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Java Deep Learning Cookbook

You're reading from   Java Deep Learning Cookbook Train neural networks for classification, NLP, and reinforcement learning using Deeplearning4j

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Product type Paperback
Published in Nov 2019
Publisher Packt
ISBN-13 9781788995207
Length 304 pages
Edition 1st Edition
Languages
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Author (1):
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Rahul Raj Rahul Raj
Author Profile Icon Rahul Raj
Rahul Raj
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Table of Contents (14) Chapters Close

Preface 1. Introduction to Deep Learning in Java FREE CHAPTER 2. Data Extraction, Transformation, and Loading 3. Building Deep Neural Networks for Binary Classification 4. Building Convolutional Neural Networks 5. Implementing Natural Language Processing 6. Constructing an LSTM Network for Time Series 7. Constructing an LSTM Neural Network for Sequence Classification 8. Performing Anomaly Detection on Unsupervised Data 9. Using RL4J for Reinforcement Learning 10. Developing Applications in a Distributed Environment 11. Applying Transfer Learning to Network Models 12. Benchmarking and Neural Network Optimization 13. Other Books You May Enjoy

Determining the right batch size and learning rates

Although there is no specific batch size or learning rate that works for all models, we can find the best values for them by experimenting with multiple training instances. The primary step is to experiment with a set of batch size values and learning rates with the model. Observe the efficiency of the model by evaluating additional parameters such as Precision, Recall, and F1 Score. Test scores alone don't confirm the model's performance. Also, parameters such as Precision, Recall, and F1 Score vary according to the use case. You need to analyze your problem statement to get an idea about this. In this recipe, we will walk through key steps to determine the right batch size and learning rates.

How to do it...

  1. Run the training instance multiple times and track the evaluation metrics.
  2. Run experiments by increasing the learning rate and track the results.

How it works...

Consider the following experiments to illustrate step 1.

The following training was performed on 10,000 records with a batch size of 8 and a learning rate of 0.008:

The following is the evaluation performed on the same dataset for a batch size of 50 and a learning rate of 0.008:

To perform step 2, we increased the learning rate to 0.6, to observe the results. Note that a learning rate beyond a certain limit will not help efficiency in any way. Our job is to find that limit:

You can observe that Accuracy is reduced to 82.40% and F1 Score is reduced to 20.7%. This indicates that F1 Score might be the evaluation parameter to be accounted for in this model. This is not true for all models, and we reach this conclusion after experimenting with a couple of batch sizes and learning rates. In a nutshell, you have to repeat the same process for your model's training and choose arbitrary values that yield the best results.

There's more...

When we increase the batch size, the number of iterations will eventually reduce, hence the number of evaluations will also be reduced. This can overfit the data for a large batch size. A batch size of 1 is as useless as a batch size based on an entire dataset. So, you need to experiment with values starting from a safe arbitrary point.

A very small learning rate will lead to a very small convergence rate to the target. This can also impact the training time. If the learning rate is very large, this will cause divergent behavior in the model. We need to increase the learning rate until we observe the evaluation metrics getting better. There is an implementation of a cyclic learning rate in the fast.ai and Keras libraries; however, a cyclic learning rate is not implemented in DL4J.

You have been reading a chapter from
Java Deep Learning Cookbook
Published in: Nov 2019
Publisher: Packt
ISBN-13: 9781788995207
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