What is a factuality?
Within the ML world, a property describing a model whose output is based on reality.
factuality explained in plain English
Within the ML world, a property describing a model whose output is based on reality. Factuality is a concept rather than a metric. For example, suppose you send the following prompt to a large language model: What is the chemical formula for table salt? A model optimizing factuality would respond: NaCl It is tempting to assume that all models should be based on factuality. However, some prompts, such as the following, should cause a generative AI model to optimize creativity rather than factuality. Tell me a limerick about an astronaut and a caterpillar. It is unlikely that the resulting limerick would be based on reality. Contrast with groundedness.
Example
Practitioners refer to factuality when building, training, or evaluating machine learning systems. It appears in research papers, product documentation, and technical discussions about AI capabilities and limitations.
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