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== 메타데이터 ==
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==메타데이터==
 
 
 
===위키데이터===
 
===위키데이터===
 
* ID :  [https://www.wikidata.org/wiki/Q17069496 Q17069496]
 
* ID :  [https://www.wikidata.org/wiki/Q17069496 Q17069496]
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===Spacy 패턴 목록===
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* [{'LOWER': 'mnist'}, {'LEMMA': 'database'}]
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* [{'LOWER': 'mnist'}, {'LEMMA': 'dataset'}]

2021년 2월 17일 (수) 00:41 기준 최신판

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말뭉치

  1. The data set used here is MNIST dataset as mentioned above.[1]
  2. Did you know you can fully train a LeNet Convolutional Neural Network model with the MNIST dataset directly on iOS devices ?[2]
  3. the MNIST dataset, which stands for Modified National Institute of Standards and Technology database.[3]
  4. The MNIST dataset is one of the most common datasets used for image classification and accessible from many different sources.[3]
  5. In fact, even Tensorflow and Keras allow us to import and download the MNIST dataset directly from their API.[3]
  6. # example of loading the fashion mnist dataset from matplotlib import pyplot from keras .[4]
  7. # example of loading the mnist dataset from keras .[5]
  8. The MNIST dataset can be online, and it is essentially a database of various handwritten digits.[6]
  9. The MNIST dataset has a large amount of data and is commonly used to demonstrate the real power of deep neural networks.[6]
  10. The MNIST dataset is a multilevel dataset consisting of 10 classes in which we can classify numbers from 0 to 9.[6]
  11. The major difference between the datasets that we have used before and the MNIST dataset is the method in which MNIST data is inputted in a neural network.[6]
  12. Building a digit classifier using MNIST dataset.[7]
  13. I trained a CNN (on tensorflow ) for digit recognition using MNIST dataset.[8]
  14. The MNIST database was constructed from NIST's Special Database 3 and Special Database 1 which contain binary images of handwritten digits.[9]
  15. The training 60k samples on MNIST database are trained by the SVM.[10]
  16. Without augmentation, experimental results of test error rate 1.03% on the test 10k MNIST database shows that proposed method is effective in handwritten digits recognition.[10]
  17. To train and test the CNN, we use handwriting imagery from the MNIST dataset.[11]
  18. In this post also we’ll use Fashion MNIST dataset.[12]
  19. MNIST database consists of two NIST databases – Special Database 1 and Special Database 3.[13]
  20. They were developed by Salakhutdinov, Ruslan and Murray, Iain in 2008 as a binarized version of the original MNIST dataset.[13]
  21. Kuzushiji MNIST Dataset developed by Tarin Clanuwat, Mikel Bober-Irizar, Asanobu Kitamoto, Alex Lamb, Kazuaki Yamamoto and David Ha for Deep Learning on Classical Japanese Literature.[13]
  22. The Fashion MNIST dataset we’re using is loaded from disk on Line 26.[14]
  23. Our goal is to train a classifier that will identify the digits in the MNIST dataset.[15]
  24. Since, our task is to detect the 10 digits in the MNIST database, the output of the network should be a vector of length 10, 1 element corresponding to each digit.[15]
  25. Last dense layer: There are 16 x 7 x 7 input values and it produces 10 output values corresponding to the 10 digits in the MNIST dataset.[15]
  26. In this article we'll build a simple convolutional neural network in PyTorch and train it to recognize handwritten digits using the MNIST dataset.[16]
  27. It let's use load the MNIST dataset in a handy way.[16]
  28. In summary we built a new environment with PyTorch and TorchVision, used it to classifiy handwritten digits from the MNIST dataset and hopefully developed a good intuition using PyTorch.[16]
  29. The MNIST dataset contains 70,000 images of handwritten digits (zero to nine) that have been size-normalized and centered in a square grid of pixels.[17]

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Spacy 패턴 목록

  • [{'LOWER': 'mnist'}, {'LEMMA': 'database'}]
  • [{'LOWER': 'mnist'}, {'LEMMA': 'dataset'}]