (2019). Hence, it is evident that there are fewer studies that investigated BL adoption by concurrently exploring students, lecturers and administration viewpoint. Thus, this review aims to address this limitation by reviewing theoretical foundation of BL adoption and implementation in the lens of students, lecturers and administration.
4.4 RQ4: Based on RQ3 What are the Constructs of the Identified Theories Employed to Explore BL Adoption in Higher Education?
This sub-section reviews the constructs of theories employed by the selected 51 BL studies in developing their model as seen in Table 5.
Based on Tables 4 and 5, Fig. 12 depicts the frequency of how many times each theory has been employed by prior BL studies. Findings from theories employed show that ad hoc is the most employed approach with (N = 23, 42%) studies, followed by TAM with (N = 7, 13%) studies, IS success model and UTAUT with (N = 4, 7%) studies individually, and DoI with (N = 3, 5%) studies, whereas the other theories were adopted by (N = 1, 2%) study respectively.
4.5 RQ5: What are the Constructs and Factors that Influence Students, Lecturers and Administration towards Adopting BL?
The constructs and factors related to the adoption of BL by students, lecturers and administrators are shown in Fig. 13 and described in Table 6.
Tables 6, 7 and 8 describes the derived constructs for students, lecturers, and administration related to BL adoption in higher education. BL adoption cannot be attained by only integrating online and face-to-face teaching modes (Azizan 2010). Thus, there is need to identify the constructs that influence students, lecturer, and administration in adopting BL practices to be implemented that play an important role in ensuring successful BL experience in higher education (Graham 2013; Güzer and Caner 2014). On this note, academicians such as Machado (2007); Wong et al. (2014); Kumara and Pande (2017); Bokolo Jr et al. (2020) highlighted that successful implementation of BL initiatives requires an alignment between administrative, lecturers, students’ educational goals. According to Dakduk et al. (2018); Anthony et al. (2019) it is importance to examine constructs related to human computer interaction to assess which constructs contributes to realizing the desired teaching and learning objectives while engaging the lecturers and students. Therefore, this study explores the BL practices to be implemented by students and lecturers in higher education as seen in Figs. 14 and 15.
4.6 RQ6: What are the Practices Involved for BL Implementation in Higher Education?
The practice to be carried out by students for implementing BL in higher education is shown in Fig. 14.
Figure 14 depicts BL practice implementation for students in higher education. According to Kaur and Ahmed (2006); Kaur (2013) the recommended balance of BL activities for successful delivery is 80% online learning (activities, information, resources, assessment and feedback) followed by 20% classroom instruction (face to face) that is aligned to the online teaching content. Similarly, Ginns and Ellis (2007) argued that for an effective BL initiative it is required to achieve a blend of 29–30% face to face and 79–80% on-line teaching delivery. This is in line with findings from previous studies (Graham et al. 2013; Bokolo Jr et al. 2020), which states that there is need for policies showing clear decrease of face to face classroom hours and increasing online learning as a strategy to enhance BL implementation in higher education (Park et al. 2016). Further description of BL implementation for students is discussed in Table 9.
Figure 15 depicts BL practice implementation for lecturers in higher education. The BL practice is based on the Technology, Pedagogy, and Content Knowledge (TPACK) framework proposed by Koehler and Mishra (2009). TPACK aimed address issues faced by how lecturers can integrate technology into their current teaching (Wang et al. 2004; Sahin 2011). Thus, TPACK offers a method that indulgences teaching as collaboration between what lecturers know and how they teach and apply what they already know uniquely through BL implementation in the contexts of physical and online classes (Graham et al. 2009; Koehler and Mishra 2009). Further description of TPACK the components in relation to BL implementation is discussed in Table 10.
5 Implications for Theory, Methodology and Pedagogical Practice
Findings from this study offer implications for theory, methodology and pedagogical practice for higher education towards adopting BL.
5.1 Implications for Theory
Theoretically, this study identifies the factors that influence students, lecturers and administrators’ towards adopting BL. Our findings provide insight by revealing factors for higher education to better recognize how BL can be delivered towards the development of students’ learning effectiveness and also offering in-depth understanding of BL and its efficiency in order to improve students’ competence. The identified factors can be employed by institutions to assess students, lecturers and administrators’ perception towards BL and can be used to inform government policy making regarding BL development. Besides, this study also indicates that the lecturer’s attitude, teaching style, and acceptance toward BL are important in motivating the students to adopt BL. The lecturer’s attitude toward students and his/her level of responsiveness and communication are important factors that motivate students in BL environment. The findings emphasized the importance of administrative commitment towards BL adoption, showing that the purpose, advocacy and definition initiated towards BL have a strong impact on both learning and teaching effectiveness. The findings provide theoretical support to determine the relationship among the constructs and factors of BL adoption for students, lecturers and administrators (see Fig. 13) towards F2F and online learning.
