AI-powered
podcast player
Listen to all your favourite podcasts with AI-powered features
Optimizing Data Encoding and Regularization in Machine Learning
Different data encoding methods such as one-shot encoding, binning, piecewise linear projections, etc., have a significant impact on models. Researchers are exploring more efficient ways to encode data. Complex encoding strategies might benefit models like XGBoost and random forest more than simple one-hot encoding. Regularization techniques play a crucial role in optimizing models across various fields, including computer vision and NLP.