zhongziso种子搜
首页
功能
磁力转BT
BT转磁力
使用教程
免责声明
关于
zhongziso
搜索
Coursera - Probabilistic Graphical Models
magnet:?xt=urn:btih:e74f08f0fc699e84a9eb046309727d07d80171c5&dn=Coursera - Probabilistic Graphical Models
磁力链接详情
Hash值:
e74f08f0fc699e84a9eb046309727d07d80171c5
点击数:
416
文件大小:
1.38 GB
文件数量:
95
创建日期:
2016-8-29 12:47
最后访问:
2024-12-25 05:18
访问标签:
Coursera
-
Probabilistic
Graphical
Models
文件列表详情
Assignments/Assignment 5/gaimc/scomponents.m 2.43 KB
Lectures/Week 1 - 01 Introduction and Overview/01_Welcome_05-35.mp4 7.11 MB
Lectures/Week 1 - 01 Introduction and Overview/02_Overview_and_Motivation_19-17.mp4 22.99 MB
Lectures/Week 1 - 01 Introduction and Overview/03_Distributions_04-56.mp4 5.79 MB
Lectures/Week 1 - 01 Introduction and Overview/04_Factors_06-40.mp4 7.36 MB
Lectures/Week 1 - 02 Bayesian Network Fundamentals/01_Semantics__Factorization_17-20.mp4 19.55 MB
Lectures/Week 1 - 02 Bayesian Network Fundamentals/02_Reasoning_Patterns_09-59.mp4 10.78 MB
Lectures/Week 1 - 02 Bayesian Network Fundamentals/03_Flow_of_Probabilistic_Influence_14-36.mp4 15.46 MB
Lectures/Week 1 - 02 Bayesian Network Fundamentals/04_Conditional_Independence_12-38.mp4 15.51 MB
Lectures/Week 1 - 02 Bayesian Network Fundamentals/05_Independencies_in_Bayesian_Networks_18-18.mp4 21.54 MB
Lectures/Week 1 - 02 Bayesian Network Fundamentals/06_Naive_Bayes_09-52.mp4 10.63 MB
Lectures/Week 1 - 02 Bayesian Network Fundamentals/07_Application_-_Medical_Diagnosis_09-19.mp4 11.51 MB
Lectures/Week 1 - 02 Bayesian Network Fundamentals/08_Knowledge_Engineering_Example_-_SAMIAM_14-14.mp4 12.76 MB
Lectures/Week 1 - 03 Template Models/01_Overview_of_Template_Models_10-55.mp4 11.57 MB
Lectures/Week 1 - 03 Template Models/02_Temporal_Models_-_DBNs_23-02.mp4 26.06 MB
Lectures/Week 1 - 03 Template Models/03_Temporal_Models_-_HMMs_12-01.mp4 13.58 MB
Lectures/Week 1 - 03 Template Models/04_Plate_Models_20-08.mp4 22.48 MB
Lectures/Week 1 - 04 ML-class Octave Tutorial/01_Basic_Operations_13-59.mp4 17.72 MB
Lectures/Week 1 - 04 ML-class Octave Tutorial/02_Moving_Data_Around_16-07.mp4 20.77 MB
Lectures/Week 1 - 04 ML-class Octave Tutorial/03_Computing_On_Data_13-15.mp4 15.25 MB
Lectures/Week 1 - 04 ML-class Octave Tutorial/04_Plotting_Data_09-38.mp4 13.32 MB
Lectures/Week 1 - 04 ML-class Octave Tutorial/05_Control_Statements-_for_while_if_statements_12-55.mp4 16.49 MB
Lectures/Week 1 - 04 ML-class Octave Tutorial/06_Vectorization_13-48.mp4 16.09 MB
Lectures/Week 1 - 04 ML-class Octave Tutorial/07_Working_on_and_Submitting_Programming_Exercises_03-33.mp4 5.46 MB
Lectures/Week 2 - 05 Structured CPDs/01_Overview-_Structured_CPDs_08-00.mp4 9.65 MB
Lectures/Week 2 - 05 Structured CPDs/02_Tree-Structured_CPDs_14-37.mp4 16.03 MB
Lectures/Week 2 - 05 Structured CPDs/03_Independence_of_Causal_Influence_13-08.mp4 15.85 MB
Lectures/Week 2 - 05 Structured CPDs/04_Continuous_Variables_13-25.mp4 15.33 MB
Lectures/Week 2 - 06 Markov Network Fundamentals/01_Pairwise_Markov_Networks_10-59.mp4 12.56 MB
Lectures/Week 2 - 06 Markov Network Fundamentals/02_General_Gibbs_Distribution_15-52.mp4 18.93 MB
Lectures/Week 2 - 06 Markov Network Fundamentals/03_Conditional_Random_Fields_22-22.mp4 25.06 MB
Lectures/Week 2 - 06 Markov Network Fundamentals/04_Independencies_in_Markov_Networks_04-48.mp4 5.83 MB
Lectures/Week 2 - 06 Markov Network Fundamentals/05_I-maps_and_perfect_maps_20-59.mp4 22.39 MB
Lectures/Week 2 - 06 Markov Network Fundamentals/06_Log-Linear_Models_22-08.mp4 25.76 MB
Lectures/Week 2 - 06 Markov Network Fundamentals/07_Shared_Features_in_Log-Linear_Models_08-28.mp4 10.01 MB
