How Could Consumers’ Online Review Help Improve Product Design Strategy?
Abstract
:1. Introduction
2. Literature Review
2.1. Development and Academic Application of LDA
- Unsupervised learning: Latent Dirichlet Allocation (LDA) is an unsupervised learning algorithm, which means that it does not require labeled data for training. Instead, it can automatically discover topics and generate topic models from unlabeled text corpora. The goal of LDA is to assign documents to latent topics by analyzing the distribution patterns of words in the text;
- Topic Identification and Distribution: The LDA model is highly useful in the realm of topic identification and distribution. It can be applied to large-scale collections of text to help identify hidden topics within documents and provide information on the distribution of each topic within the document. Through LDA, it is possible to obtain the relevance between each document and topic, as well as the association between each topic and word. This information is crucial for text mining and information retrieval as it aids in understanding the structure and content of a text dataset;
- Scalability: The LDA model exhibits excellent scalability and can handle large-scale text datasets. Traditional LDA algorithms can be accelerated through parallel computing, and they can also be trained in distributed computing environments, leveraging the computational resources of multiple machines for efficient model training. This scalability provides LDA with a significant advantage in handling large volumes of text data and enables it to tackle real-world, large-scale text mining tasks;
- Probabilistic Topic Modeling: LDA is a probabilistic topic modeling algorithm. It assumes that each document is composed of multiple topics, and each topic is composed of multiple words. LDA introduces probability distributions to describe the relationships between topics and words. By modeling the text data, LDA can calculate the probability distributions of each topic and each word, thereby determining the relative importance of topics. This probabilistic modeling approach enables LDA to provide a deeper understanding of the topic structure, helping us uncover the latent semantic associations within the text data.
2.2. Judgement of Topic Numbers
2.3. Online Consumer Reviews
3. Methodology
3.1. Data Source and Collection
3.2. Data Processing
4. Results and Discussion
4.1. Topic Modeling and Visualization of User Comments
4.2. Topic Model and Labeling
4.3. Development of Cordless Hairdryer Design Index System Based on User Needs
4.4. Cordless Hairdryer Design Index System Verification
5. Conclusions and Limitations
5.1. Theoretical Implications
5.2. Practical Implications
5.3. Limitations and Future Studies
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Dimensions | Items | Source |
---|---|---|
User satisfaction | I’m very satisfied with this cordless hairdryer. | [60] |
The quality of this cordless hairdryer is very good. | ||
This cordless hairdryer meets my expectations. | ||
Purchase intention | It is likely for me to purchase this cordless hairdryer. | [61] |
I am capable of purchasing this cordless hairdryer. | ||
It is possible for me to purchase this cordless hairdryer. | ||
Usage habits | I would like to stop using my current cordless hairdryer and use this one. | [62] |
My family would like to stop using my current cordless hairdryer and use this one. | ||
