Prioritizing Protection by Face Masks during COVID-19: The Application of Customer Open Innovation
Abstract
:1. Introduction
2. Literature Review and Hypotheses Development
2.1. Modified Theory of Planned Behavior
2.2. Attitude
2.3. Subjective Norm
2.4. Perceived Behavioral Control
2.5. Actual Behavior
2.6. Moderating Effects of Workplace Association
3. Methods
3.1. Sampling and Sample
3.2. Measurement
4. Results
4.1. Sample
4.2. Exploratory Factor Analysis
4.3. Confirmatory Factor Analysis
4.4. Model Development and Hypotheses Testing
4.5. Multi-Group Comparisons for Workplace Association Groups
5. Discussion and Implications
5.1. Prioritizing Protection in Mask Production and Usage
5.2. Open Innovation Dynamics in Mask Production and Consumption
6. Limitations and Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Construct | Variable Type | Source | Format after Adapted |
---|---|---|---|
Attitude towards functional attributes | Exogenous variable | Online reviews; [1] | 4-item scale; 5-point Likert-type * (strongly disagree/strongly agree and not at all Important/extremely important) |
Attitude towards social attributes | Exogenous variable | Online reviews | 3-item scale; 5-point Likert-type (strongly disagree/strongly agree and not at all Important/extremely important) |
Attitude towards aesthetics attributes | Exogenous variable | Online reviews | 3-item scale; 5-point Likert-type (strongly disagree/strongly agree and not at all Important/Extremely important) |
Subjective norm | Exogenous variable | Online reviews; [30] | 6-item scale; 5-point Likert-type (strongly disagree/strongly agree and not at all Important/extremely important) |
Perceived behavioral control | Exogenous variable | Online reviews; [31] | 8-item scale; 5-point Likert-type (strongly disagree/strongly agree and not at all relevant/extremely relevant) |
Purchase Intention | Endogenous variable | 3-item scale (in the next month, in the next three months, and in the next six months); 5-point scale (0, 1–3, 4–6, 7–9, 10 or more) | |
Actual behavior | Endogenous variable | [18] | Single item (quantity purchased during past six months) |
Characteristic | Percent | Characteristic | Percent |
---|---|---|---|
Gender | Workplace | ||
Men | 39.1 | Employed full time (40 or more hours per week) | 42.3 |
Women | 60.9 | Employed part time (up to 39 h per week) | 12.6 |
Age | Unemployed (currently looking for work) | 7.0 | |
18–24 | 14.4 | Self-employed | 2.3 |
25–34 | 29.3 | Graduate student | 1.9 |
35–44 | 27.0 | Undergraduate student | 4.2 |
45–54 | 8.4 | Unemployed (not currently looking for work) | 1.9 |
55–64 | 11.6 | Retired | 13.0 |
65 and above | 9.3 | Homemaker | 9.7 |
Ethnicity | Unable to work | 5.1 | |
Caucasian | 65.6 | Masks categories tried | |
African American | 17.7 | Medical masks | 64.7 |
Asian/Asian American | 3.7 | Cloth face masks | 79.5 |
Hispanic/Latino | 11.6 | Cloth Non-face masks | 20.0 |
Native American | 0.9 | Face mask type most preferred | |
Other | 0.5 | Cone | 7.9 |
Education | Envelope | 13.0 | |
Less than high school | 1.9 | Ax-head | 40.0 |
High School graduate | 28.4 | Panel | 39.1 |
Some college | 22.3 | Have tried face mask type and disliked | |
2-year degree | 13.5 | Cone | 42.3 |
4-year degree | 21.9 | Envelope | 20.5 |
Professional degree | 10.1 | Ax-head | 27.4 |
Doctorate | 1.9 | Panel | 20.5 |
Total Household Income | Non-face mask type tried | ||
Less than $10,000 | 11.6 | Gaiter | 35.3 |
$10,000–$29,999 | 20.4 | Bandana | 22.3 |
$30,000–$49,999 | 23.3 | I do not like non-mask type | 42.4 |
$50,000–$79,999 | 19.5 | Masks purchased in past 6 months | |
$80,000–$99,999 | 7.0 | 0 | 7.7 |
$100,000–$199,999 | 14.9 | 1–5 | 49.0 |
$200,000 or more | 3.3 | 6–10 | 22.9 |
Marital Status | 11–20 | 8.3 | |
Married | 48.8 | More than 20 | 12.1 |
Single | 46.0 | Recommended guidelines followed | |
Other | 5.2 | CDC | 37.1 |
WHO | 11.3 | ||
Workplace (e.g., school or employer) | 11.3 | ||
Other | 0.6 | ||
None | 39.7 |
Factor | Scale Item | Mean | Mode | StD | EFA Loadings | CFA Loadings |
---|---|---|---|---|---|---|
By purchasing the face mask I prefer the most, … | ||||||
Attitude towards Functional Attributes (Reliability = 0.901, Composite Reliability = 0.902, AVE = 0.698) | I will have a face mask that protects me | 19.856 | 25 | 6.350 | 0.823 | 0.859 |
I will have a face mask that protects people I care about | 19.888 | 25 | 6.150 | 0.871 | 0.863 | |
I will have a face mask that is comfortable | 20.239 | 25 | 5.653 | 0.759 | 0.769 | |
