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首页> 外文期刊>Journal of supercomputing >Leveraging deep learning with audio analytics to predict the success of crowdfunding projects
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Leveraging deep learning with audio analytics to predict the success of crowdfunding projects

机译:利用音频分析利用深入学习,预测众筹项目的成功

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摘要

In the social Web era, crowdfunding has become an increasingly important channel for entrepreneurs to raise funds from the crowd for their start-up projects. Previous studies have examined various factors, such as textual information of projects and social capital of investors. However, multimedia information on projects such as audio information was rarely studied for analysing crowdfunding successes. This paper designs a novel audio analytics-based deep learning framework that can extract audio features to predict the fundraising outcomes of these projects. In the proposed framework, we suggest transfer learning to train our models, and multi-task learning to extract the deep features of audios. With the proposed features, our model achieves an 8.28% improvement in F1 and a 7.35% AUC comparing to baselines.
机译:在社交网络时代,众区已成为企业家越来越重要的渠道,以便为其初创项目筹集人群资金。 以前的研究已经检查了各种因素,例如投资者的项目和社会资本的文本信息。 但是,很少研究关于音频信息等项目的多媒体信息,以分析众群成功。 本文设计了一种新型音频分析的深度学习框架,可以提取音频功能以预测这些项目的筹款结果。 在拟议的框架中,我们建议转让学习培训我们的模型,以及多项任务学习,提取Audios的深度特征。 通过拟议的特征,我们的模型在F1和与基线相比的7.35%AUC的改进达到了8.28%。

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