Skip to main content
Graph
Search
fr
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Probabilistic Retrieval
Graph Chatbot
Related lectures (32)
Information Retrieval Basics: Boolean and Vector Space Models
Introduces Boolean and Vector Space models for information retrieval, covering syntax, similarity computation, term frequency, and query weights.
Indexing for Information Retrieval
Explores indexing techniques, inverted files, map-reduce models, and trie usage for efficient information retrieval.
Document Retrieval and Classification
Covers document retrieval, classification, sentiment analysis, and topic detection using TF-IDF matrices and contextualized word vectors like BERT.
Embedding Models: Concepts and Retrieval
Covers embedding models for document retrieval, latent semantic indexing, SVD, and topic models.
Information Retrieval Indexing: Latent Semantic Indexing
Explores Latent Semantic Indexing in Information Retrieval, discussing algorithms, challenges in Vector Space Retrieval, and concept-focused retrieval methods.
Latent Semantic Indexing: Concepts and Applications
Explores latent semantic indexing, vocabulary construction, document matrix creation, query transformation, and document retrieval using cosine similarity.
Pretraining: Transformers & Models
Explores pretraining models like BERT, T5, and GPT, discussing their training objectives and applications in natural language processing.
System Modeling Languages
Explores the significance of System Modeling Languages like OPM, SysML, and Modelica in modern Systems Engineering.
Word Embeddings: Modeling Word Context and Similarity
Covers word embeddings, modeling word context and similarity in a low-dimensional space.
Text Data Processing: Basics & Techniques
Introduces the basics of text data processing, covering document retrieval, classification, sentiment analysis, and topic detection.
Contextual Representations: ELMO and BERT Overview
Covers contextual representations in NLP, focusing on ELMO and BERT architectures and their applications in various tasks.
Information Retrieval: Basics and Techniques
Introduces the basics of Information Retrieval, covering indexing, weighting schemes, cosine similarity, and query evaluation.
Previous
Page 2 of 2
Next