可解释性
社会经济地位
叙述的
可视化
主题分析
授权
仿形(计算机编程)
计算机科学
定性分析
社会学
定性研究
嵌入
心理学
公共政策
专题地图
人工智能
工作(物理)
社会阶层
数据科学
知识管理
数据可视化
社会心理学
叙述性探究
定性性质
分类学(生物学)
作者
Nahed Abdelgaber,Labiba Jahan,Joshua R. Oltmanns,Mehak Gupta,Jia Zhang
摘要
This work presents an interpretable framework for socioeconomic status (SES) profiling based on narrative data. Building on our previous publication, “AI Assistant for Socioeconomic Empowerment Using Federated Learning” (NLP4DH 2025), this extended study explores a complementary system that focuses on thematic topic modeling, transformer-based embedding comparisons, and visualization tools. The framework analyzes student and public narratives to detect SES-related themes (e.g., financial hardship, resilience, access to resources) and assigns SES profiles through similarity-based scoring. By emphasizing interpretability and topic-based filtering, the system facilitates analysis of language patterns linked to different SES groups while supporting qualitative inspection. Results demonstrate the model’s ability to generalize across diverse domains and align with known social science frameworks, contributing toward responsible and transparent AI in education and public policy contexts.
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