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Lecture
Text Models: Word Embeddings and Topic Models
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Word Embeddings: Glove and Semantic Relationships
Explores word embeddings, Glove model, semantic relationships, subword embeddings, and syntactic relationships.
Binary Sentiment Classifier Training
Covers the training of a binary sentiment classifier using an RNN.
Word Embeddings: Introduction and Applications
Introduces word embeddings, explaining how they capture word meanings based on context and their applications in natural language processing tasks.
Neural Word Embeddings
Introduces neural word embeddings and dense vector representations for natural language processing.
Transformations of Joint Densities
Covers the transformations of joint continuous densities and their implications on probability distributions.
Untitled
Word Embeddings: Context and Representation
Explores word embeddings, emphasizing word-context relationships and low-dimensional representations.
Topic Models: Latent Dirichlet Allocation
Covers topic models, focusing on Latent Dirichlet Allocation, clustering, GMMs, Dirichlet distribution, LDA learning, and applications in digital humanities.
Statistical Theory: Fundamentals
Covers the basics of statistical theory, including probability models, random variables, and sampling distributions.
Probability and Statistics: Independence and Conditional Probability
Explores independence and conditional probability in probability and statistics, with examples illustrating the concepts and practical applications.