My friends would like to stop using my current cordless hairdryer and use this one. | ||
Intention to continue using | I would like to continue my usage of this cordless hairdryer. | [63] |
I would like to continue my usage of this cordless hairdryer rather than stop. | ||
My intentions are to continue using this cordless hairdryer rather than use any alternative means. |
Appendix B
Word | Occurrence | Reviews | TF | TF-IDF |
---|---|---|---|---|
Hair | 598 | 534 | 0.036299624 | 0.015262768 |
Very | 301 | 278 | 0.018271215 | 0.012865541 |
Straight hair | 308 | 296 | 0.018696127 | 0.012657098 |
Not bad | 317 | 330 | 0.019242443 | 0.012103162 |
Convenient | 365 | 415 | 0.022156125 | 0.011744016 |
Fast | 253 | 283 | 0.015357533 | 0.010692069 |
Effect | 221 | 260 | 0.013415078 | 0.009834679 |
Use | 180 | 187 | 0.010926308 | 0.009574172 |
Very good | 187 | 206 | 0.01135122 | 0.00946438 |
Special | 161 | 161 | 0.009772976 | 0.009188862 |
TRUE | 167 | 183 | 0.010137186 | 0.008974109 |
Useful | 153 | 164 | 0.009287362 | 0.008668753 |
Heat | 153 | 177 | 0.009287362 | 0.008365343 |
Appearance | 137 | 155 | 0.008316135 | 0.007965335 |
Seems | 137 | 159 | 0.008316135 | 0.007876882 |
Quality | 133 | 156 | 0.008073328 | 0.007703913 |
Comb | 112 | 115 | 0.006798592 | 0.007385717 |
Very useful | 125 | 151 | 0.007587714 | 0.007350373 |
Operation | 118 | 145 | 0.007162802 | 0.007073438 |
Recommendation | 113 | 132 | 0.006859293 | 0.007049743 |
Receive | 110 | 129 | 0.006677188 | 0.006919443 |
Children | 102 | 107 | 0.006191575 | 0.006911798 |
Like | 108 | 124 | 0.006555785 | 0.006908687 |
Speed | 110 | 131 | 0.006677188 | 0.006890873 |
Jingdong | 106 | 123 | 0.006434381 | 0.006809706 |
Will not | 102 | 115 | 0.006191575 | 0.006726278 |
Express delivery | 104 | 131 | 0.006312978 | 0.006515007 |
Comparison | 98 | 114 | 0.005948768 | 0.006491369 |
Easy | 99 | 122 | 0.006009469 | 0.006387337 |
Feeling | 98 | 120 | 0.005948768 | 0.006350158 |
Temperature | 94 | 109 | 0.005705961 | 0.006340369 |
Packaging | 91 | 106 | 0.005523856 | 0.006195138 |
Did not | 89 | 102 | 0.005402452 | 0.006145356 |
Time | 88 | 101 | 0.005341751 | 0.006105489 |
Curls | 88 | 102 | 0.005341751 | 0.006076307 |
Natural | 86 | 100 | 0.005220347 | 0.005995609 |
Exactly | 75 | 84 | 0.004552628 | 0.005559025 |
Hair curler | 74 | 83 | 0.004491927 | 0.005514689 |
Things | 73 | 82 | 0.004431225 | 0.005470003 |
Satisfaction | 72 | 84 | 0.004370523 | 0.005336664 |
No need | 71 | 88 | 0.004309822 | 0.005179342 |
Purchase | 67 | 75 | 0.004067015 | 0.005164093 |
Product | 66 | 74 | 0.004006313 | 0.00511676 |
Price | 69 | 84 | 0.004188418 | 0.005114303 |
Inward curls | 68 | 82 | 0.004127716 | 0.005095345 |
Hot wind | 67 | 81 | 0.004067015 | 0.00504823 |
Hair style | 67 | 83 | 0.004067015 | 0.004993029 |
Frizzy | 68 | 87 | 0.004127716 | 0.004986667 |
White | 66 | 86 | 0.004006313 | 0.004865777 |
Hot to touch | 62 | 74 | 0.003763506 | 0.004806654 |
After washing | 63 | 78 | 0.003824208 | 0.004800423 |
Straighten | 63 | 78 | 0.003824208 | 0.004800423 |
Essential oil | 62 | 77 | 0.003763506 | 0.004751242 |
Friend | 61 | 74 | 0.003702804 | 0.004729127 |
School | 60 | 72 | 0.003642103 | 0.004707106 |
Dormitory | 59 | 72 | 0.003581401 | 0.004628654 |
Hairdryer | 56 | 63 | 0.003399296 | 0.00459043 |
Suitable | 54 | 65 | 0.003277892 | 0.004369536 |
Design | 53 | 64 | 0.003217191 | 0.004316287 |
Activity | 51 | 58 | 0.003095787 | 0.004295064 |
