zwaksupervised
Zwaksupervised is a term that emerged within the machine learning community to describe a specific type of learning scenario. It refers to situations where a model is trained on data that has labels, but these labels are considered "weak" or "noisy." This weakness can manifest in several ways. For instance, the labels might be incomplete, meaning only a subset of the data is labeled. Alternatively, the labels could be inaccurate, containing errors or misclassifications introduced by human annotators or automated labeling processes. Another common form of weak supervision involves using heuristics or rules to generate labels, which are often less precise than hand-annotated labels.
The core challenge with zwaksupervised learning is that the model must learn to perform its task despite