Research on the Optimal Live-Streaming Strategy Under the Influence of Consumer Preferences: Taking Agriculture and Cultural Tourism Enterprise as an Example
Abstract
:1. Introduction
- (i)
- The current literature primarily relies on qualitative and case-based analyses of ACT projects, lacking quantitative research that could support ACT practice.
- (ii)
- Most prior studies on consumer types are inadequate, which diminishes both the theoretical value and practical significance of the related methods.
- (i)
- How do different consumer types influence ACT market demand?
- (ii)
- What are the conditions for establishing separating and pooling equilibria?
- (iii)
- How does the ACT enterprise maximize its profit under various scenarios?
- (iv)
- How do changes in consumer types and the impact of the first-stage live-streaming strategy on consumer behavior in the second stage affect the enterprise’s live-streaming strategy and profits?
- (i)
- Investigating different strategies employed by the ACT enterprise to attract consumers with varying consumption preferences and meet market demand.
- (ii)
- Constructing a signaling game model to analyze the conditions for the formation of the separating equilibrium and the pooling equilibrium under different parameter settings.
- (iii)
- Comparing the ACT enterprise’s profits under various circumstances and examining the influence of consumer type on optimal pricing.
- (iv)
- In a dynamic scenario, considering the increased probability of consumers consuming the high-quality project and the impact of the first-stage live-streaming strategy on the second stage, both factors jointly determine the profit gap between dynamic and static scenarios and the optimal investment in live-streaming strategies.
- (i)
- Theoretical significance: This study establishes a signaling game between the ACT enterprise and consumers, quantitatively analyzing the impact of consumer types on live-streaming strategies. It provides a reference for the subsequent theoretical research on ACT projects.
- (ii)
- Practical significance: this study derives conclusions based on theoretical models and extracts actionable management insights, providing decision-making guidance for the ACT enterprise and providing practical references for the comprehensive implementation of rural revitalization strategies.
2. Theoretical Background
2.1. Research About ACT
2.2. Research About Live Streaming
2.3. Research About Consumer Classification
3. Problem Description and Assumptions
- (i)
- For the high-quality project, ① when , all three types of consumers will buy products, ② when , quality-sensitive and quality-oriented consumers will buy products, and ③ when , only quality-sensitive consumers will buy products.
- (ii)
- For the low-quality project, ① when , both price- and quality-sensitive consumers will buy products, and ② when , only quality-sensitive consumers will buy products.
4. Static Equilibrium Analysis
4.1. Separating Equilibrium
4.2. Pooling Equilibrium
- (i)
- ① If or , there is only a pooling equilibrium;② If , there is only a separating equilibrium;③ If , we have and , pooling equilibrium belongs to LMSE.
- (ii)
- ① If or , there is only a pooling equilibrium;② If , there is only a separating equilibrium;③ If , we have and , the pooling equilibrium belongs to LMSE,where , , , , under the premise of .
- (i)
- High-quality project in separating/pooling equilibrium.① When② When③ When
- (ii)
- Low-quality project in separating/pooling equilibrium.① When② WhenNote: , , , , , , , , and . , , and are meaningful when they are less than 1.
5. Dynamic Equilibrium Analysis
- (i)
- In the separating equilibrium, the optimal live-streaming strategies are
- (ii)
- In the pooling equilibrium, the optimal live-streaming strategies are
- (i)
- There is a threshold . The profits in the dynamic scenario are greater than in the static scenario when , and the profits in the static scenario are greater than in the dynamic scenario when .
- (ii)
- As β increases, when only quality-sensitive consumers participate in consumption, the profit gap continues to decrease. When multiple types of consumers participate, the profit gap first increases and then decreases.
6. Numerical Analysis
7. Conclusions
- (1)
- This study delivers a quantitative analysis of ACT projects from a supply chain perspective. By constructing utility functions for the ACT enterprise grounded in signaling game theory, we effectively compare their profitability across various scenarios.
- (2)
- We integrate consumer-type impacts into the profitability analysis of the ACT enterprise, categorizing consumers into three distinct groups based on previous research. This framework enhances the realism of optimal live-streaming strategies and provides actionable guidance for the successful implementation of ACT projects.
7.1. Research Results
- (i)
- The existence of equilibrium mainly depends on the degree of punishment consumers impose for negative evaluations of the low-quality ACT project. When the degree of punishment exceeds a certain threshold, separating or pooling equilibrium will exist. Thus, only sufficiently severe punishment can curb opportunistic tendencies in the low-quality project. Considering the uncertainty of punishment intensity, there may be situations in the market where both separating and pooling equilibria are satisfied simultaneously. However, the LMSE criterion chooses the most profitable outcome for the high-quality project because it wants to reveal its type. Therefore, in this case, a pooling equilibrium exists.
- (ii)
- The types of consumers attracted by the ACT enterprise directly impact project pricing. When the enterprise targets only quality-sensitive consumers, the price is set at its highest. The price is moderate if it aims at both quality-oriented and quality-sensitive consumers. However, when the enterprise appeals to all types of consumers, the price becomes the lowest. It demonstrates that the pricing structure arises from the interplay between the varying preferences of consumers and the objective of maximizing profits for the enterprise. As the diversity of consumer types increases, the project price tends to decrease.
