Abstract:
Data augmentation has been proven particularly effective for image classification tasks where a significant boost of prediction accuracy can be obtained when the techniqu...Show MoreMetadata
Abstract:
Data augmentation has been proven particularly effective for image classification tasks where a significant boost of prediction accuracy can be obtained when the technique is combined with the use of Deep Learning architectures. Unfortunately, for non-image data the situation is quite different and the positive effect of augmenting the training set size is much smaller. In this work, we propose a method that creates new samples by adjusting the level of noise for individual input variables previously ranked by their relevance level. Results from several tests are analyzed using nine benchmark data sets when the augmented and original data are used for supervised training on Deep Learning architectures.
Date of Conference: 18-21 November 2018
Date Added to IEEE Xplore: 31 January 2019
ISBN Information: