Article Bias: The article discusses the limitations and concerns surrounding large language models (LLMs) in social science studies, highlighting the lack of diversity in responses and suggesting a potentially biased perspective from these models when responding to nuanced prompts related to political orientation and moral philosophy.
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ðĩ Liberal <â> Conservative ðī:
ð― Libertarian <â> Authoritarian ð:
ðïļ Objective <â> Subjective ðïļ :
ðĻ Sensational:
ð Bearish <â> Bullish ð:
ð Prescriptive:
ðïļ Dovish <â> Hawkish ðĶ:
ðĻ Fearful:
ð Begging the Question:
ðĢïļ Gossip:
ð Opinion:
ðģ Political:
Oversimplification:
ðïļ Appeal to Authority:
ðž Immature:
ð Circular Reasoning:
ð Covering Responses:
ðĒ Victimization:
ðĪ Overconfident:
ðïļ Spam:
â Ideological:
ðī Anti-establishment <â> Pro-establishment ðš:
ð Negative <â> Positive ð:
ðð Double Standard:
â Uncredible <â> Credible â :
ð§ Rational <â> Irrational ðĪŠ:
ðĪ Advertising:
ðĪ Written by AI:
ð Low Integrity <â> High Integrity âĪïļ:
AI Bias: Neutral and focused on definitions, not human experiences.
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