- Introducing sequential data
- Modeling sequential data—order matters
- Representing sequences
- The different categories of sequence modeling
- RNNs for modeling sequences
- Understanding the RNN looping mechanism
- Computing activations in an RNN
- Hidden-recurrence versus output-recurrence
- The challenges of learning long-range interactions
- Long short-term memory cells
- Implementing RNNs for sequence modeling in PyTorch
- Project one: predicting the sentiment of IMDb movie reviews
- Preparing the movie review data
- Embedding layers for sentence encoding
- Building an RNN model
- Building an RNN model for the sentiment analysis task
- More on the bidirectional RNN
- Project two: character-level language modeling in PyTorch
- Preprocessing the dataset
- Building a character-level RNN model
- Evaluation phase: generating new text passages
- Project one: predicting the sentiment of IMDb movie reviews
- Summary
Please refer to the README.md file in ../ch01
for more information about running the code examples.