A Study on the Factors Influencing Users’ Online Knowledge Paying-Behavior Based on the UTAUT Model
Abstract
:1. Introduction
2. Literature Review
3. Theoretical Foundations and Model Assumptions
3.1. Improved Model
3.2. Research Hypotheses
3.2.1. User level
- Performance ExpectationIn this paper, performance expectation is defined as the extent to which users perceive an increase in the efficiency of a knowledge payment platform for learning, work, or other personal needs. Performance expectation can be expressed in several ways. Zhang found that the most critical needs of paid knowledge users were task completion and gaining expertise, followed by hobbies, self-improvement, emotional factors, saving time and energy, and social needs, respectively [41]. Research on online learning has shown that if users use a new platform or technology to improve their work performance, this expectation will increase their willingness-to-use it [43]. From a theoretical perspective, performance is the immediate utility of knowledge product purchases and the immediate goal of users’ consumption on knowledge platforms: namely, to enhance their substantive self-efficacy with learning effects. This pure motivation will drive an increase in users’ willingness-to-pay. In the context of learning motivation theory, the reinforcing power of performance on goals will act significantly on users’ internal activities and is a trigger mechanism for the internal arousal of human behavior [44]. The same is true in knowledge payment platforms, where paid content tends to be of higher quality than other content and is more helpful in improving users’ performance and more significant in terms of willingness and behavior to pay. Therefore, the following hypothesis is proposed in this paper.Hypothesis 1a.Performance expectations have a positive effect on users’ willingness-to-pay.Hypothesis 1b.Performance expectations have a positive effect on users’ paying behavior.
- Effort ExpectationIn this paper, effort expectation is defined as the ease of operational use of the knowledge payment platform as perceived by the user. Much like the perceived ease of use in the TAM model, Davis found that the ease of using an information system directly affects users’ willingness to adopt it [45]. Users want to improve their performance when using a knowledge payment platform and want it to be easy to learn and use. Guided by the theory of the technology acceptance model, the counter-decision of information platforms on users (i.e., influencing users’ willingness and inhibiting their use) exists mainly in terms of the experience of using the platform. When the technology is too complex and the barriers to use stand out, users will abandon their use in favor of alternatives, and conversely, they will actively embrace it. Based on this condition, users’ willingness and behavior to pay for knowledge payment products will also increase, so the following hypothesis is proposed.Hypothesis 2a.Effort expectations have a positive effect on users’ willingness-to-pay.Hypothesis 2b.Effort expectations have a positive effect on users’ paying behavior.
- Peer InfluenceIn this paper, peer influence is defined as the knowledge payment platform users’ role being influenced by those around them on their willingness-to-pay and their paying behavior. As a further subdivision of social impact, peer influence is similar to the variable of subjective norms in the TPB model. Taylor’s study found that significant surrounding people or groups positively influence an individual’s intention to make decisions and that behavioral intention, in turn, has a significant effect on actual behavior [46]. Peer influence is an external manifestation of the user resulting from a combination of rational behaviour theory, social cognitive theory and peer effects. In conjunction with the previous literature, it is clear that peers, especially opinion leaders, have a strong influence on the user body and, to a certain extent, on the final willingness-to-pay. Therefore when surrounding peers use or recommend information systems, users will enhance their intentions and behavior towards the system. The following hypothesis is proposed for this purpose:Hypothesis 3a.Peer influence has a positive effect on users’ willingness-to-pay.Hypothesis 3b.Peer influence has a positive effect on users’ paying behavior.
