


OpenAI silently shuts down AI text detection tool with only 26% accuracy
OpenAI officially issued a press release recently, announcing that due to the accuracy rate of only 26%, it has decided to terminate the use of AI text detection tool-AI Classifier
OpenAI released a A tool was designed to distinguish between human-written and AI-generated text, but was found to be inaccurate after being launched.
According to OpenAI’s disclosure, this tool had serious accuracy issues and was unable to reliably identify content. According to the report, the AI identified generated content only 26% of the time, and incorrectly labeled 9% of human-written text as AI-generated
OpenAI is working to incorporate feedback and is currently working on making it more effective text source technology and commits to developing and implementing mechanisms to help users determine whether audio or visual content is generated by AI
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