Empirical Research on the Influencing Factors and Causal Relationships of Enterprise Positive Topic Heat on Online Social Platforms
Abstract
1. Introduction
1.1. Research Background
1.2. Literature Review
2. Materials and Methods
2.1. Research Hypotheses
2.2. Data and Samples
2.3. Variables and Measurements
2.3.1. Explained Variable
2.3.2. Explanatory Variables
2.3.3. Control Variables
2.4. Research Models
2.5. Descriptive Statistics
3. Results
3.1. Testing the Relationship Between Topic Host and Topic Heat
3.2. Testing the Relationship Between Host Attributes and Topic Heat
3.3. Testing the Relationship Between Host Activity Level and Topic Heat
3.4. Robustness Test
3.5. Optimization of Enterprise Positive Topic Heat Enhancement Strategies for Cost Performance
3.5.1. Defining Cost Performance of Hosts
3.5.2. Host Cost Performance Calculation
4. Discussion
5. Conclusions
5.1. Research Findings
5.2. Practical Implications
5.3. Research Limitations
5.4. Future Research Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Host Attributes | Account Characteristics |
---|---|
Gold V | High-impact creators, the most influential and valuable V; the number of account followers, reading volume, interaction rate and other indicators have high requirements. |
Blue V | Enterprise official accounts, traditional media accounts and government microblogs, representing a certain degree of authority. |
Yellow V | Certified authors; users can apply if they meet the certification threshold, and their influence is small compared to gold V. |
Non-V | Ordinary users |
Activity Level | Basis for Classification |
---|---|
Rank I (high-high) | Both the number of posts and followers are higher than the average of the corresponding variables for all hosts of this attribute |
Rank II (high-low) | Posts above the average number of posts for all hosts of this attribute, and followers below the average number of followers for all hosts of that attribute |
Rank III (low-high) | Posts below the average number of posts for all hosts of this attribute, and followers above the average number of followers for all hosts of that attribute |
Rank IV (low-low) | Both the number of posts and followers are lower than the average of the corresponding variables for all hosts of this attribute |
Typology | Variable Name (Abbreviation) | Variable Definition |
---|---|---|
Explained Variable | topic heat () | The product of the sum of the search heat, discussion heat and spread heat and the interaction rate; a larger value indicates that the topic publicity effect is better. |
Explanatory Variables | topic host () | If the topic has a host, it is assigned a value of 1; otherwise, it is assigned a value of 0. |
host attribute () | n ranges from 1 to 4, representing Non-V, Blue V, Gold V, and Yellow V, respectively. If the attribute of the topic host matches a given dummy variable’s attribute, the value is set to 1; otherwise, it is set to 0. | |
host activity level () | n ranging from 1 to 4 to represent ranks I to IV, respectively. If the rank of the topic host matches the corresponding dummy variable rank, it is assigned a value of 1; otherwise, it is assigned a value of 0. | |
Control Variables | time of day on the list () | The amount of time a topic stays on the Weibo Hotlist. |
original volume () | Number of original tweets posted carrying hot topics, not including related tweet retweets. | |
accurate posting volume () | Total number of tweets that can be searched by omitting some of the similar results under the topic. | |