3.2.2. Knowledge-Provider Level
- Content QualityIn this paper, content quality is defined as the level of quality of content provided to users in a knowledge payment platform, encompassing the content’s relevance, interpretability, accuracy, and timeliness. There are seven main factors distilled from online knowledge paying behavior, of which the quality of information is key to influencing paying behavior [41]. Using UTAUT as a theoretical basis, Siqing analyzed the factors influencing users’ willingness-to-use regarding acceptance factors, risk factors, and content factors in a tripartite manner [49]. He used UTAUT as the theoretical basis and introduced three variables, such as information quality, to construct a theoretical model of factors influencing mobile library users’ willingness-to-use [50]. Ángel used UTAUT theory as a basis to add three antecedent variables, such as information quality, to study the usage behavior of academic, social networks [51]. Also, numerous studies have shown that users’ judgment of content quality is a decisive factor in knowledge paying behavior and suggests that no effort should be spared to improve knowledge payment products [52,53].Hypothesis 4a.Content quality has a positive effect on users’ willingness-to-pay.Hypothesis 4b.Content quality has a positive effect on users’ paying behavior.
- KOL InfluenceIn this paper, KOL influence is defined as the extent to which KOLs influence knowledge payment users on their willingness-to-pay and their paying behavior. The KOLs include celebrities, experts, internet celebrities, and bloggers. Rogers argues that KOLs can exert varying degrees of influence on individual decisions and that KOLs are characterized by innovation, expertise, and high levels of product involvement [54]. The results of a study by Li show that the professionalism, popularity, and homogeneity of KOLs have a significant impact on users’ paid spectatorship behavior [22]. This paper, therefore, proposes the following research hypothesis and uses professionalism, visibility, and innovation as indicators of KOL influence.Hypothesis 5a.KOL influence has a positive impact on users’ willingness-to-pay.Hypothesis 5b.KOL influence has a positive impact on users’ paying behavior.
3.2.3. Platform Level
- Perceived TrustIn this paper, perceived trust is defined as the level of trust users feel when using a knowledge payment platform. Perceived trust contributes to willingness-to-pay and paying behavior, where trust includes trust in the platform, trust in the product, and trust in security. The trust that users perceive from the platform leads to positive behavioral influences in individuals [59]. Yin extended the UTAUT model based on trust perception and risk perception to explore the factors influencing consumers’ willingness to purchase drugs online, confirming that trust perception positively and significantly affects purchase intention [60]. Chen integrated the UTAUT and ITM models, introduced trust theory to construct a user acceptance model of WeChat payment, and empirically analyzed user behavior’s critical factors using WeChat payment [61]. In health apps, trust is also a key factor influencing users’ willingness-to-use and usage behavior [36]. The following research hypothesis is therefore proposed in this paper.Hypothesis 6a.Perceived trust has a positive effect on users’ willingness-to-pay.Hypothesis 6b.Perceived trust has a positive effect on users’ paying behavior.
- Perceived InteractionIn this paper, perceived interaction was defined as the communication and interaction that users feel with other users through the knowledge payment platform, including comments, likes, content interaction, etc. Knowledge payment platforms have social attributes that allow users’ emotions to be satisfied through interaction, thus enabling social networking connections to be made between users [62]. Interaction enhances the user’s ability to control the knowledge content and supports the purchase decision by establishing cognitive preferences [63]. In studying user usage behavior of paid knowledge products, Boratto added six additional variables such as interaction motivation to the original UTAUT model [64]. In a study of factors influencing MOOC (Massive Open Online Course) users’ persistent use behavior, Li confirmed that social interaction had a significant positive effect on expectation confirmation [65]. Wang studied webcast app usage behavior based on the TAM and UTAUT models and found that perceived interaction positively impacts user usage behavior [66]. In summary, the following hypothesis is proposed in this paper.Hypothesis 7a.Perceived interaction has a positive effect on users’ willingness-to-pay.Hypothesis 7b.Perceived interaction has a positive effect on users’ paying behavior.
