Impact of Conditional Inputs in Tabular GANs on Downstream Classification Performance Across Diverse Datasets
Description
Deep convolutional neural networks have performed remarkably well on many Computer Vision tasks. However, these networks are heavily reliant on big data to avoid overfitting. Overfitting refers to the phenomenon when a network learns a function with very high variance such as to perfectly model the training data. Unfortunately, many application domains do not have access to big data, such as medical image analysis. This survey focuses on Data Augmentation, a data-space solution to the problem of limited data. Data Augmentation encompasses a suite of techniques that enhance the size and quality
Research goal: What is the impact of incorporating conditional inputs in tabular GANs on the downstream task performance (e.g., classification accuracy) when evaluated across different tabular datasets?
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