Industrial Buyer Innovation Adoption Model: A Focus on a Smartphone-Based Electrochemical Analytical Device for Toxic Heavy Metal Detection
Abstract
:1. Introduction
2. Theoretical Background
2.1. Smartphone-Based Electrochemical Analytical Devices for Heavy Metal Detection (SEAD)
2.2. B2B Consumer Behavior Theories
2.3. Technology Acceptance Models (TAM)
3. Research Model and Hypotheses
3.1. Input Determinants Impact Innovation-Decision Output
3.1.1. Seller
3.1.2. Buyer
3.2. Process Determinants Impact Innovation-Decision Output
3.2.1. Environment
3.2.2. Internal Organization
3.2.3. Internal People Characteristics
3.2.4. Invented Technology Advantage
3.3. Output
4. Research Methodology
4.1. Construct Measures
4.2. Data Collection and Sample
4.3. Instrument Validation
5. Data Analysis and Findings
Responding Organization Demographics
6. Discussions
6.1. Seller Context
6.2. Buyer Context
6.3. Environment Context
6.4. Internal Organization Context
6.5. Internal People Context
6.6. Invented Technology Advantage
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Independent Variables | Measurement Items |
---|---|
Seller (SE) | SE1. Information exchange that sellers share about the new heavy metal testing method through different channels has an influence on your organization to assess and consider using this new technology to solve problems that you are facing. SE2. Your organization will assess and consider using the new heavy metal testing device, if the seller helps to identify current problems and share mutual goals in avoiding heavy metal contaminations in the industry. SE3. The current heavy metal testing methods offered by sellers are still problematic and needed to be resolved. |
Buyer (BU) | BU1. The innovation coupling model helps the buyer to assess and consider using the new heavy metal testing technology as buyers and sellers both sharing feedbacks in the marketplace. BU2. Product co-creation and co-development help the buyer to consider using the new heavy metal testing technology as buyers and sellers both sharing resources in the marketplace. BU3. Networking and commitment between organizations are important for buyers to assess and consider using the new heavy metal testing device. |
Environment (EN) | EN1. Customer requirements, industrial standards, regulations and laws influence the adoption of the new heavy metal testing technology in your organization. EN2. Economic situations influence the adoption of the new heavy metal testing technology in your organization. EN3. Society, stakeholders and cultures influence the adoption of the new heavy metal testing technology in your organization. EN4. The technology infrastructures (e.g., communication technologies embedded in testing instruments, smartphone communication technologies) influence the adoption of the new heavy metal testing technology in your organization. EN5. Impacts on the natural environment influence the adoption of the new heavy metal testing technology in your organization. (For example, the new technology helps you to prevent and monitor heavy metal leakages into the environment or the devices are made of biodegradable parts.) |
Internal organization (IO) | IO1. Organizational structure influences the adoption of the new heavy metal testing technology in your organization. (Organizational structure includes organization size, resources, power centralization, communication, etc.) IO2. Technology competency and compatibility influence the adoption of the new heavy metal testing technology in your organization. (For example, available communication technologies among testing instruments in the organization support the new technology. The new heavy metal test kit would require only wireless communication technology between a smartphone and a test kit.) IO3. Your organization can accept changes and risks from the new heavy metal testing technology that would help your organization to solve problems and become more competitive. |