host posting volume () | Total number of tweets posted by topic hosts since account creation. | |
host’s follower number () | Total number of followers a topic host has. | |
host’s following number () | Number of other Weibo users followed by the topic host. |
Host Attributes | Variables | Sample Size | Mean | Median | Standard Deviation | Minimum | Maximum |
---|---|---|---|---|---|---|---|
No host | Heat | 483 | 58.919 | 30.948 | 120.310 | 0.932 | 1505.691 |
Time | 157.723 | 93 | 173.216 | 1 | 1023 | ||
Original | 62,052.317 | 3765 | 267,532.391 | 8 | 4,288,000 | ||
Accurate | 1416.605 | 302 | 10,482.745 | 0 | 208,198 | ||
Non-V | Heat | 783 | 46.004 | 29.820 | 47.393 | 1.040 | 451.717 |
Time | 144.783 | 114 | 130.700 | 1 | 757 | ||
Original | 12,406.987 | 1220 | 129,075.510 | 9 | 3,023,900 | ||
Accurate | 237.628 | 224 | 372.510 | 0 | 10,044 | ||
Posting | 1.021 | 0.644 | 1.070 | 0 | 5.534 | ||
Follower | 188.700 | 107.595 | 440.581 | 0.001 | 8400 | ||
Following | 696.807 | 394 | 777.218 | 0 | 4548 | ||
Blue V | Heat | 1152 | 46.935 | 27.200 | 64.404 | 0.248 | 1143.487 |
Time | 172.396 | 123.500 | 170.511 | 1 | 1225 | ||
Original | 8489.743 | 637 | 154,885.350 | 9 | 4,999,000 | ||
Accurate | 200.605 | 198 | 158.541 | 0 | 1437 | ||
Posting | 10.235 | 9.575 | 7.326 | 0.002 | 33.618 | ||
Follower | 2312.941 | 578.600 | 3942.240 | 0.385 | 15,300 | ||
Following | 1517.947 | 1264 | 1508.607 | 9 | 32,525 | ||
Gold V | Heat | 1177 | 74.729 | 58.580 | 110.602 | 0.901 | 1218.941 |
Time | 227.760 | 187 | 182.942 | 1 | 1325 | ||
Original | 6911.025 | 1409 | 49,175.089 | 12 | 1,196,000 | ||
Accurate | 230.425 | 245 | 105.848 | 0 | 968 | ||
Posting | 3.541 | 2.375 | 3.862 | 0.034 | 54.062 | ||
Follower | 662.033 | 617.668 | 482.721 | 3.400 | 6329.351 | ||
Following | 1076.427 | 969 | 822.529 | 2 | 5652 | ||
Yellow V | Heat | 1091 | 67.989 | 53.619 | 55.173 | 0.924 | 543.417 |
Time | 229.630 | 205 | 175.304 | 1 | 878 | ||
Original | 5958.312 | 2373 | 12,193.318 | 33 | 137,000 | ||
Accurate | 234.388 | 249 | 114.821 | 0 | 1697 | ||
Posting | 2.228 | 1.417 | 2.522 | 0.008 | 29.733 | ||
Follower | 429.443 | 329.359 | 438.902 | 0.010 | 7060 | ||
Following | 1028.798 | 850 | 826.710 | 7 | 4753 |
Variables | Heat |
---|---|
Host | 13.028 *** |
(7.345) | |
Time | 0.086 *** |
(22.075) | |
Original | 0.001 *** |
(6.560) | |
Accurate | 0.051 *** |
(10.819) | |
cons | 9.923 *** |
(5.229) | |
N | 4686 |
R2 | 0.221 |
Variables | Heat | |||
---|---|---|---|---|
Non-V. | Blue V | Gold V | Yellow V | |
Attribute_1 | −8.843 *** | |||
(−6.422) | ||||
Attribute_2 | −9.532 *** | |||
(−7.125) | ||||
Attribute_3 | 3.825 *** | |||
(3.682) | ||||
Attribute_4 | 8.659 *** | |||
(6.435) | ||||
Time | 0.081 *** | 0.084 *** | 0.084 *** | 0.082 *** |
(19.285) | (20.264) | (20.157) | (19.844) | |
Original | 0.001 *** | 0.001 *** | 0.001 *** | 0.001 *** |
(6.477) | (5.913) | (6.535) | (5.796) | |
Accurate | 0.067 *** | 0.063 *** | 0.065 *** | 0.065 *** |
(12.140) | (11.399) | (11.813) | (11.848) | |
Posting | −0.729 *** | −0.030 | −0.519 *** | −0.400 *** |
(−4.811) | (−0.184) | (−3.381) | (−2.682) | |
Follower | 0.001 | 0.001 | 0.001 | 0.001 |
(0.904) | (0.871) | (0.981) | (1.374) | |
Following | 0.002 *** | 0.002 *** | 0.003 *** | 0.002 *** |
(3.192) | (3.509) | (3.675) | (3.202) | |
_cons | 22.200 *** | 20.371 *** | 17.894 *** | 16.818 *** |
(14.710) | (14.434) | (13.293) | (12.659) | |
N | 4203 | 4203 | 4203 | 4203 |
R2 | 0.242 | 0.242 | 0.236 | 0.244 |
Variables | Heat | |||
---|---|---|---|---|
