MLG 023 Deep NLP 2

MLG 023 Deep NLP 2

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Try a walking desk to stay healthy while you study or work! Notes and resources at ocdevel.com/mlg/23 Neural Network Types in NLP •

Vanilla Neural Networks (Feedforward Networks): •

• Used for general classification or regression tasks. • Examples include predicting housing costs or classifying images as cat, dog, or tree. • •

Convolutional Neural Networks (CNNs): •

• Primarily used for image-related tasks. • •

Recurrent Neural Networks (RNNs): •

• Used for sequence-based tasks such as weather predictions, stock market predictions, and natural language processing. • Differ from feedforward networks as they loop back onto previous steps to handle sequences over time. • Key Concepts and Applications •

Supervised vs Reinforcement Learning: •

• Supervised learning involves training models using labeled data to learn patterns and create labels autonomously. • Reinforcement learning focuses on learning actions to maximize a reward function over time, suitable for tasks like gaming AI but less so for tasks like NLP. • •

Encoder-Decoder Models: •

• These models process entire input sequences before producing output, crucial for tasks like machine translation, where full context is needed before output generation. • Transforms sequences to a vector space (encoding) and reconstructs it to another sequence (decoding). • •

Gradient Problems & Solutions: •

Vanishing and Exploding Gradient Problems • occur during training due to backpropagation over time steps, causing information loss or overflow, notably in longer sequences. Long Short-Term Memory (LSTM) Cells • solve these by allowing RNNs to retain important information over longer time sequences, effectively mitigating gradient issues. • LSTM Functionality • An LSTM cell • replaces traditional neurons in an RNN with complex machinery that regulates information flow. • Components within an LSTM cell: Forget Gate • : Decides which information to discard from the cell state. Input Gate • : Determines which information to update. Output Gate • : Controls the output from the cell. •


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