I will have a face mask that fits me well enough to filter the air | 19.395 | 25 | 6.063 | 0.834 | 0.848 | |
Attitude towards Social Attributes (Reliability = 0.833, Composite Reliability = 0.838, AVE = 0.722) | I will have a face mask that lets me go into public spaces | 19.526 | 25 | 6.382 | 0.796 | 0.898 |
I will have a face mask that is versatile enough to wear in different situations, such as work, shopping, or socializing | 17.772 | 25 | 6.937 | 0.702 | 0.798 | |
Attitude towards Aesthetics Attributes (Reliability = 0.933, Composite Reliability = 0.934, AVE = 0.824) | I will have a face mask that is attractive | 13.181 | 25 | 7.589 | 0.905 | 0.881 |
I will have a face mask that works with my style | 13.316 | 16 a | 7.438 | 0.923 | 0.934 | |
I will have a face mask that looks good on my face | 13.088 | 25 | 7.504 | 0.899 | 0.908 | |
Thinking of the face mask you most prefer, how do you agree with these statements? | ||||||
Perceived Behavior Control (Reliability = 0.889, Composite Reliability = 0.837, AVE = 0.636) | I know where to purchase this face mask | 16.516 | 25 | 6.391 | 0.728 | 0.844 |
I know that this face mask is in stock for me to purchase | 16.107 | 25 | 6.633 | 0.766 | 0.871 | |
I can have free shipping when I purchase this face mask | 13.670 | 25 | 7.167 | 0.807 | na | |
I can buy this face mask without waiting for it on backorder | 15.293 | 25 | 7.173 | 0.803 | 0.804 | |
I can use online shipping to purchase this face mask | 15.516 | 25 | 7.499 | 0.754 | 0.652 | |
Subjective Norm (Reliability = 0.929, Composite Reliability = 0.930, AVE = 0.817) | My employer believes I should purchase this face mask | 12.498 | 25 | 7.909 | 0.908 | 0.937 |
My co-workers believe I should purchase this face mask | 11.358 | 25 | 7.483 | 0.867 | 0.905 | |
The people I come in contact with at work, such as customers or clients, believe I should purchase this face mask | 12.247 | 25 | 7.876 | 0.861 | 0.868 | |
Purchase Intention (Reliability = 0.851, Composite Reliability = 0.855, AVE = 0.747) | How many of this face mask will you purchase in the next month? | 2.51 | 2 | 1.307 | 0.892 | 0.919 |
How many of this face mask will you purchase in the next three months? | 2.73 | 2 | 1.344 | 0.818 | 0.806 | |
Actual Purchase b (Composite Reliability = 1.0) | Over the past 6 months, how many face masks of this type have you purchased? | 2.079 | 2 | 1.260 | 0.874 | na |
Purchase Intention | Attitude towards Functional Attributes | Attitude towards Social Attributes | Attitude towards Aesthetics Attributes | Perceived Behavior Control | Subjective Norm | |
---|---|---|---|---|---|---|
Purchase intention | 0.864 | |||||
Attitude towards functional attributes | 0.213 | 0.836 | ||||
Attitude towards social attributes | 0.066 | 0.831 | 0.849 | |||
Attitude towards aesthetics attributes | 0.107 | 0.295 | 0.308 | 0.908 | ||
Perceived behavior control | 0.360 | 0.580 | 0.597 | 0.267 | 0.797 | |
Subjective norm | 0.426 | 0.254 | 0.249 | 0.365 | 0.469 | 0.904 |
Path To | Path From | Path Coefficient | p | Hypothesis Testing |
---|---|---|---|---|
Purchase intention | Attitude towards aesthetics attributes | −0.059 | ns | H1 not supported |
Attitude towards functional attributes | 0.346 | * | H2 supported | |
Attitude towards social attributes | −0.396 | ns | H3 not supported | |
Subjective norm | 0.352 | ** | H4 supported | |
Perceived behavioral control | 0.263 | * | H5 supported | |
Actual purchase | Purchase intention | 0.500 | ** | H6 supported |
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Liang, Y.; Hustvedt, G.; Miller, J. Prioritizing Protection by Face Masks during COVID-19: The Application of Customer Open Innovation. J. Open Innov. Technol. Mark. Complex. 2022, 8, 43. https://doi.org/10.3390/joitmc8010043
Liang Y, Hustvedt G, Miller J. Prioritizing Protection by Face Masks during COVID-19: The Application of Customer Open Innovation. Journal of Open Innovation: Technology, Market, and Complexity. 2022; 8(1):43. https://doi.org/10.3390/joitmc8010043
Chicago/Turabian StyleLiang, Yuli, Gwendolyn Hustvedt, and Jasmine Miller. 2022. "Prioritizing Protection by Face Masks during COVID-19: The Application of Customer Open Innovation" Journal of Open Innovation: Technology, Market, and Complexity 8, no. 1: 43. https://doi.org/10.3390/joitmc8010043
APA StyleLiang, Y., Hustvedt, G., & Miller, J. (2022). Prioritizing Protection by Face Masks during COVID-19: The Application of Customer Open Innovation. Journal of Open Innovation: Technology, Market, and Complexity, 8(1), 43. https://doi.org/10.3390/joitmc8010043