Enhancing Short-Term Sales Prediction with Microblogs: A Case Study of the Movie Box Office
Abstract
:1. Introduction
- Unlike previous works that focused on event detection or prediction from microblogging platforms, this paper concentrates on short-term product sales based on microblogs and presents a new framework based on sentiment analysis and social influence.
- We propose a new feature called social influence to reflect the impact of social-network information diffusion on short-term product sales. A new algorithm is presented to measure the social influence in the paper.
- We conduct experiments on a real dataset to evaluate the performance of the proposed framework. We take movie box office prediction as a case study and analyze the prediction performance of two regression models. The results show that the proposed sentiment feature and influence feature of microblogs play a positive role in improving the prediction precision.
2. Related Work
2.1. Microblog Influence Analysis
2.2. Social Network-Based Information Prediction
3. Framework of the Microblog-Based Short-Term Sales Prediction
3.1. Architecture
3.2. Sentiment Analysis
Algorithm 1Sentiment Feature Extraction |
Input: The set of all the related microblogs in one day, M; Output: Sentiment Feature pd Preliminary: is the set of the preprocessed microblogs is the set of all the topics in the LDA Model /* Preprocessing microblogs */
|
3.3. Social Influence
Algorithm 2Influence Feature Extraction |
Input: The set of all the related microblogs in one day, M; The sentiment of each microblog, Influence of each microblog, Output: Influence Feature,
|
3.4. Prediction Model
4. Experiments
4.1. Settings
4.2. Results
5. Conclusions and Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
References
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Notation | Description |
---|---|
m | A document, which refers to a microblog in this paper. |
n | A word in a microblog |
A topic in a microblog | |
N | The word count of a document |
. | |
The sentiment polarity of the word n. | |
The sentiment polarity of the microblog m. | |
d | A day |
The proportional difference between positive and negative sentiment within the day d. | |
The influence of the microblog m. | |
The normalized influence of the microblog m. | |
The social influence of the microblog m. | |
The social influence of the microblog within the day d. |
Movie ID | Movie Title | Start Time | End Time | Days on Show |
---|---|---|---|---|
#1 | Breakup Buddies | 2014-09-30 | 2014-11-02 | 34 |
#2 | Interstellar | 2014-11-12 | 2014-12-12 | 31 |
Breakup Buddies | Interstellar | |
---|---|---|
#Original microblogs | 30,484 | 30,459 |
#Likes | 57,323 | 73,453 |
#Comments | 59,956 | 78,167 |
#Forwards | 48,483 | 91,039 |
#Micorblogs liked | 10,540 | 12,159 |
#Microblogs commented | 9395 | 11,456 |
#Microblogs forwarded | 2273 | 3420 |
#Most likes | 6142 | 6336 |
#Most comments | 3411 | 3782 |
#Most forwards | 16,264 | 17,282 |
Breakup Buddies | Interstellar | |
---|---|---|
The count of users | 87,787 | 144,221 |
The highest fans number of users | 13,640,601 | 33,332,635 |
The users with the most followers | 28 | 47 |
Prediction Model | Features | Breakup Buddies | Interstellar |
---|---|---|---|
LR | sentiment (weighted) | 0.471416 | 2.636955 |
sentiment (not weighted) | 0.543178 | 2.827116 | |
SVR | sentiment (weighted) | 0.347621 | 0.817183 |
sentiment (not weighted) | 0.363807 | 0.837459 |
Prediction Model | Features | Breakup Buddies | Interstellar |
---|---|---|---|
LR | sentiment (weighted) | 0.471416 | 2.636955 |
sentiment (weighted) + influence | 0.365470 | 1.128859 | |
SVR | sentiment (weighted) | 0.347621 | 0.817183 |
sentiment (weighted) + influence | 0.335603 | 0.694272 |
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Zhao, J.; Xiong, F.; Jin, P. Enhancing Short-Term Sales Prediction with Microblogs: A Case Study of the Movie Box Office. Future Internet 2022, 14, 141. https://doi.org/10.3390/fi14050141
Zhao J, Xiong F, Jin P. Enhancing Short-Term Sales Prediction with Microblogs: A Case Study of the Movie Box Office. Future Internet. 2022; 14(5):141. https://doi.org/10.3390/fi14050141
Chicago/Turabian StyleZhao, Jie, Fangwei Xiong, and Peiquan Jin. 2022. "Enhancing Short-Term Sales Prediction with Microblogs: A Case Study of the Movie Box Office" Future Internet 14, no. 5: 141. https://doi.org/10.3390/fi14050141
APA StyleZhao, J., Xiong, F., & Jin, P. (2022). Enhancing Short-Term Sales Prediction with Microblogs: A Case Study of the Movie Box Office. Future Internet, 14(5), 141. https://doi.org/10.3390/fi14050141