AI RESEARCH

Scaling Laws for Mixture Pretraining Under Data Constraints

arXiv CS.LG

ArXi:2605.12715v1 Announce Type: new As language models scale, the amount of data they require grows -- yet many target data sources, such as low-resource languages or specialized domains, are inherently limited in size. A common strategy is to mix this scarce but valuable target data with abundant generic data, which presents a fundamental trade-off: too little target data in the mixture underexposes the model to the target domain, while too much target data repeats the same examples excessively, yielding diminishing returns and eventual overfitting.