Technology-Based Strategies for Online Secondhand Platforms Promoting Sustainable Retailing
Abstract
:1. Introduction
2. Literature Review
2.1. Digital Transformation in the Retail Industry
2.2. Features of Online Secondhand Platforms
2.3. Technology Acceptance Model
3. Methods
3.1. Case Studies
3.2. Surveys
3.2.1. Preliminary Survey
3.2.2. Main Survey
3.3. Interviews
4. Results
4.1. Case Analysis
4.2. Analysis of Survey Results
4.2.1. Preliminary Survey
4.2.2. Main Survey
4.3. Analysis of Interview Data
4.3.1. Follow-Up User Interviews from the Main Survey
4.3.2. Interviews with Field Experts
5. Discussion
5.1. Technology-Based Strategies
5.2. Future Trends and Suggestion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Classification | Secondhand Goods | Fashion | ||
---|---|---|---|---|
Platforms | Karrot | OfferUp | Vlook | Depop |
Date of Establishment | 2011 | 2011 | 2021 | 2011 |
Business Model | C2C Hyper-local (Max 6 km) | C2C Hyper-local (Max 30 miles) | C2C | C2C |
Total Number of Users | 7 million (As of 2021) | 44 million (As of 2019) | Unknown | 27+ million (As of 2021) |
Consumer Profile | 54.2% female 45.8% male | Most users are female | Z Generation | Most users are 25 or younger |
Items Traded | Items and Lifestyle Services platform | A variety of items | Mainly vintage, secondhand, handmade, and eco-friendly fashion items | Mainly secondhand retro sportswear and 90s vintage clothes |
Values | Community and neighborhood | Simple and easy buying and selling | Slow fashion & sustainable lifestyle | Community-powered fashion ecosystem that’s kinder on the planet and kinder to people |
Buying and Selling Experience | Sellers: post images and descriptions Buyers: chat and negotiate with sellers | Sellers: post images and descriptions Buyers: add items to the shopping cart |
Appendix B
Strategies | Functions | |
---|---|---|
Karrot | Safe and free calls | This feature allows buyers and sellers to call each other an hour before and after the fixed transaction time without exposing personal information. Users can only see each other’s Karrot ID and check the chatroom’s call history [57]. |
Deep-learning-based customer care | This feature allows the platform to quickly and easily find links related to FAQs [47] and promptly process users’ inquiries. | |
Deep-learning-based filtering posts | This feature automates filtering by making a learning model based on probability. Automated filtering can process multiple reports [47] and take preemptive measures to make the platform safe without malicious posts. | |
Algorithms-based personalized recommendations | On the initial home screen, one of six posts is an item recommended for individual users [52]. | |
Customizable UX | In the app’s ‘My Karrot’ section, users can customize the specific category of items they want to see on their home screen [52]. | |
Intuitive and attractive review and rating system | This system features a ‘Manner Temperature,’ an indicator that integrates positive and negative reviews and rates other users met in exchange. As a high temperature connotes a high reputation, it incentivizes users to increase their credibility. It also uses a mascot and multiple-choice options to review the seller [52]. | |
OfferUp | Multi-layered review system | This feature allows buyers to review the products, the overall communication between buyers and sellers, and the locations of transactions [48]. |
Fortified in-app verification system (TruYou) | It requires every user to take a picture of their state-issued ID along with a selfie and go through a thorough inspection [38]. | |
Image-based listing for mobile optimization | The home screen features large photos of products similarly to Instagram [54] and allows users to view the items without secondary information immediately. | |
Inquiries sorted by the highest bid | The messages sellers receive are sorted by the highest bid [71], helping sellers contact buyers with the best price. | |
Geo-location-based feed | The feed is sorted by proximity based on users’ location [55]. |
Strategies | Functions | |
---|---|---|