- Perceived CostIn this paper, perceived cost is defined as the user’s perception and evaluation of the cost to be paid when using a knowledge payment platform. If the user’s perceived cost is more significant than their expected benefit, the willingness-to-pay is low, and conversely, the willingness-to-pay is high. In a channel study of e-commerce, Devaraj found that perceived cost harmed continued willingness-to-use [67]. In a study on the factors influencing users’ willingness to use knowledge-paying apps consistently, Zhao also confirmed the negative role of perceived costs [68]. In a study on the intention to continue using mobile communication services, Alexandre concluded that perceived cost’s effect on behavioral attitudes was not significant [12]. Based on the above research, this paper will continue to explore the impact of perceived cost on users’ willingness-to-pay and paying behavior on knowledge payment platforms and propose the following research hypotheses.Hypothesis 8a.Perceived cost has a negative effect on users’ willingness-to-pay.Hypothesis 8b.Perceived cost has a negative effect on users’ paying behavior.In the original UTAUT model, willingness-to-use had a significant effect on usage behavior [33]; In the TPB model, behavioral intention also has a significant positive effect on actual behavior [46]. Therefore, this paper assumes a positive relationship between users’ willingness-to-pay and paying behavior and will expand to investigate the mediating effect of willingness-to-pay on each antecedent variable and paying behavior. The following hypothesis is ultimately proposed.Hypothesis 9:Willingness-to-pay has a positive effect on users’ paying behavior;Hypothesis 10:The mediating effect of users’ willingness-to-pay is significant in the relationship between the antecedent variables and paying behavior.
4. Research Design
4.1. Questionnaire Design
4.2. Data Collection
5. Data Analysis
5.1. Measurement Model
5.2. Structural Model Testing and Discussion of Results
5.3. Indirect Effects Test
6. Conclusions and Recommendations
- Focus on platform content management
- Appropriate use of “price war” strategies
- Deepening the social impact of users
- Improving the quality of KOLs and making rational use of the “Netflix economy”
7. Insufficient Research
- The limited number of questionnaires, the small number of stratified groups, and the fact that the study is primarily based on a Chinese perspective may make the results non-generalizable. However, this study can still positively serve developing countries’ online knowledge payment platforms in their infancy by expanding on the findings and analyzing them. In subsequent studies, we will continue to expand the sample to enable comparisons across countries and draw more generalizable conclusions.
- In the methodology, the SEM structural equation model and the mediating effects model are used. The validity and explanatory power of the models are reasonable, but the overall difficulty is slightly lower, and there is some endogeneity and error in the methods. We will continue to supplement the theoretical and practical models in subsequent studies, combine complex systems theory to solve the error problem and obtain a more realistic and practical hypothesis testing path.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable Name | Literature Sources |
