Building the E-Commerce Supply Chain of the Future: What Influences Consumer Acceptance of Alternative Places of Delivery on the Last-Mile
Abstract
:1. Introduction
2. Background
2.1. Place-of-Delivery Innovations
2.1.1. Parcel Locker
2.1.2. Reception Box
2.1.3. Trunk Delivery
2.1.4. Home Access System
2.2. Empirical Literature on Consumer Acceptance of Last-Mile Place-of-Delivery Innovations
3. Qualitative Study
3.1. Data Collection Methodology
3.2. Sampling
3.3. Data Analysis Methodology
3.4. Rigor, Validity, and Reliability
3.5. Results
3.5.1. Attitude towards the Place-of-Delivery Innovation
3.5.2. Subjective Norms Regarding the Place-of-Delivery Innovation
3.5.3. Subjective Norms Regarding the Place-of-Delivery Innovation
3.5.4. Other Reported Influences
4. Discussion
5. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Study (Sample) | Factor → Influence Variable (Effect Direction) | Innovation | |||
---|---|---|---|---|---|
PL | RB | TD | HAS | ||
Goethals et al. [7]; n = 245 consumers in France | Age → Interest in unattended home delivery (inverse U-shaped) | √ | |||
Chen et al. [8]; n = 281 consumers from China | Location convenience → Intention to use (+) | √ | |||
Need for human interaction → Intention to use (+) | √ | ||||
Optimism → Intention to use (+) | √ | ||||
Innovativeness → Intention to use (+) | √ | ||||
Wang et al. [33]; n = 170 consumers from Singapore | Perceived compatibility → Attitude (+) | √ | |||
Perceived complexity → Attitude (–) | √ | ||||
Perceived trialability → Attitude (+) | √ | ||||
Perceived relative advantage → Intention to use (+) | √ | ||||
Yuen et al. [37]; n = 230 consumers from China | Convenience → Perceived value of innovation (+) | √ | |||
Privacy/Security → Perceived value of innovation (+) | √ | ||||
Reliability → Perceived value of innovation (+) | √ | ||||
Convenience → Transaction cost of innovation (+) | √ | ||||
Privacy/Security → Transaction cost of innovation (+) | √ | ||||
Reliability → Transaction cost of innovation (+) | √ | ||||
Felch et al. [4]; n = 207 consumers from Germany | Usefulness → Willingness to test (+) | √ | √ | √ | |
Security → Willingness to test (+) | √ | √ | √ | ||
Privacy → Willingness to test (+) | √ | √ | √ | ||
Wang et al. [38]; n = 209 consumers from Singapore | Perceived relative advantage → Attitude (+) | √ | |||
Perceived relative advantage → Intention to use (+) | √ | ||||
Perceived compatibility → Attitude (+) | √ |
Category | Questions |
---|---|
Background | What gender are you? Which age group do you belong to? How frequently do you receive deliveries? |
Behavioral outcomes as the basis for a consumer’s attitude | What do you see as advantages of this innovation? What would persuade you to make use of the innovation? What do you see as disadvantages of the innovation? What speaks against the use of the innovation? What else comes to mind when you think about the innovation? |
Normative referents | Which individuals or groups would like to use this innovation? Which individuals or groups would disapprove of the innovation? |
Control factors | What factors or circumstances are there that would make it easy to use this innovation? What factors or circumstances are there that would make it difficult to use this innovation? |
Measure | Purpose | Strategy Applied in the Study |
---|---|---|
Refutational analysis | Deliberately explore potential contradictions between individual cases to increase objectivity. | Apart from the used interview guide, specific follow-up questions were asked to investigate the context further and identify potential deviations. |
Constant data comparison | Inspect and compare all data fragments that arise in every single case to test provisional hypotheses and attribute relevance. | Contant review of the coding agenda. Multiple coding rounds with a high agreement rate (>90%) were performed. |
Comprehensive data use | Address anecdotalism by performing in-depth analysis. | Interviews were transcribed and analyzed during the data collection process to allow for and ensure data saturation. |
Inclusive of the deviant case | Test the theory choosing an extreme case to allow for generalizations. | Interviews with consumers from different markets (Germany, United States of America) and consideration of different age groups (oldest participant 60 years old) were conducted. |
Use of tabulations | Improve the quality of data analysis by highlighting the relevance and providing another perspective on the data collected. | Integration of quantitative analysis through frequency tables (see Tables 5–9). |
Measure | Purpose | Strategy Applied in the Study |