Internal people characteristics (IP) | IP1. Perceived usefulness of the new heavy metal testing technology will help you to work more efficiently, which will result in an influence on the adoption of the new heavy metal testing technology in your organization. IP2. Perceived ease of use of the new heavy metal testing technology will help you to work more efficiently, which will result in an influence on the adoption of the new heavy metal testing technology in your organization. IP3. Experiences, knowledge, abilities and characteristics of internal people influence the adoption of the new heavy metal testing technology in your organization. |
Invented technology advantage (IT) | IT1. If the new heavy metal testing technology is more advantageous than the current technology that you are using in terms of uses (e.g., portability, fast analysis, no expert skills and knowledge required), your organization is more likely to adopt this new technology. IT2. If the new heavy metal testing technology is more advantageous than the current technology that you are using in terms of standards, your organization is more likely to adopt this new technology. IT3. If the new heavy metal testing technology is more advantageous than the current technology that you are using in terms of costs, your organization is more likely to adopt this new technology. IT4. If the new heavy metal testing technology is more advantageous than the current technology that you are using in terms of accuracy, your organization is more likely to adopt this new technology. IT5. If the new heavy metal testing technology is more advantageous than the current technology that you are using in terms of complexity, your organization is more likely to adopt this new technology. IT6. If the new heavy metal testing technology is more advantageous than the current technology that you are using in terms of compatibility, your organization is more likely to adopt this new technology. IT7. If the new heavy metal testing technology is more advantageous than the current technology that you are using in terms of sustainability, your organization is more likely to adopt this new technology. |
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Adoption Process | Independent Variables (Determinants) | Measurement Items | References |
---|---|---|---|
Input (Problem identification in the marketplace) | Seller | Information exchange | [42,43,44,46,70,71,72] |
Organizational goals | [41,42,43,44,47,73,74,75] | ||
Problem-solving abilities | [41,43,47,74,76,77] | ||
Buyer | Innovation coupling | [48,78] | |
Co-creation | [40,44,79,80] | ||
Networking and commitment | [80,81,82,83] | ||
Technology acceptance processes (Solution exploration) | Environment | Regulations | [42,43,44,84,85,86] |
Economics | [42,43,44,74,87] | ||
Society and culture | [42,43,44,47,51,60,88] | ||
Technology infrastructure | [42,43,44,47,74] | ||
Natural environment | [42,43,44,89] | ||
Internal Organization | Organizational structure | [44,46,54,90] | |
Technology competency | [42,55] | ||
Risks | [86,91] | ||
Internal people characteristics | Perceived usefulness | [52,88] | |
Perceived ease of use | [52,88] | ||
Internal people characteristics | [42,43,44,50,51,60,92] | ||
Invented technology advantage (SEAD) | Relative advantage | [46,93] | |
Complexity | [46,93] | ||
Compatibility | [46,93] | ||
Standards | [94,95] | ||
Cost | [96,97,98] | ||
Accuracy | [99,100,101] | ||
Sustainability | [51,102,103] |
SE | BU | EN | IO | IP | IT | |
---|---|---|---|---|---|---|
α coefficient | 0.77 | 0.89 | 0.84 | 0.85 | 0.90 | 0.94 |
SE1 | 0.78 | |||||
SE2 | 0.80 | |||||
SE3 | 0.59 | |||||
BU1 | 0.77 | |||||
BU2 | 0.76 | |||||
BU3 | 0.70 | |||||
EN1 | 0.79 | |||||
EN2 | 0.54 | |||||
EN3 | 0.62 | |||||
EN4 | 0.61 | |||||
EN5 | 0.63 | |||||
IO1 | 0.70 | |||||
IO2 | 0.74 | |||||
IO3 | 0.62 | |||||
IP1 | 0.59 | |||||
IP2 | 0.63 | |||||
IP3 | 0.66 | |||||