vlook | Live commerce | This feature allows sellers to stream live videos to their followers. It provides an instant tap-to-product feature, in which buyers can tap and easily find and purchase the product [49]. During live commerce, buyers can make inquiries about the products by sending texts and receive instant replies from sellers [60]. |
Virtual avatar fitting | Users will be able to personalize avatars with matching body dimensions and dress them in clothes to try on clothes virtually [49]. | |
Algorithms-based personalized recommendations | Based on the user’s selected fashion style and user-history-derived data collections, vlook provides a section called ‘recommended items for you,’ which shows items that match the user’s style preferences [51]. | |
Instagram-like UI | Sellers have profile pages that function as mini digital storefronts. They can post pictures and descriptions of what they are selling, similar to an Instagram post. Buyers can ‘follow’ their favorite sellers and directly message them to ask questions or negotiate [58]. | |
Customizable ‘shopping’ filters | Similar to shopping apps, vlook provides customizable filters, such as the type of product, size of clothing and shoes, and most notably, style (i.e., basic, formal, street, luxury, retro, ethnic, punk, etc.) [51]. | |
Depop | Machine learning-based sneaker classifier | Depop added precise subcategories for shoes such as sneakers, boots, heels, etc. Then, using its dataset of labeled images of footwear, Depop trained its classifier model with image recognition to detect and classify shoes [56]. |
Algorithms-based personalized recommendations | Depop implements a collaborative filtering model to build its recommender systems. Collaborative filtering analyzes user behavior, matches users with similar tastes, and displays items to other users with similar tastes [53] in the ‘My DNA’ section [36]. | |
Instagram-like UI | Depop’s explore feed, home feed, and profiles are designed similarly to Instagram [59]. | |
Customizable ‘shopping’ filters | Similar to shopping apps, Depop provides various customizable filters, which users can use to narrow down their searches by selecting a broad category (e.g., menswear), a subcategory (e.g., top), and narrower filters (e.g., size) [36]. |
Appendix C
Appendix D
Construct | Measurement Instrument | References |
---|---|---|
Perceived Usefulness |
| [40] |
Perceived Ease-of-Use |
| [66] |
Perceived Enjoyment |
| [66] |
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Strategies | Frequency Value 1 | Percentage 2 | |
---|---|---|---|
Perceived Usefulness (PU) | Multilayered review and rating system | 59.6 | 73.6% |
Fortified in-app verification system | 50.4 | 62.2% | |
Virtual avatar fitting | 38.2 | 47.2% | |
Perceived Ease-of-Use (PUI) | Safe and free calls | 47.6 | 58.8% |
Algorithms-based personalized recommendations | 52.8 | 65.2% | |
Images-based listing for mobile optimization | 52.8 | 65.2% | |
Inquiries sorted by the highest bid | 46.6 | 57.5% | |
Geolocation-based feed | 47.4 | 58.5% | |
Machine learning-based sneaker classifier | 37 | 45.7% | |
Customizable shopping filters | 55.6 | 68.6% | |
Perceived Enjoyment (PE) | Intuitive and attractive review and rating system | 60.3 | 74.4% |
Live commerce | 38 | 46.9% | |
Instagram-like UI | 46 | 56.8% |
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Share and Cite
Bae, Y.; Choi, J.; Gantumur, M.; Kim, N. Technology-Based Strategies for Online Secondhand Platforms Promoting Sustainable Retailing. Sustainability 2022, 14, 3259. https://doi.org/10.3390/su14063259
Bae Y, Choi J, Gantumur M, Kim N. Technology-Based Strategies for Online Secondhand Platforms Promoting Sustainable Retailing. Sustainability. 2022; 14(6):3259. https://doi.org/10.3390/su14063259
Chicago/Turabian StyleBae, Yoonjae, Jungyeon Choi, Munguljin Gantumur, and Nayeon Kim. 2022. "Technology-Based Strategies for Online Secondhand Platforms Promoting Sustainable Retailing" Sustainability 14, no. 6: 3259. https://doi.org/10.3390/su14063259
APA StyleBae, Y., Choi, J., Gantumur, M., & Kim, N. (2022). Technology-Based Strategies for Online Secondhand Platforms Promoting Sustainable Retailing. Sustainability, 14(6), 3259. https://doi.org/10.3390/su14063259