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  4. Crowdfunding Fraud Detection: A Systematic Review Highlights AI and Blockchain using Topic Modeling
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Crowdfunding Fraud Detection: A Systematic Review Highlights AI and Blockchain using Topic Modeling

Date Issued
October 10, 2024
Author(s)
Machado, Marcos  
Coita, Ioana Coita  
Teijeiro, Lucia Gomez  
Gregoriades, Andreas  
Themistocleous, Christos  
Heeswijk, Wouter  
Bernard, Frederik Sinan  
Muñiz, José Antonio  
Bolesta, Karolina  
Osterrieder, Joerg  
Liu, Yiting  
Dubrovska, Anastasija  
Stanca, Liana  
Stanca, Liana  
Aydin, Nadi Serhan  
Rupeika-Apoga, Ramona  
Teng, Huei-Wen  
Yilmaz, Gokce Nur  
Péliová, Jana  
Alexy, Martin  
Tidjani, Chemseddine  
Mare, Codruta  
Filipovska, Olivija  
DOI
10.2139/ssrn.4948895
Abstract
Crowdfunding platforms have gained popularity as a means of financing entrepreneurial initiatives but face a high risk of fraud. Fraud is a significant problem due to its impact on trust, ultimately leading to financial instability. Detecting and preventing fraud is therefore paramount for the sustainability of crowdfunding platforms. This study provides a systematic review of the literature and state-of-the-art discussions about crowdfunding fraud. Unsupervised topic modeling highlights that both AI and blockchain are recurrently presented in the literature as effective methodologies for identifying and preventing fraudulent practices. Furthermore, this work describes current market practices of crowdfunding platforms in preventing fraudulent behavior and argues that, while fraud is rare, its high impact necessitates new and innovative forms of fraud detection. A key limiting factor for the application of AI solutions is the lack of available labeled crowdfunding data for training efficient algorithms for fraud detection, which is crucial as it constitutes an anomaly detection machine learning task. In this context, unsupervised machine learning methods are discussed as valuable techniques for detecting anomalies in the absence of labeled fraud cases due to their ability to adapt to evolving fraud patterns. Altogether, this research provides valuable insights into the complexity of detecting and preventing fraudulent activities in crowdfunding and highlights effective detection techniques that, if implemented, offer promising solutions to enhance platform reputation and ensure regulatory compliance.
Subjects

Fraud Detection

Crowdfunding

Lending Settings

Finance Industry

Alternative Finance M...

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SSRN Crowdfunding.pdf

Size

1.14 MB

Format

Adobe PDF

Checksum (MD5)

c168b4ddf427ca33aa241b55175387ba

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