Rural China
Research on rural China encompasses diverse aspects, from analyzing socio-cultural patterns (e.g., language use, artistic expression) to predicting economic trends (e.g., GDP growth, P2P lending platform failures) and environmental conditions (e.g., water quality, air pollution, forest biomass). Current studies leverage machine learning techniques, including deep learning (e.g., convolutional neural networks, recurrent neural networks, transformers), to analyze large datasets and improve prediction accuracy across these domains. This interdisciplinary research contributes to a more nuanced understanding of rural China's complex dynamics, informing policy decisions related to economic development, environmental sustainability, and social equity.
Papers
AI Perceptions Across Cultures: Similarities and Differences in Expectations, Risks, Benefits, Tradeoffs, and Value in Germany and China
Philipp Brauner, Felix Glawe, Gian Luca Liehner, Luisa Vervier, Martina Ziefle
ChinaTravel: A Real-World Benchmark for Language Agents in Chinese Travel Planning
Jie-Jing Shao, Xiao-Wen Yang, Bo-Wen Zhang, Baizhi Chen, Wen-Da Wei, Lan-Zhe Guo, Yu-feng Li