TLDRai.com Too Long; Didn't Read AI TLDWai.com Too Long; Didn't Watch AI
Ṣe awọn akojọpọ ailopin pẹlu AI!
Igbesoke si PRO US$ 7.0/m
Ko si awọn iṣẹ ihamọ

None

In this paper, the authors introduce Fashion-MNIST, a new dataset designed to provide a more challenging test for machine learning algorithms than the traditional MNIST dataset. The Fashion-MNIST dataset consists of 70,000 images of various categories such as shirts, dresses, coats, hats, scarves, bags, and shoes. Each class has a different texture, color, and style, making it more diverse than MNIST. The authors also introduce several techniques to improve the performance of machine learning models on Fashion-MNIST, including multi-column deep neural networks, emnist (an extension of MNIST to handwritten letters), imagenet (a large-scale hierarchical image database), and regularization techniques using dropconnect. The authors evaluate several machine learning algorithms on Fashion-MNIST, showing that CNNs perform significantly better than SVMs, and that the use of dropconnect regularization improves the performance of both types of models. Overall, this paper provides a valuable resource for researchers working on image classification tasks and demonstrates the potential of using Fashion-MNIST as a more challenging and diverse alternative to MNIST.
Awọn olumulo PRO gba awọn akopọ Didara Giga julọ
Igbesoke si PRO US$ 7.0/m
Ko si awọn iṣẹ ihamọ
None
Ṣe akopọ ọrọ Ṣe akopọ ọrọ lati faili Ṣe akopọ ọrọ lati oju opo wẹẹbu

Gba awọn abajade didara to dara julọ pẹlu awọn ẹya diẹ sii

Di PRO


Awọn akopọ ti o jọmọ