- (iii)
- The impact of the first-stage live-streaming strategy on the second stage has a specific threshold. When the effect is below this threshold, the influence of the first stage is relatively weak, indicating that the potential for using the first-stage live-streaming strategy to enhance the outcomes of the second stage is limited. In this case, the enterprise will likely invest more in the second stage to capture a larger market share. Conversely, when the impact exceeds this threshold, the enterprise should implement a more robust live-streaming strategy in the first stage. This strong positive effect can be a solid foundation for success in the subsequent stage.
- (iv)
- The profit advantage of the dynamic scenario is driven by two main factors: cross-stage strategic considerations and changes in consumer behavior. Consequently, in most instances, the profit from the dynamic scenario is higher than that from the static scenario. However, if quality-oriented consumers do not engage in consumption, the first-stage strategy can negatively impact the second stage. In this situation, the likelihood of consumers opting for the high-quality option significantly increases, resulting in profits from the static scenario exceeding those from the dynamic scenario.
7.2. Management Remark
- (i)
- Depending on the severity of penalties caused by negative consumer reviews, flexibly adopt either separating signals or pooling signals. Set low or high prices based on changes in the number of consumers and screen potential consumers.
- (ii)
- Monitoring the impact of the first-stage live-streaming strategy is crucial, as a positive influence that exceeds a certain threshold should prompt more investment in the first stage. In comparison, a negative impact should lead to more investment in the second stage.
- (iii)
- In situations where the live-streaming promotion environment in the second stage is unfavorable, opting for a live-streaming strategy tailored to the static scenario can help mitigate losses arising from negative impacts.
7.3. Limitations and Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
ACT | Agriculture and cultural tourism |
Appendix A
- (i)
- According to Equations (5), (7) and (9), the maximum profits of the high-quality project in the separating equilibrium can be derived as
- (i)
- From Equations (6), (8) and (10), the maximum profits of the low-quality project in the separating equilibrium are derived as follows:
- i
- Let (r = 1, 2, 3, 4) be shown as the difference between the profit of the enterprise in the dynamic and static scenario. There exists a threshold for each r such that . In a dynamic scenario, profits exceed those in the static scenario when . Conversely, in the static scenario, profits surpass those in the dynamic scenario when .
- ii
- According to Lemma 5, we need to calculate the first- and second-order partial derivatives of Bn (n = 1, 2, 3) with respect to β, where
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Symbol | Description |
---|---|
Parameters | |
The project type, | |
The cost per unit of live streaming | |
The benefit of consumers | |
The discount coefficient of quality concerns for price-sensitive consumers, | |
The discount coefficient of price concerns for quality-sensitive consumers, | |
The consumers’ perception of the quality of the project before consumption | |
The number of quality-oriented consumers | |
The number of quality-sensitive consumers | |
The number of price-sensitive consumers | |
The probability of the project being of high or low quality | |
The punishment for the enterprise due to negative consumer reviews | |
The market demand | |
The probability of adopting a high/low live-streaming strategy for the low-quality project | |
The proportion of consumers who give negative reviews to the low-quality project | |
The increased probability of quality-sensitive consumers purchasing the high-quality project, | |
The impact of the first-stage live-streaming strategy on the second stage, | |
Decision variables | |
The live-streaming strategy in the static separating/pooling equilibrium | |
The live-streaming strategy of the tth stage () in the dynamic separating/pooling equilibrium | |
The price of the high- ()/low-quality () project |
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Meng, F.; Wu, Y. Research on the Optimal Live-Streaming Strategy Under the Influence of Consumer Preferences: Taking Agriculture and Cultural Tourism Enterprise as an Example. J. Theor. Appl. Electron. Commer. Res. 2025, 20, 89. https://doi.org/10.3390/jtaer20020089
Meng F, Wu Y. Research on the Optimal Live-Streaming Strategy Under the Influence of Consumer Preferences: Taking Agriculture and Cultural Tourism Enterprise as an Example. Journal of Theoretical and Applied Electronic Commerce Research. 2025; 20(2):89. https://doi.org/10.3390/jtaer20020089
Chicago/Turabian StyleMeng, Fanyong, and Yu Wu. 2025. "Research on the Optimal Live-Streaming Strategy Under the Influence of Consumer Preferences: Taking Agriculture and Cultural Tourism Enterprise as an Example" Journal of Theoretical and Applied Electronic Commerce Research 20, no. 2: 89. https://doi.org/10.3390/jtaer20020089
APA StyleMeng, F., & Wu, Y. (2025). Research on the Optimal Live-Streaming Strategy Under the Influence of Consumer Preferences: Taking Agriculture and Cultural Tourism Enterprise as an Example. Journal of Theoretical and Applied Electronic Commerce Research, 20(2), 89. https://doi.org/10.3390/jtaer20020089