Monitoring Events of Market Competitors: A Text Mining Method for Analyzing Massive Firm-Generated Social Media
Abstract
:1. Introduction
2. Literature Review
2.1. Social-Media-Based Market Intelligence
2.2. Market Competition and Firm Action in a Market
3. Research Methodology
3.1. Research Problem Statement
- Obtaining the complete representation of ; that is, obtaining the total triggers (features) for each event ;
- Determining the semantic similarity between and E, where , and .
3.2. FAE Method: Extracting Business Event
3.2.1. Word-Embedding Process
3.2.2. Learning Process
3.2.3. Inference Process
3.3. Method for Exploring Market Competition
4. Experiment Results
4.1. Data Collection
4.2. Business Events in Firm-Generated Content
4.3. Performance of FAE
4.4. Exploring Market Competition
4.4.1. Overall Competitive Landscape in the Market
4.4.2. Exploring Behavior-Based Competition
4.4.3. Exploring Time-Based Competition
5. Discussion
5.1. Generalizability of the Study
5.2. Research Implications
5.3. Managerial Implications
5.4. Limitations
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Literature | Research Goals | Methods | Contributions |
---|---|---|---|
[2,40,41,42] | Develop models for competitor identification | Hypotheses test | Propose a cognitive framework for the identification of competitors |
[5,6,7,8,9,10,43,44,45,46,47,48] | Competitive positioning; testing market structure | Empirical | Managers must be mindful to incorporate new information proactively from many sources and to actively discard old, automatic maps in order to develop reliable maps for changing environments |
[11,12,13,49,50,51] | Dynamic competition identification; resource-based competition | Concept model | Develop a market-based and resource-based framework for broad competitor identification |
[14,15,16,52,53,54] | Product competitive advantage analysis | Data mining | Identify competitors from UGC |
Description | Statistics |
---|---|
Total number of Weibos | 436,310 |
Maximum number of Weibos posted by firms | 20,834 |
Minimum number of Weibos posted by firms | 16 |
Average number of Weibos posted | 3605.87 |
Total words in the dataset | 230,771 |
Total keywords in the dataset | 33,043 |
Maximum number of words in Weibo text | 75 |
Minimum number of words in Weibo text | 1 |
Average number of words in Weibo text | 20.83 |
Maximum number of keywords in Weibo text | 52 |
Minimum number of keywords in Weibo text | 1 |
Average number of keywords in Weibo text | 5.14 |
Event Types | Top 5 Event Triggers |
---|---|
Sale | publish/release; buy/purchase; publish and sale; customized; sell |
Cooperation | cooperate; unite; join hands; coalesce; build |
Promotion | order/subscribe; obtain/gain; share; earn; extract |
Research | design; innovate; apply; upgrade; research |
Recruiting | participate in; recruit; recruit; join; look for |
Event | Seed Weibos | Total Terms | Verbs (Initial) | Ratio of Verbs | Verbs (Denoised) | Enriched Triggers |
---|---|---|---|---|---|---|
Recruiting | 600 | 4812 | 969 | 20.14% | 918 | 388 |
Cooperation | 600 | 6546 | 950 | 14.51% | 900 | 391 |
Research | 600 | 6628 | 1171 | 17.67% | 1120 | 61 |
Promotion | 600 | 4241 | 1238 | 29.19% | 1187 | 77 |
Sale | 600 | 4729 | 1060 | 22.41% | 1009 | 230 |
NULL | 600 | 2544 | 1032 | 40.57% | 981 | 444 |
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Yuan, H.; Deng, W.; Ma, B.; Qian, Y. Monitoring Events of Market Competitors: A Text Mining Method for Analyzing Massive Firm-Generated Social Media. J. Theor. Appl. Electron. Commer. Res. 2023, 18, 908-927. https://doi.org/10.3390/jtaer18020047
Yuan H, Deng W, Ma B, Qian Y. Monitoring Events of Market Competitors: A Text Mining Method for Analyzing Massive Firm-Generated Social Media. Journal of Theoretical and Applied Electronic Commerce Research. 2023; 18(2):908-927. https://doi.org/10.3390/jtaer18020047
Chicago/Turabian StyleYuan, Hua, Wenjun Deng, Baojun Ma, and Yu Qian. 2023. "Monitoring Events of Market Competitors: A Text Mining Method for Analyzing Massive Firm-Generated Social Media" Journal of Theoretical and Applied Electronic Commerce Research 18, no. 2: 908-927. https://doi.org/10.3390/jtaer18020047
APA StyleYuan, H., Deng, W., Ma, B., & Qian, Y. (2023). Monitoring Events of Market Competitors: A Text Mining Method for Analyzing Massive Firm-Generated Social Media. Journal of Theoretical and Applied Electronic Commerce Research, 18(2), 908-927. https://doi.org/10.3390/jtaer18020047