在慈善众筹活动中探索主题特征的潜在德里赫利分配(LDA)语义文本分析方法

Prathamesh Muzumdar, George Kurian, Ganga Prasad Basyal
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引用次数: 0

摘要

社交网络领域的众筹活动受到了广泛关注,先前的研究探讨了活动的各个方面,包括项目目标、持续时间以及对成功筹款有影响的项目类别。这些因素对于寻求捐赠者支持的企业家来说至关重要。然而,社交网络中的慈善众筹领域仍相对欠缺探索,对通常缺乏具体回报的捐款动机缺乏了解。与提供有形回报的传统众筹不同,慈善众筹依赖于税收优惠、表彰职位或顾问角色等无形回报。这些细节往往蕴含在活动叙述中,然而,对慈善众筹文本内容的分析却很有限。本研究引入了一个别出心裁的文本分析框架,利用潜在德里希勒分配(LDA)从慈善活动的文本描述中提取潜在主题。本研究探讨了四个不同的主题,活动描述和激励描述各有两个。活动描述的主题侧重于儿童和老年人的健康,主要是那些被诊断出患有绝症的人。激励描述的主题以税收优惠、证书和感谢信为基础。这些主题与数字参数相结合,可预测活动的成功与否。本研究使用随机森林分类器成功地利用主题和数字参数预测了活动的成功率。本研究根据项目和激励措施的描述区分了主题类别,特别是基于医疗需求的慈善活动和一般事业。总之,本研究通过展示主题建模在未知慈善众筹领域的实用性,弥补了这一空白。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Latent Dirichlet Allocation (LDA) Semantic Text Analytics Approach to Explore Topical Features in Charity Crowdfunding Campaigns
Crowdfunding in the realm of the Social Web has received substantial attention, with prior research examining various aspects of campaigns, including project objectives, durations, and influential project categories for successful fundraising. These factors are crucial for entrepreneurs seeking donor support. However, the terrain of charity crowdfunding within the Social Web remains relatively unexplored, lacking comprehension of the motivations driving donations that often lack concrete reciprocation. Distinct from conventional crowdfunding that offers tangible returns, charity crowdfunding relies on intangible rewards like tax advantages, recognition posts, or advisory roles. Such details are often embedded within campaign narratives, yet, the analysis of textual content in charity crowdfunding is limited. This study introduces an inventive text analytics framework, utilizing Latent Dirichlet Allocation (LDA) to extract latent themes from textual descriptions of charity campaigns. The study has explored four different themes, two each in campaign and incentive descriptions. Campaign description’s themes are focused on child and elderly health mainly the ones who are diagnosed with terminal diseases. Incentive description’s themes are based on tax benefits, certificates, and appreciation posts. These themes, combined with numerical parameters, predict campaign success. The study was successful in using Random Forest Classifier to predict success of the campaign using both thematic and numerical parameters. The study distinguishes thematic categories, particularly medical need-based charity and general causes, based on project and incentive descriptions. In conclusion, this research bridges the gap by showcasing topic modelling utility in uncharted charity crowdfunding domains.
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