gpt-4 and gpt-4o
Scaling up the Evaluation of Collaborative Problem Solving: Promises and Challenges of Coding Chat Data with ChatGPT
Hao, Jiangang, Cui, Wenju, Kyllonen, Patrick, Kerzabi, Emily, Liu, Lei, Flor, Michael
Collaborative problem solving (CPS) is widely recognized as a critical 21st century skill. Efficiently coding communication data is a big challenge in scaling up research on assessing CPS. This paper reports the findings on using ChatGPT to directly code CPS chat data by benchmarking performance across multiple datasets and coding frameworks. We found that ChatGPT-based coding outperformed human coding in tasks where the discussions were characterized by colloquial languages but fell short in tasks where the discussions dealt with specialized scientific terminology and contexts. The findings offer practical guidelines for researchers to develop strategies for efficient and scalable analysis of communication data from CPS tasks.
- North America > United States > New Jersey > Mercer County > Princeton (0.04)
- North America > United States > Illinois > Cook County > Chicago (0.04)
- Research Report > New Finding (1.00)
- Personal > Interview (0.68)
Global Data Constraints: Ethical and Effectiveness Challenges in Large Language Model
Yang, Jin, Wang, Zhiqiang, Lin, Yanbin, Zhao, Zunduo
The efficacy and ethical integrity of large language models (LLMs) are profoundly influenced by the diversity and quality of their training datasets. However, the global landscape of data accessibility presents significant challenges, particularly in regions with stringent data privacy laws or limited open-source information. This paper examines the multifaceted challenges associated with acquiring high-quality training data for LLMs, focusing on data scarcity, bias, and low-quality content across various linguistic contexts. We highlight the technical and ethical implications of relying on publicly available but potentially biased or irrelevant data sources, which can lead to the generation of biased or hallucinatory content by LLMs. Through a series of evaluations using GPT-4 and GPT-4o, we demonstrate how these data constraints adversely affect model performance and ethical alignment. We propose and validate several mitigation strategies designed to enhance data quality and model robustness, including advanced data filtering techniques and ethical data collection practices. Our findings underscore the need for a proactive approach in developing LLMs that considers both the effectiveness and ethical implications of data constraints, aiming to foster the creation of more reliable and universally applicable AI systems.
- Asia > China (0.04)
- North America > United States > New York (0.04)