---|---|---|
Credibility | Establish confidence that the results are true and believable. | As the study advanced, we tried to confirm each relevant factor against at least one other interview and the available literature. |
Dependability | Ensure that the findings are repeatable if the inquiry occurred within the same sample, coders, and context. | A clear description of the research process and application of multiple coding rounds with high agreement rates (>90%). |
Transferability | Increase the degree to which the results can be generalized and applied to other contexts. | Interviews were performed with consumers from two different markets with different cultural backgrounds. |
Confirmability | Ensure that the interpretations are in fact derived from the data. | Quantification of the analysis through the use of tabulations. |
Evaluation | PL (n = 9) | RB (n = 9) | TD (n = 10) | HAS (n = 9) |
---|---|---|---|---|
Positive (n = 10; 27%) | n = 4 (44%) | n = 5 (56%) | n = 1 (10%) | n = 0 (0%) |
Neutral (n = 11; 30%) | n = 4 (44%) | n = 4 (44%) | n = 1 (10%) | n = 2 (22%) |
Negative (n = 16; 43%) | n = 1 (11%) | n = 0 (0%) | n = 8 (80%) | n = 7 (78%) |
Outcomes | PL (n = 9) | RB (n = 9) | TD (n = 10) | HAS (n = 9) |
---|---|---|---|---|
Increased flexibility * (n = 28; 76%) | n = 8 (89%) | n = 7 (78%) | n = 9 (90%) | n = 4 (44%) |
Better reliability * (n = 27; 73%) | n = 7 (78%) | n = 7 (78%) | n = 8 (80%) | n = 5 (56%) |
Higher independence * (n = 21; 57%) | n = 6 (67%) | n = 6 (67%) | n = 6 (60%) | n = 3 (33%) |
Safer shipment storage * (n = 11; 30%) | n = 4 (44%) | n = 2 (22%) | n = 2 (20%) | n = 3 (33%) |
Time savings ** (n = 7; 19%) | n = 1 (11%) | n = 0 (0%) | n = 4 (40%) | n = 2 (22%) |
More convenience * (n = 5; 13%) | n = 0 (0%) | n = 1 (11%) | n = 2 (20%) | n = 2 (22%) |
Lower costs ** (n = 3; 8%) | n = 2 (22%) | n = 0 (0%) | n = 1 (10%) | n = 0 (0%) |
Normative Referents | PL (n = 9) | RB (n = 9) | TD (n = 10) | HAS (n = 9) |
---|---|---|---|---|
Employees (n = 17; 46%) | n = 8 (89%) | n = 3 (33%) | n = 3 (30%) | n = 3 (33%) |
Frequent travelers (n = 12; 32%) | n = 5 (56%) | n = 3 (33%) | n = 2 (20%) | n = 2 (22%) |
Disabled people (n = 2; 5%) | n = 1 (11%) | n = 0 (0%) | n = 0 (0%) | n = 1 (11%) |
Control Factors | PL (n = 9) | RB (n = 9) | TD (n = 10) | HAS (n = 9) |
---|---|---|---|---|
Security/liability (n = 20; 54%) | n = 0 (0%) | n = 5 (56%) | n = 9 (90%) | n = 6 (67%) |
Spatial impediments (n = 20; 54%) | n = 7 (78%) | n = 8 (89%) | n = 5 (50%) | n = 0 (0%) |
Data protection/privacy (n = 14; 38%) | n = 1 (11%) | n = 1 (11%) | n = 8 (80%) | n = 4 (44%) |
Mobility/car ownership (n = 14; 38%) | n = 4 (44%) | n = 0 (0%) | n = 10 (100%) | n = 0 (0%) |
Technical reliability/functionality (n = 9; 24%) | n = 3 (33%) | n = 1 (11%) | n = 4 (40%) | n = 1 (11%) |
Acquisition/operating costs (n = 8; 22%) | n = 0 (0%) | n = 7 (78%) | n = 0 (0%) | n = 1 (11%) |
Trustworthiness (n = 8; 22%) | n = 0 (0%) | n = 1 (11%) | n = 3 (30%) | n = 4 (44%) |
Perceived additional effort (n = 6; 16%) | n = 5 (56%) | n = 0 (0%) | n = 1 (10%) | n = 0 (0%) |
Real estate ownership (n = 6; 16%) | n = 0 (0%) | n = 3 (33%) | n = 0 (0%) | n = 3 (33%) |
Shipment-related impediments (n = 5; 13%) | n = 3 (33%) | n = 1 (11%) | n = 1 (10%) | n = 0 (0%) |
Affinity for technological progress (n = 3; 8%) | n = 0 (0%) | n = 0 (0%) | n = 1 (10%) | n = 2 (22%) |
Other Factors | PL (n = 9) | RB (n = 9) | TD (n = 10) | HAS (n = 9) |
---|---|---|---|---|
Safety consciousness (n = 16; 43%) | n = 1 (11%) | n = 0 (0%) | n = 9 (90%) | n = 6 (60%) |
Age (n = 10; 27%) | n = 5 (56%) | n = 1 (11%) | n = 2 (20%) | n = 2 (22%) |
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Asdecker, B. Building the E-Commerce Supply Chain of the Future: What Influences Consumer Acceptance of Alternative Places of Delivery on the Last-Mile. Logistics 2021, 5, 90. https://doi.org/10.3390/logistics5040090
Asdecker B. Building the E-Commerce Supply Chain of the Future: What Influences Consumer Acceptance of Alternative Places of Delivery on the Last-Mile. Logistics. 2021; 5(4):90. https://doi.org/10.3390/logistics5040090
Chicago/Turabian StyleAsdecker, Björn. 2021. "Building the E-Commerce Supply Chain of the Future: What Influences Consumer Acceptance of Alternative Places of Delivery on the Last-Mile" Logistics 5, no. 4: 90. https://doi.org/10.3390/logistics5040090
APA StyleAsdecker, B. (2021). Building the E-Commerce Supply Chain of the Future: What Influences Consumer Acceptance of Alternative Places of Delivery on the Last-Mile. Logistics, 5(4), 90. https://doi.org/10.3390/logistics5040090