5.2 Implications for Methodology
Based on the TPACK framework, this study provides lecturers with understanding of students' perspective on BL in helping them to reflect on their role in improving their current pedagogy, technological infusion, and syllabus design to enhance student learning and teaching outcome. Decision makers in higher education can utilize findings from this study to improve their understanding of the factors that impacts students, lecturers and administrators’ perception towards BL adoption. Respectively, given the different perspectives of students, lecturers and administrators it is mandatory for policy makers in higher education involved in the implementation of BL to deliberate on the perspectives of all stakeholders. Respectively, findings from this study significantly provide an outline for Ministry of Education across the world towards fostering BL as a teaching and learning approach for academic staffs in higher education. The BL practices for students (see Fig. 14) and strategies to be implemented by lecturers (see Fig. 15) can be integrated to the existing pedagogical polices to improve the significance of BL as one of the methods in learning and teaching. For universities and academicians, findings from this study suggest that BL serves as a substitute to learning and teaching from the traditional perspective to enhance the quality of teaching and learning of students in achieving better performance.
5.3 Implications for Pedagogical Practice
This study contributes to the acknowledgment of BL as a medium to support teaching and learning approach. The findings describing how BL practice can be implemented by students as seen in Sect. 4.6 (Fig. 14). Practically, findings from this study can be useful in the preparation of the best practice to support lecturers in teaching and implementing inventive approaches that promotes BL to enhance teaching and learning outcomes to be used as the reference for the arranging methodologies to embrace BL in higher education. Findings from this study indicate that BL practices derived from the literature which comprises of face-to-face, activities, information, resources, assessment, and feedback to be deployed by educators to design suitable learning policies in order to support students towards improving learning. These findings provide guidelines on the design and implementation of BL practice. This study suggests that for BL practice to be successfully implemented the decision of lecturers are determined by the ease with which online course services are managed. Thus, the availability of computer hardware and software resources, pedagogical support, financial support, and promotion consideration should be provided by institutions management. For administrators this study provides a policy roadmap to adopt BL in higher education.
6 Conclusion, Limitations, and Future Works
Review of prior studies on BL offer valuable insight regarding research related to BL practice in higher education. Nonetheless, these review studies ignored examining BL adoption and implementation in regard to students, lecturers and administrators simultaneously. Accordingly, this study conducted a systematic literature review for prior BL adoption model proposed related to theories employed in the model to investigate BL adoption in higher education. This study also identified the constructs and factors that influence students, lecturers and administration towards adopting BL studies and lastly derived the practices involved for BL implementation for students and lecturers in higher education with the aim of providing meta-analysis of the current studies and to present the implications from the review. Respectively, this paper extends the body of knowledge in BL studies by presenting 7 new findings. First, the review reveal that ad hoc approach is the most employed method by prior studies in developing research model to investigate BL adoption in higher education, followed by TAM, and then IS success model, then is UTAUT, and lastly DoI theory.
Secondly, findings show that questionnaire surveys were the most employed research methods for data collection utilized by prior BL studies in higher education. Third, the findings reveal that BL model adoption studies were carry out in Malaysia and USA, this is followed by Australia, UK, Canada, respectively among the other countries. Fourth, most of the BL studies were recurrently conducted towards examining BL in students’ context, followed by lecturers’ context, correspondingly among the other contexts. Fifth, with regard to publication year, BL studies have experienced vast attraction over the years (2016 to 2019) from many academicians who contributed to investigating BL adoption and implementation in higher educational context, where our findings observed an increase of 19 publications in 2018 (see Fig. 4) representing the highest frequency of the total studies. Sixth, this review also presents 51 prior studies that developed model relating to the adoption of BL in higher educational domain and further identify the constructs/factors that influence the perception of students, lecturers, and administration readiness towards BL adoption. Seventh, findings from this review present the BL practice to be implemented by students and lecturers in higher education. To that end, the identified constructs/factors that influence BL adoption and the derived BL practices implementation can be used to conceptualize and develop a model to examine student, lecturers, and administrators concurrently towards BL adoption and implementation in higher education.
Despite the aforementioned contributions, this study has a few limitations. First, the reviewed BL studies comprises of studies related to BL adoption and implementation approaches, models, and frameworks. BL readiness and effectiveness were not investigated in this current study. Secondly, this study mainly focused on popular online databases for collecting articles (i.e., ScienceDirect, Sage, Emerald, Inderscience, Wiley, Google Scholar, Springer, Taylor & Francis, and IEEE). Given that, the databases may not provide all relevant studies published on BL adoption and implementation. Thirdly, no theoretical model was proposed with hypotheses for further validation. Future studies could examine BL readiness and effectiveness from student, lecturers, and administrator’s perspective by developing a research model with hypotheses. The model will be evaluated using survey questionnaire since it’s the most widely employed methodology as seen in Fig. 5 and 8. Further research could also extent this study by including more BL studies from other online libraries which includes Web of Science, Scopus, etc. to investigate BL in its broad sense and how it affects students, lecturers and administration in a particular country or region.
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Open Access funding provided by NTNU Norwegian University of Science and Technology (incl St. Olavs Hospital - Trondheim University Hospital) This study was supported by Universiti Malaysia Pahang Malaysia Grant No. RDU180702.
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Anthony, B., Kamaludin, A., Romli, A. et al. Blended Learning Adoption and Implementation in Higher Education: A Theoretical and Systematic Review. Tech Know Learn 27, 531–578 (2022). https://doi.org/10.1007/s10758-020-09477-z
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DOI: https://doi.org/10.1007/s10758-020-09477-z