Rank I (High-High) | Rank II (High-Low) | Rank III (Low-High) | Rank IV (Low-Low) | |
rank_1 | −4.397 | |||
(−1.617) | ||||
rank_2 | 3.644 | |||
(1.196) | ||||
rank_3 | −7.443 *** | |||
(−2.766) | ||||
rank_4 | 3.932 * | |||
(1.848) | ||||
Time | 0.072 *** | 0.072 *** | 0.071 *** | 0.072 *** |
(9.746) | (9.659) | (9.482) | (9.648) | |
_cons | 31.082 *** | 29.719 *** | 31.109 *** | 28.062 *** |
(21.449) | (21.202) | (21.289) | (16.016) | |
N | 783 | 783 | 783 | 783 |
R2 | 0.132 | 0.131 | 0.133 | 0.132 |
Variables | Heat | |||
---|---|---|---|---|
Rank I (High-High) | Rank II (High-Low) | Rank III (Low-High) | Rank IV (Low-Low) | |
rank_1 | −0.417 | |||
(−0.406) | ||||
rank_2 | −2.156 * | |||
(−1.854) | ||||
rank_3 | −0.636 | |||
(−0.622) | ||||
rank_4 | 1.589 * | |||
(1.728) | ||||
Time | 0.092 *** | 0.092 *** | 0.092 *** | 0.092 *** |
(25.219) | (25.227) | (25.230) | (25.239) | |
_cons | 26.587 *** | 26.790 *** | 26.604 *** | 25.718 *** |
(42.307) | (45.902) | (44.712) | (41.374) | |
N | 1091 | 1091 | 1091 | 1091 |
R2 | 0.077 | 0.077 | 0.077 | 0.077 |
Variables | Heat | |||
---|---|---|---|---|
Rank I (High-High) | Rank II (High-Low) | Rank III (Low-High) | Rank IV (Low-Low) | |
rank_1 | 17.637 *** | |||
(12.718) | ||||
rank_2 | 2.445 ** | |||
(2.333) | ||||
rank_3 | −9.786 *** | |||
(−6.995) | ||||
rank_4 | −14.476 *** | |||
(−16.497) | ||||
Time | 0.151 *** | 0.153 *** | 0.153 *** | 0.150 *** |
(44.908) | (43.950) | (44.505) | (44.383) | |
_cons | 24.186 *** | 27.800 *** | 28.359 *** | 36.746 *** |
(41.533) | (55.995) | (56.921) | (48.004) | |
N | 1152 | 1152 | 1152 | 1152 |
R2 | 0.053 | 0.049 | 0.049 | 0.052 |
Variables | Heat | |||
---|---|---|---|---|
Rank I (High-High) | Rank II (High-Low) | Rank III (Low-High) | Rank IV (Low-Low) | |
rank_1 | −0.474 | |||
(−0.507) | ||||
rank_2 | 1.954 * | |||
(1.902) | ||||
rank_3 | −3.030 *** | |||
(−3.436) | ||||
rank_4 | 1.554 ** | |||
(2.238) | ||||
Time | 0.078 *** | 0.078 *** | 0.079 *** | 0.078 *** |
(27.147) | (27.087) | (27.210) | (27.184) | |
_cons | 26.203 *** | 25.806 *** | 26.738 *** | 25.446 *** |
(55.614) | (53.428) | (57.188) | (48.758) | |
N | 1177 | 1177 | 1177 | 1177 |
R2 | 0.076 | 0.077 | 0.077 | 0.077 |
Host Attribute | Topic Heat Contribution | Average Posting Volume | Average Number of Followers | (α = 0.6) | (α = 0.7) |
---|---|---|---|---|---|
Non-V | 3.932 | 0.01086 | 0.00643 | 432.65845 | 412.54853 |
Blue V | 17.637 | 0.10979 | 0.12945 | 149.90566 | 152.45315 |
Yellow V | 1.589 | 0.02292 | 0.01654 | 78.014533 | 75.645054 |
Gold V | 1.954 | 0.04155 | 0.02886 | 53.572408 | 51.771189 |
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Fu, L.; Xu, K.; Wang, J. Empirical Research on the Influencing Factors and Causal Relationships of Enterprise Positive Topic Heat on Online Social Platforms. Information 2025, 16, 706. https://doi.org/10.3390/info16080706
Fu L, Xu K, Wang J. Empirical Research on the Influencing Factors and Causal Relationships of Enterprise Positive Topic Heat on Online Social Platforms. Information. 2025; 16(8):706. https://doi.org/10.3390/info16080706
Chicago/Turabian StyleFu, Li, Kai Xu, and Jiakun Wang. 2025. "Empirical Research on the Influencing Factors and Causal Relationships of Enterprise Positive Topic Heat on Online Social Platforms" Information 16, no. 8: 706. https://doi.org/10.3390/info16080706
APA StyleFu, L., Xu, K., & Wang, J. (2025). Empirical Research on the Influencing Factors and Causal Relationships of Enterprise Positive Topic Heat on Online Social Platforms. Information, 16(8), 706. https://doi.org/10.3390/info16080706