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Total Documents | Proportion of Documents Supported | Top 10 High-Frequency Words |
---|---|---|
1405 | 46% | Not bad, convenient, straight hair, children, express delivery, hot air, effect, easy, feeling, operation |
27.5% | Effect, quality, speed, wind force, drying, positive comments, curls, essential oil, activities, price | |
26.4% | Dormitory, appearance, practical, noise, time, speed, shape, temperature, tactile, aesthetics |
No. | Specialty | Age | Position | Length of Employment |
---|---|---|---|---|
1 | Design engineering | 38 | Project Manager | 10 |
2 | Industrial design | 39 | Project Manager | 10 |
3 | Industrial design | 43 | Professor | 14 |
4 | Industrial design | 46 | Professor | 16 |
5 | Design engineering | 55 | Senior Researcher | 27 |
Topic | Indexes | Explanation |
---|---|---|
User experience | Adaptability | The product should be adaptable to the needs of users with different hair types, such as providing different temperature and wind speed settings. |
Usage scenarios | To design a product that meets user needs, considering the scenarios in which users will use the product, such as travel or home use, is essential. | |
Ease of use | Product design should consider a user-friendly control interface that facilitates ease of use for the users. | |
Safety | Considering the needs of children using the product, the design should prioritize both safety and convenience. | |
Performance-cost ratio | Practicality | The practicality and performance of the product should receive attention, including factors such as speed and power. |
Product quality | Using high-quality materials is essential to ensure product quality and performance. | |
Price advantage | To ensure price advantage, it is important to reduce product costs while considering the product’s appearance and target market segment to attract customers. | |
User reputation | Considering user reviews and feedback is crucial to understand how the product is performing in the market. | |
Performance and aesthetics | Appearance design | Emphasizing the exterior design of the product to align with fashion and aesthetic standards is important. |
Noise control | Adopting advanced technology to reduce noise and provide a better user experience is essential. | |
Temperature control | Providing adjustable temperature control is essential to meet the diverse needs of different users. | |
Tactile feel design | Considering the tactile design of the product is crucial to ensure user comfort. |
Sample | Details |
---|---|
Sample 1 | Advantages: The product basically meets the needs of cordless hairdryer in terms of adaptability, operation convenience and practicability. Disadvantages: The evaluation of product characteristics is low, especially in appearance design and hand feeling design. In addition, the security design is relatively simple, and the user reputation is general. |
Sample 2 | Advantages: The product has been recognized by experts in all aspects of the evaluation subject. Disadvantages: The power of the product is relatively small, which is a common technical difficulty in cordless hairdryers. |
Category | Count | Ratio (%) | |
---|---|---|---|
Gender | Male | 119 | 48.77 |
Female | 125 | 51.23 | |
Age | 20 or younger | 13 | 5.33 |
21–29 | 88 | 36.07 | |
30–39 | 113 | 46.31 | |
40–49 | 20 | 8.20 | |
50–59 | 9 | 3.69 | |
60 or older | 1 | 0.41 | |
Education | Junior high school or below | 2 | 0.82 |
High school or secondary school | 9 | 3.69 | |
