Success Prediction on Crowdfunding with Multimodal Deep Learning

Author:

Cheng Chaoran1,Tan Fei1,Hou Xiurui1,Wei Zhi1

Affiliation:

1. New Jersey Institute of Technology

Abstract

We consider the problem of project success prediction on crowdfunding platforms. Despite the information in a project profile can be of different modalities such as text, images, and metadata, most existing prediction approaches leverage only the text dominated modality. Nowadays rich visual images have been utilized in more and more project profiles for attracting backers, little work has been conducted to evaluate their effects towards success prediction. Moreover, meta information has been exploited in many existing approaches for improving prediction accuracy. However, such meta information is usually limited to the dynamics after projects are posted, e.g., funding dynamics such as comments and updates. Such a requirement of using after-posting information makes both project creators and platforms not able to predict the outcome in a timely manner. In this work, we designed and evaluated advanced neural network schemes that combine information from different modalities to study the influence of sophisticated interactions among textual, visual, and metadata on project success prediction. To make pre-posting prediction possible, our approach requires only information collected  from the pre-posting profile. Our extensive experimental results show that the image features could improve success prediction performance significantly, particularly for project profiles with little text information. Furthermore, we identified contributing elements.

Publisher

International Joint Conferences on Artificial Intelligence Organization

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1. Explainable text-based features in predictive models of crowdfunding campaigns;Annals of Operations Research;2024-01-12

2. MDCC: A Multimodal Dynamic Dataset for Donation-based Crowdfunding Campaigns;Proceedings of the 32nd ACM International Conference on Information and Knowledge Management;2023-10-21

3. Deep Cross-Attention Network for Crowdfunding Success Prediction;IEEE Transactions on Multimedia;2023

4. Machine-learning forecasting of successful ICOs;Journal of Economics and Business;2022-07

5. The merits of a sentiment analysis of antecedent comments for the prediction of online fundraising outcomes;Technological Forecasting and Social Change;2022-01

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