---|---|
Performance expectation | [33,51] |
Effort expectation | [33,11] |
Peer influence | [46,12,39] |
Content quality | [69,70] |
KOL influence | [54,22] |
Perceived trust | [71,72] |
Perceived interaction | [73,74,75] |
Perceived cost | [76,77] |
Willingness-to-pay | [33,78] |
Paying behavior | [33,79] |
Variables | Features | Frequency | Percentage (%) |
---|---|---|---|
Gender | Male | 226 | 49.3 |
Female | 232 | 50.7 | |
Age | <18 | 2 | 0.4 |
18−25 | 332 | 72.5 | |
26−30 | 34 | 7.4 | |
31−40 | 32 | 7.0 | |
41−50 | 54 | 11.8 | |
>50 | 4 | 0.9 | |
Education level | Junior High School and below | 22 | 4.8 |
High School or Post-Secondary | 47 | 10.3 | |
College | 79 | 17.2 | |
Undergraduate | 191 | 41.7 | |
Master’s and above | 119 | 26.0 | |
Occupation | Students | 311 | 67.9 |
State agencies, institutions | 74 | 16.2 | |
Enterprise employees | 57 | 12.4 | |
Other occupations | 16 | 3.5 | |
Monthly income | <CNY 1499 | 84 | 18.3 |
CNY 1500−2999 | 241 | 52.6 | |
CNY 3000−5999 | 84 | 18.3 | |
CNY 6000−9999 | 33 | 7.2 | |
>CNY 10,000 | 16 | 3.5 |
Dimensionality | Measurement Items | Factor Loadings | Cronbach α | AVE | CR |
---|---|---|---|---|---|
Performance expectation | PE1 | 0.871 | 0.84 | 0.64 | 0.84 |
PE2 | 0.722 | ||||
PE3 | 0.805 | ||||
Effort expectation | HE1 | 0.896 | 0.85 | 0.67 | 0.86 |
HE2 | 0.780 | ||||
HE3 | 0.767 | ||||
Peer Influence | CA1 | 0.885 | 0.84 | 0.65 | 0.85 |
CA2 | 0.724 | ||||
CA3 | 0.804 | ||||
Content Quality | CQ1 | 0.780 | 0.86 | 0.67 | 0.86 |
CQ2 | 0.805 | ||||
CQ3 | 0.863 | ||||
KOL Influence | OLA1 | 0.854 | 0.85 | 0.66 | 0.85 |
OLA2 | 0.790 | ||||
OLA3 | 0.791 | ||||
Perceived Trust | FT1 | 0.811 | 0.83 | 0.62 | 0.83 |
FT2 | 0.755 | ||||
FT3 | 0.803 | ||||
Perceived Interaction | FI1 | 0.842 | 0.86 | 0.68 | 0.86 |
FI2 | 0.821 | ||||
FI3 | 0.806 | ||||
Perceived Cost | FC1 | 0.928 | 0.88 | 0.72 | 0.88 |
FC2 | 0.777 | ||||
FC3 | 0.834 | ||||
Willingness-To-Pay | UI1 | 0.831 | 0.85 | 0.65 | 0.85 |
UI2 | 0.787 | ||||
UI3 | 0.804 | ||||
Paying Behavior | UB1 | 0.776 | 0.83 | 0.61 | 0.83 |
UB2 | 0.775 | ||||
UB3 | 0.797 |
Variables | Performance-Expectation | Effort Expectation | Peer Influence | Content Quality | KOL Influence | Perceived Trust | Perceived Interaction | Perceived Cost | Willingness-To-Pay | Paying Behavior |
---|---|---|---|---|---|---|---|---|---|---|
Performance-Expectation | 0.802 | |||||||||
Effort Expectation | 0.348 | 0.816 | ||||||||
Peer Influence | 0.379 | 0.345 | 0.807 | |||||||
Content-Quality | 0.383 | 0.403 | 0.338 | 0.817 | ||||||
KOL-Influence | 0.361 | 0.324 | 0.351 | 0.366 | 0.811 | |||||
Perceived Trust | 0.318 | 0.376 | 0.380 | 0.372 | 0.323 | 0.790 | ||||
Perceived Interaction | 0.309 | 0.334 | 0.325 | 0.371 | 0.315 | 0.315 | 0.823 | |||
Perceived Cost | −0.357 | −0.342 | −0.368 | −0.383 | −0.379 | −0.339 | −0.344 | 0.849 | ||
Willingness-To-Pay | 0.438 | 0.499 | 0.522 | 0.549 | 0.499 | 0.481 | 0.488 | −0.444 | 0.808 | |
Paying Behavior | 0.545 | 0.553 | 0.582 | 0.618 | 0.530 | 0.522 | 0.568 | −0.600 | 0.750 | 0.783 |
Fit Index | GFI | AGFI | IFI | CFI | NFI | RMSEA | |
---|---|---|---|---|---|---|---|
Recommended value | <3 | >0.90 | >0.80 | >0.90 | >0.90 | >0.90 | <0.08 |
Actual value | 1.314 | 0.938 | 0.920 | 0.986 | 0.986 | 0.944 | 0.026 |
Serial Number | Relationship | Path Factor | Significance | T-Value | Test Result |