Undergraduate or college | 194 | 79.51 | |
Postgraduate or higher | 39 | 15.98 | |
Marriage Status | Unmarried | 90 | 36.89 |
Married | 154 | 63.11 | |
Monthly Income | 3000 or less | 46 | 18.85 |
3001–5000 | 30 | 12.30 | |
5001–8000 | 57 | 23.36 | |
8001–12,000 | 67 | 27.46 | |
12,001 or more | 44 | 18.03 | |
Occupation | Professionals (such as teachers/doctors/lawyers, etc.) | 32 | 13.11 |
Service workers (catering waiter/driver/salesperson, etc.) | 3 | 1.23 | |
Freelancers (such as writers/artists/photographers/tour guides, etc.) | 2 | 0.82 | |
Workers (such as factory workers/construction workers/urban sanitation workers, etc.) | 1 | 0.41 | |
Staff | 133 | 54.51 | |
Public institutions/civil servants/government workers | 16 | 6.56 | |
Student | 51 | 20.90 | |
Other | 6 | 2.46 | |
Area | North China: Beijing, Tianjin, Hebei, Shanxi, Inner Mongolia | 38 | 15.57 |
Northeast China: Liaoning, Jilin, Heilongjiang | 17 | 6.97 | |
East China: Shanghai, Jiangsu, Zhejiang, Anhui, Fujian, Jiangxi, Shandong | 105 | 43.03 | |
Central China: Henan, Hubei, Hunan | 23 | 9.43 | |
South China: Guangdong, Guangxi, Hainan | 43 | 17.62 | |
Southwest China: Chongqing, Sichuan, Guizhou, Yunnan, Tibet | 14 | 5.74 | |
Northwest China: Shaanxi, Gansu, Qinghai, Ningxia, Xinjiang | 1 | 0.41 | |
Hong Kong, Macao, Taiwan | 3 | 1.23 |
Dimension | Category | Mean | Standard Deviation | t | Significance (2-Tailed) |
---|---|---|---|---|---|
SA | Sample 1 | 3.62842 | 0.870380 | −7.102 | 0.000 |
Sample 2 | 4.13525 | 0.696464 | |||
PI | Sample 1 | 3.54372 | 1.119067 | −5.985 | 0.000 |
Sample 2 | 4.05874 | 0.744872 | |||
UH | Sample 1 | 3.26913 | 1.091168 | −4.951 | 0.000 |
Sample 2 | 3.71175 | 0.871365 | |||
CUI | Sample 1 | 3.38388 | 1.051354 | −4.978 | 0.000 |
Sample 2 | 3.81831 | 0.867675 |
Dimension | Gender | Mean | Standard Deviation | t | Significance (2-Tailed) |
---|---|---|---|---|---|
SA | Male | 3.87535 | 0.850173 | −0.169 | 0.866 |
Female | 3.88800 | 0.806537 | |||
PI | Male | 3.80952 | 0.967422 | −0.182 | 0.856 |
Female | 3.79333 | 1.001316 | |||
UH | Male | 3.50280 | 1.003856 | −0.263 | 0.792 |
Female | 3.47867 | 1.019549 | |||
CUI | Male | 3.58403 | 0.976127 | −0.372 | 0.710 |
Female | 3.61733 | 0.999224 |
Source | Dependent Variable | Type III Sum of Squares | Mean Square | F | Significance (2-Tailed) |
---|---|---|---|---|---|
Category × Gender | SA | 0.439 | 0.439 | 0.704 | 0.402 |
PI | 0.519 | 0.519 | 0.573 | 0.450 | |
UH | 0.767 | 0.767 | 0.785 | 0.376 | |
CUI | 0.938 | 0.938 | 1.008 | 0.316 |
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Miao, W.; Lin, K.-C.; Wu, C.-F.; Sun, J.; Sun, W.; Wei, W.; Gu, C. How Could Consumers’ Online Review Help Improve Product Design Strategy? Information 2023, 14, 434. https://doi.org/10.3390/info14080434
Miao W, Lin K-C, Wu C-F, Sun J, Sun W, Wei W, Gu C. How Could Consumers’ Online Review Help Improve Product Design Strategy? Information. 2023; 14(8):434. https://doi.org/10.3390/info14080434
Chicago/Turabian StyleMiao, Wei, Kai-Chieh Lin, Chih-Fu Wu, Jie Sun, Weibo Sun, Wei Wei, and Chao Gu. 2023. "How Could Consumers’ Online Review Help Improve Product Design Strategy?" Information 14, no. 8: 434. https://doi.org/10.3390/info14080434
APA StyleMiao, W., Lin, K. -C., Wu, C. -F., Sun, J., Sun, W., Wei, W., & Gu, C. (2023). How Could Consumers’ Online Review Help Improve Product Design Strategy? Information, 14(8), 434. https://doi.org/10.3390/info14080434