List of redirects
From Cohen Courses
Jump to navigationJump to searchShowing below up to 50 results in range #1 to #50.
View (previous 50 | next 50) (20 | 50 | 100 | 250 | 500)
- 10-601B Generalization and Overfitting: Sample Complexity Results for Supervised Classification 3 → 10-601B Model Selection
- 10-601B Intro to neural Networks → 10-601B Intro to Neural Networks
- 10-601B Perceptrons and SVMs → 10-601B Perceptrons and Large Margin
- 10-601 K-NN And Trees → 10-601 K-NN And Trees - Lecture from Fall 2013
- 10-605 in Spring 2014 → Machine Learning with Large Datasets 10-605 in Spring 2014
- 10-605 in Spring 2015 → Machine Learning with Large Datasets 10-605 in Spring 2015
- A high-performance semi-supervised learning method for text chunking → Ando & Zhang, 2005, A high-performance semi-supervised learning method for text chunking
- Also - a draft schedule for 10-601B → Draft schedule for 10-601B in Spring 2016
- AlternatingMinimization → Alternating Minimization
- Analysis of Social Media Spring, 2011 → User:Manajs/Analysis of Social Media Spring, 2011
- Ando & Zhang, 2005, A high-performance semi-supervised learning method for text chunking → R. K. Ando and T. Zhang. ACL 2005
- Ando and Zhang ACL 2005 → A high-performance semi-supervised learning method for text chunking
- Attribute extraction → Attribute Extraction
- Autolab guide for ta → Autolab Guide for TA
- Automatically Refining the Wikipedia Infobox Ontology → Wu and Weld ACM 2008
- Baum-Welch → Forward-Backward
- BeliefPropagation → Belief Propagation
- Berg-Kirkpatrick, ACL 2010: Painless Unsupervised Learning with Features → Berg-Kirkpatrick et al, ACL 2010: Painless Unsupervised Learning with Features
- Berg-Kirkpatrick, HLT 2010: Painless Unsupervised Learning with Features → Berg-Kirkpatrick, ACL 2010: Painless Unsupervised Learning with Features
- CRF → Conditional Random Fields
- Class Meeting for 10-710 9-27-2011 → Class Meeting for 10-710 09-27-2011
- Class Meeting for 10-802 12/1/2012 → Class Meeting for 10-802 11/29/2012
- Class meeting for 10-605 2013 04 22 → Class meeting for 10-605 2013 04 17
- Class meeting for 10-605 Hadoop 1 → Class meeting for 10-605 More on Stream and Sort
- Class meeting for 10-605 LDA 1 → Class meeting for 10-605 LDA
- Class meeting for 10-605 More on Stream and Sort → Class meeting for 10-605 Phrases with Stream and Sort
- Class meeting for 10-605 PIG → Class meeting for 10-605 Hadoop Overview
- Class meeting for 10-605 Phase Finding → Class meeting for 10-605 Phrase Finding
- Class meeting for 10-605 Randomized Algorithms 1 → Class meeting for 10-605 Randomized Algorithms
- Class meeting for 10-605 Rocchio and On-line Learning → Class meeting for 10-605 Rocchio and Hadoop Workflows
- Class meeting for 10-605 Subsample A Graph → Class meeting for 10-605 Scalable PageRank
- Class meeting for 10-605 Workflows For Hadoop 1 → Class meeting for 10-605 Workflows For Hadoop
- CoNLL '00 → CoNLL'00
- Conditional Random fields → Conditional Random Fields
- Daume et al 2006 → Turney, 2002
- Dependency Networks for Inference, Collaborative Filtering, and Data Visualization. David Heckerman, David Maxwell Chickering, Christopher Meek, Robert Rounthwaite, Carl Kadie; in JMLR, 1(Oct):49-75, 2000. → Dependency Networks for Inference, Collaborative Filtering, and Data Visualization
- Dependency parsing → Dependency Parsing
- Divergence of probability distributions → Inside Outside algorithm
- EM → Expectation Maximization
- EntropicRegularization → EntropicGraphRegularization
- Finkel 2009 nested named entity recognition → Finkel and Manning, EMNLP 2009. Nested Named Entity Recognition
- Finkel and Manning EMNLP 2009 → Finkel and Manning, EMNLP 2009. Nested Named Entity Recognition
- Forward-backward → Forward-Backward
- Globerson 2007 exponentiated gradient algorithms for log linear structured prediction → Globerson et al. ICML 2007. Exponentiated Gradient Algorithms for Log Linear Structured Prediction
- Globerson et al. 2007 Exponentiated Gradient Algorithms for Log Linear Structured Prediction → Globerson et al. ICML 2007 Exponentiated Gradient Algorithms for Log Linear Structured Prediction
- Globerson et al. ICML 2007 Exponentiated Gradient Algorithms for Log Linear Structured Prediction → Globerson et al. ICML 2007. Exponentiated Gradient Algorithms for Log Linear Structured Prediction
- Globerson et al ICML 2007 → Globerson et al. ICML 2007. Exponentiated Gradient Algorithms for Log Linear Structured Prediction
- Hadoop cluster information → GHC Hadoop cluster information
- Hidden Markov models → Hidden Markov Model
- Huang et al, ACL 2010: Enhancing Cross Document Coreference of Web Documents with Context Similarity and Very Large Scale Text Categorization → Huang et al, Coling 2010: Enhancing Cross Document Coreference of Web Documents with Context Similarity and Very Large Scale Text Categorization