---|---|---|---|---|---|
H1a | Performance expectation→willingness-to-pay | 0.042 | 0.369 | 0.899 | Not Support |
H2a | Effort expectation→willingness-to-pay | 0.164 | *** | 3.534 | Support |
H3a | Peer influence→willingness-to-pay | 0.206 | *** | 4.364 | Support |
H4a | Content quality→willingness-to-pay | 0.24 | *** | 4.837 | Support |
H5a | KOL influence→willingness-to-pay | 0.191 | *** | 4.094 | Support |
H6a | Perceived trust→willingness-to-pay | 0.139 | ** | 2.895 | Support |
H7a | Perceived interaction→willingness-to-pay | 0.183 | *** | 4.049 | Support |
H8a | Perceived cost→willingness-to-pay | −0.027 | 0.546 | −0.604 | Not Support |
H1b | Performance expectation→paying behavior | 0.128 | *** | 3.629 | Support |
H2b | Effort expectation→paying behavior | 0.088 | * | 2.46 | Support |
H3b | Peer influence→paying behavior | 0.142 | *** | 3.796 | Support |
H4b | Content quality→paying behavior | 0.163 | *** | 4.102 | Support |
H5b | KOL influence→paying behavior | 0.06 | 0.098 | 1.655 | Not Support |
H6b | Perceived trust→paying behavior | 0.064 | 0.079 | 1.754 | Not Support |
H7b | Perceived interaction→paying behavior | 0.165 | *** | 4.631 | Support |
H8b | Perceived cost→paying behavior | −0.191 | *** | −5.566 | Support |
H9 | Willingness-to-pay→paying behavior | 0.327 | *** | 5.289 | Support |
Indirect Effects | Estimated Value | 95%CI | p | Conclusion (with or without Intermediary) | |
---|---|---|---|---|---|
Lower | Upper | ||||
Performance expectation→willingness-to-pay→paying behavior | 0.014 | −0.008 | 0.066 | 0.184 | No |
Effort expectation→willingness-to-pay→paying behavior | 0.054 | 0.013 | 0.133 | ** | Yes |
Peer influence→willingness-to-pay→paying behavior | 0.068 | 0.018 | 0.152 | ** | Yes |
Content quality→willingness-to-pay→paying behavior | 0.079 | 0.015 | 0.181 | * | Yes |
KOL influence→willingness-to-pay→paying behavior | 0.062 | 0.016 | 0.169 | ** | Yes |
Perceived trust→willingness-to-pay→paying behavior | 0.045 | 0.004 | 0.15 | * | Yes |
Perceived interaction→willingness-to-pay→paying behavior | 0.06 | 0.018 | 0.147 | ** | Yes |
Perceived cost→willingness-to-pay→paying behavior | -0.009 | -0.06 | 0.017 | 0.352 | No |
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Yu, L.; Chen, Z.; Yao, P.; Liu, H. A Study on the Factors Influencing Users’ Online Knowledge Paying-Behavior Based on the UTAUT Model. J. Theor. Appl. Electron. Commer. Res. 2021, 16, 1768-1790. https://doi.org/10.3390/jtaer16050099
Yu L, Chen Z, Yao P, Liu H. A Study on the Factors Influencing Users’ Online Knowledge Paying-Behavior Based on the UTAUT Model. Journal of Theoretical and Applied Electronic Commerce Research. 2021; 16(5):1768-1790. https://doi.org/10.3390/jtaer16050099
Chicago/Turabian StyleYu, Liying, Zixuan Chen, Pinbo Yao, and Hongda Liu. 2021. "A Study on the Factors Influencing Users’ Online Knowledge Paying-Behavior Based on the UTAUT Model" Journal of Theoretical and Applied Electronic Commerce Research 16, no. 5: 1768-1790. https://doi.org/10.3390/jtaer16050099
APA StyleYu, L., Chen, Z., Yao, P., & Liu, H. (2021). A Study on the Factors Influencing Users’ Online Knowledge Paying-Behavior Based on the UTAUT Model. Journal of Theoretical and Applied Electronic Commerce Research, 16(5), 1768-1790. https://doi.org/10.3390/jtaer16050099