Title: Openai/692c91e4-ba20-800d-8366-e5c7ed15aa7b - freem URL Source: https://freemwiki.com/wiki/Openai/692c91e4-ba20-800d-8366-e5c7ed15aa7b Markdown Content: _This conversation was exported from ChatGPT_[[1]](https://freemwiki.com/wiki/Openai/692c91e4-ba20-800d-8366-e5c7ed15aa7b#cite_note-1) ## gpt-5-t-mini[[edit](https://freemwiki.com/index.php?title=Openai/692c91e4-ba20-800d-8366-e5c7ed15aa7b&veaction=edit§ion=1 "Edit section: gpt-5-t-mini") | [edit source](https://freemwiki.com/index.php?title=Openai/692c91e4-ba20-800d-8366-e5c7ed15aa7b&action=edit§ion=1 "Edit section's source code: gpt-5-t-mini")] ### User: how much data is required for solmonoff induction to yield newtonian equations[[edit](https://freemwiki.com/index.php?title=Openai/692c91e4-ba20-800d-8366-e5c7ed15aa7b&veaction=edit§ion=2 "Edit section: User: how much data is required for solmonoff induction to yield newtonian equations") | [edit source](https://freemwiki.com/index.php?title=Openai/692c91e4-ba20-800d-8366-e5c7ed15aa7b&action=edit§ion=2 "Edit section's source code: User: how much data is required for solmonoff induction to yield newtonian equations")] how much data is required for solmonoff induction to yield newtonian equations ### Assistant: Short answer: there’s no single fixed number.[[edit](https://freemwiki.com/index.php?title=Openai/692c91e4-ba20-800d-8366-e5c7ed15aa7b&veaction=edit§ion=3 "Edit section: Assistant: Short answer: there’s no single fixed number.") | [edit source](https://freemwiki.com/index.php?title=Openai/692c91e4-ba20-800d-8366-e5c7ed15aa7b&action=edit§ion=3 "Edit section's source code: Assistant: Short answer: there’s no single fixed number.")] Short answer: there’s no single fixed number. The amount of data Solomonoff induction needs is roughly the algorithmic (Kolmogorov) complexity of the true Newtonian model (in bits) plus the bits needed to specify the continuous parameters to the precision you want — scaled by how small you require the predictor’s error to be. And: Solomonoff induction is uncomputable, so these bounds are theoretical. Why (brief derivation & usable formula) * Let K(μ)K(\mu)K(μ) be the prefix Kolmogorov complexity (in bits) of the true data-generating measure μ\muμ (this encodes the form of Newton’s laws as a program). * Solomonoff’s universal prior MMM satisfies a convergence / cumulative-loss bound of the form ∑t=1TE[−log⁡M(xt∣x