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Open AccessProceedings ArticleDOI

Modeling Dynamic Competition on Crowdfunding Markets

TLDR
A probabilistic generative model, Dynamic Market Competition (DMC) model, is proposed to capture the competitiveness of projects in crowdfunding very well, and significantly outperforms several baseline approaches in predicting the daily collected funds of crowdfunding projects.
Abstract
The often fierce competition on crowdfunding markets can significantly affect project success. While various factors have been considered in predicting the success of crowdfunding projects, to the best knowledge of the authors, the phenomenon of competition has not been investigated. In this paper, we study the competition on crowdfunding markets through data analysis, and propose a probabilistic generative model, Dynamic Market Competition (DMC) model, to capture the competitiveness of projects in crowdfunding. Through an empirical evaluation using the pledging history of past crowdfunding projects, our approach has shown to capture the competitiveness of projects very well, and significantly outperforms several baseline approaches in predicting the daily collected funds of crowdfunding projects, reducing errors by 31.73% to 45.14%. In addition, our analyses on the correlations between project competitiveness, project design factors, and project success indicate that highly competitive projects, while being winners under various setting of project design factors, are particularly impressive with high pledging goals and high price rewards, comparing to medium and low competitive projects. Finally, the competitiveness of projects learned by DMC is shown to be very useful in applications of predicting final success and days taken to hit pledging goal, reaching 85% accuracy and error of less than 7 days, respectively, with limited information at early pledging stage.

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Citations
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Journal ArticleDOI

Estimating Early Fundraising Performance of Innovations via Graph-Based Market Environment Model

TL;DR: In this paper, a graph-based market environment model is proposed to estimate the early fundraising performance of the target project by exploiting the market environment and discriminatively model the market competition and market evolution.
Journal ArticleDOI

Estimating fund-raising performance for start-up projects from a market graph perspective

TL;DR: A Graph-based Market Environment (GME) model is proposed for predicting the fund-raising performance of the unpublished project by exploiting the market environment and discriminatively model the project competitiveness and market preferences by designing two graph-based neural network architectures and incorporating them into a joint optimization stage.
Journal ArticleDOI

Investigating the Impact of Competition and Incentive Design on Performance of Crowdfunding Projects: A Case of Independent Movies

TL;DR: In this paper, the authors investigated the impact of competition and incentive design on the performance of crowdfunding projects and found that the higher competition pressure is, the lower performance of the crowdfunding projects.
Posted Content

Estimating Early Fundraising Performance of Innovations via Graph-based Market Environment Model.

TL;DR: A Graph-based Market Environment model (GME) is proposed for estimating the early fundraising performance of the target project by exploiting the market environment and discriminatively model the market competition and market evolution by designing two graph-based neural network architectures and incorporating them into the joint optimization stage.
Proceedings ArticleDOI

User Donations in a User Generated Video System

TL;DR: The characteristics of user donations are quantitatively revealed, their correlations with the upload behavior and content popularity of the creators are examined, and machine-learned classifiers are adopted to accurately predict the creators who will receive donations and who will donate in the future.
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The Rich Get Richer and the Poor Get Prison

TL;DR: The face in the criminal justice carnival mirror is also very frequently black face as discussed by the authors, but it is no laughing matter, it is the face of evil reflected in a Carnival Mirror.
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