IT1 | 0.72 | |||||
IT2 | 0.79 | |||||
IT3 | 0.76 | |||||
IT4 | 0.80 | |||||
IT5 | 0.77 | |||||
IT6 | 0.79 | |||||
IT7 | 0.75 |
Category | Frequency | Percentage |
---|---|---|
Company age (years) | ||
<10 | 69 | 17.25 |
11–30 | 208 | 52.00 |
31–50 | 95 | 23.75 |
>50 | 28 | 7.00 |
Registered capital (USD) | ||
<50,000 | 33 | 8.25 |
50,001–3,000,000 | 204 | 51.00 |
>3,000,000 | 163 | 40.75 |
Annual sales revenue (USD) | ||
<600,000 | 45 | 11.25 |
600,001–3,000,000 | 80 | 20.00 |
3,000,001–16,000,000 | 124 | 31.00 |
>16,000,000 | 151 | 37.75 |
Respondent job roles | ||
Top management | 91 | 22.75 |
Technical specialist | 67 | 16.75 |
Procurement specialist | 31 | 7.75 |
Quality specialist | 64 | 16.00 |
Safety specialist | 147 | 36.75 |
SE | BU | EN | IO | IP | IT | |
---|---|---|---|---|---|---|
All | 3.61 | 3.76 | 3.93 | 3.72 | 3.86 | 4.10 |
Adopter | 3.95 | 4.07 | 4.15 | 4.04 | 4.15 | 4.36 |
Non-Adopter | 3.19 | 3.36 | 3.65 | 3.32 | 3.49 | 3.77 |
Model | VIF | Condition Index | Variance Proportions | ||||||
---|---|---|---|---|---|---|---|---|---|
Constant | SE | BU | EN | IO | IP | IT | |||
Constant | 1.00 | 0.00 | 0.00 | 0.00 | 0.00 | 0.00 | 0.00 | 0.00 | |
SE | 2.46 | 16.19 | 0.20 | 0.30 | 0.06 | 0.01 | 0.00 | 0.01 | 0.04 |
BU | 2.99 | 19.20 | 0.61 | 0.09 | 0.00 | 0.00 | 0.05 | 0.11 | 0.04 |
EN | 2.94 | 24.75 | 0.05 | 0.03 | 0.33 | 0.01 | 0.47 | 0.01 | 0.15 |
IO | 2.97 | 27.44 | 0.00 | 0.50 | 0.40 | 0.06 | 0.14 | 0.04 | 0.26 |
IP | 3.42 | 32.25 | 0.13 | 0.03 | 0.15 | 0.49 | 0.03 | 0.57 | 0.08 |
IT | 2.61 | 32.72 | 0.01 | 0.05 | 0.06 | 0.43 | 0.30 | 0.27 | 0.43 |
Statistical Tests | Model 1 | Model 2 |
---|---|---|
−2 Log likelihood (Null Model) | 549.22 | 549.22 |
−2 Log likelihood (Research Model) | 402.49 | 405.45 |
Change in −2 Log likelihood | 146.73 | 143.77 |
Hosmer and Lemeshow Chi-square | 9.77 * | 12.43 ** |
Cox & Snell R2 | 0.31 | 0.30 |
Nagelkerke R2 | 0.41 | 0.40 |
Observed | Predicted | |||||
---|---|---|---|---|---|---|
Model 1 | Model 2 | |||||
Logistic | %Correct | Logistic | %Correct | |||
Adopter | Non-Adopter | Adopter | Non-Adopter | |||
Adopter | 187 (83.9%) | 36 (16.1%) | 83.9 | 188 (84.3%) | 35 (15.7%) | 84.3 |
Non-Adopter | 51 (28.8%) | 126 (71.2%) | 71.2 | 53 (29.9%) | 124 (70.1%) | 70.1 |
Overall | 78.3 | 78.0 |
Predictors | Model 1 | Model 2 | ||
---|---|---|---|---|
β Coefficient | Wald Statistics | β Coefficient | Wald Statistics | |
Constant | −8.37 *** | 77.39 | −8.61 *** | 86.52 |
Seller | 0.63 * | 6.22 | 0.65 * | 6.71 |
Buyer | 0.54 ** | 3.09 | 0.44 ** | 2.46 |
Environment | −0.49 | 1.93 | - | - |
Internal organization | 0.87 * | 8.14 | 0.87 *** | 11.14 |
Internal people | 0.39 | 1.58 | - | - |
Invented technology advantage | 0.38 | 1.90 | 0.41 ** | 3.16 |
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Thanabodypath, W.; Chandrachai, A.; Chaiyo, S.; Chailapakul, O. Industrial Buyer Innovation Adoption Model: A Focus on a Smartphone-Based Electrochemical Analytical Device for Toxic Heavy Metal Detection. Sustainability 2021, 13, 11718. https://doi.org/10.3390/su132111718
Thanabodypath W, Chandrachai A, Chaiyo S, Chailapakul O. Industrial Buyer Innovation Adoption Model: A Focus on a Smartphone-Based Electrochemical Analytical Device for Toxic Heavy Metal Detection. Sustainability. 2021; 13(21):11718. https://doi.org/10.3390/su132111718
Chicago/Turabian StyleThanabodypath, Wasapon, Achara Chandrachai, Sudkate Chaiyo, and Orawon Chailapakul. 2021. "Industrial Buyer Innovation Adoption Model: A Focus on a Smartphone-Based Electrochemical Analytical Device for Toxic Heavy Metal Detection" Sustainability 13, no. 21: 11718. https://doi.org/10.3390/su132111718
APA StyleThanabodypath, W., Chandrachai, A., Chaiyo, S., & Chailapakul, O. (2021). Industrial Buyer Innovation Adoption Model: A Focus on a Smartphone-Based Electrochemical Analytical Device for Toxic Heavy Metal Detection. Sustainability, 13(21), 11718. https://doi.org/10.3390/su132111718