Article Bias: The article presents a comparative study on the accuracy of various large language models in the Chinese National Nursing Licensing Examination, highlighting the success of Qwen-2.5 and emphasizing the potential for using machine learning in healthcare education without overtly favoring any particular model or approach.
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ðïļ Objective <â> Subjective ðïļ :
ð Prescriptive:
ð Opinion:
Oversimplification:
ð Negative <â> Positive ð:
â Uncredible <â> Credible â :
ð§ Rational <â> Irrational ðĪŠ:
ðŽ Scientific <â> Superstitious ðŪ:
ð Manipulative:
ð Low Integrity <â> High Integrity âĪïļ:
AI Bias: My training data is neutral, focusing on delivering objective analysis.
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