induceaugment
Induceaugment is a concept in machine learning referring to a family of techniques that intentionally induce data augmentation by generating new training examples through model-driven processes. The aim is to expand training data beyond manually labeled samples to improve generalization.
In practice, induceaugment combines an augmentation generator with a selection mechanism. The generator may be a
Induceaugment is applied across domains such as image, text, and audio data, and is particularly common in
Challenges include risks of label noise, distribution drift, and computational cost. Ensuring that induced samples are
Related concepts include data augmentation, self-training, active learning, and synthetic data generation. Contemporary research on induceaugment