Lectures/Week 3 - 07 Representation Wrapup-Knowledge Engineering/01_Knowledge_Engineering_23-05.mp4 24.64 MB
Lectures/Week 3 - 08 Inference-Variable Elimination/01_Overview-_Conditional_Probability_Queries_15-22.mp4 9.01 MB
Lectures/Week 3 - 08 Inference-Variable Elimination/02_Overview-_MAP_Inference_09-42.mp4 5.87 MB
Lectures/Week 3 - 08 Inference-Variable Elimination/03_Variable_Elimination_Algorithm_16-17.mp4 11.11 MB
Lectures/Week 3 - 08 Inference-Variable Elimination/04_Complexity_of_Variable_Elimination_12-48.mp4 14.7 MB
Lectures/Week 3 - 08 Inference-Variable Elimination/05_Graph-Based_Perspective_on_Variable_Elimination_15-25.mp4 9.55 MB
Lectures/Week 3 - 08 Inference-Variable Elimination/06_Finding_Elimination_Orderings_11-58.mp4 8.77 MB
Lectures/Week 3 - 09 Inference-Belief Propagation Part 1/01_Belief_Propagation_21-21.mp4 13.25 MB
Lectures/Week 3 - 09 Inference-Belief Propagation Part 1/02_Properties_of_Cluster_Graphs_15-00.mp4 9.73 MB
Lectures/Week 4 - 10 Inference-Belief Propagation Part 2/01_Properties_of_Belief_Propagation_9-31.mp4 5.75 MB
Lectures/Week 4 - 10 Inference-Belief Propagation Part 2/02_Clique_Tree_Algorithm_-_Correctness_18-23.mp4 10.48 MB
Lectures/Week 4 - 10 Inference-Belief Propagation Part 2/03_Clique_Tree_Algorithm_-_Computation_16-18.mp4 8.72 MB
Lectures/Week 4 - 10 Inference-Belief Propagation Part 2/04_Clique_Trees_and_Independence_15-21.mp4 9.52 MB
Lectures/Week 4 - 10 Inference-Belief Propagation Part 2/05_Clique_Trees_and_VE_16-17.mp4 10.55 MB
Lectures/Week 4 - 10 Inference-Belief Propagation Part 2/06_BP_In_Practice_15-38.mp4 9.2 MB
Lectures/Week 4 - 10 Inference-Belief Propagation Part 2/07_Loopy_BP_and_Message_Decoding_21-42.mp4 13.15 MB
Lectures/Week 4 - 11 Inference-MAP Estimation Part 1/01_Max_Sum_Message_Passing_20-27.mp4 12.65 MB
Lectures/Week 4 - 11 Inference-MAP Estimation Part 1/02_Finding_a_MAP_Assignment_3-57.mp4 2.67 MB
Lectures/Week 5 - 12 Inference- MAP Estimation Part 2/01_Tractable_MAP_Problems_15-04.mp4 9.69 MB
Lectures/Week 5 - 12 Inference- MAP Estimation Part 2/02_Dual_Decomposition_-_Intuition_17-46.mp4 11.2 MB
Lectures/Week 5 - 12 Inference- MAP Estimation Part 2/03_Dual_Decomposition_-_Algorithm_16-16.mp4 9.74 MB
Lectures/Week 5 - 13 Inference- Sampling Methods/01_Simple_Sampling_23-37.mp4 13.78 MB
Lectures/Week 5 - 13 Inference- Sampling Methods/02_Markov_Chain_Monte_Carlo_14-18.mp4 9.21 MB
Lectures/Week 5 - 13 Inference- Sampling Methods/03_Using_a_Markov_Chain_15-27.mp4 9.53 MB
Lectures/Week 5 - 13 Inference- Sampling Methods/04_Gibbs_Sampling_19-26.mp4 12.5 MB
Lectures/Week 5 - 13 Inference- Sampling Methods/05_Metropolis_Hastings_Algorithm_27-06.mp4 16.91 MB
Lectures/Week 6 - 14 Inference- Temporal Models and Wrap-up/01_Inference_in_Temporal_Models_19-43.mp4 23.31 MB
Lectures/Week 6 - 14 Inference- Temporal Models and Wrap-up/02_Inference-_Summary_12-45.mp4 14.16 MB
Lectures/Week 6 - 15 Decision Theory/01_Maximum_Expected_Utility_25-57.mp4 28.99 MB
Lectures/Week 6 - 15 Decision Theory/02_Utility_Functions_18-15.mp4 19.68 MB
Lectures/Week 6 - 15 Decision Theory/03_Value_of_Perfect_Information_17-14.mp4 19.28 MB
Lectures/Week 6 - 16 ML-class Revision/01_Regularization-_The_Problem_of_Overfitting_09-42.mp4 11.15 MB
Lectures/Week 6 - 16 ML-class Revision/02_Regularization-_Cost_Function_10-10.mp4 11.63 MB
Lectures/Week 6 - 16 ML-class Revision/03_Evaluating_a_Hypothesis_07-35.mp4 8.48 MB
Lectures/Week 6 - 16 ML-class Revision/04_Model_Selection_and_Train_Validation_Test_Sets_12-03.mp4 14.07 MB
Lectures/Week 6 - 16 ML-class Revision/05_Diagnosing_Bias_vs_Variance_07-42.mp4 8.97 MB
Lectures/Week 6 - 16 ML-class Revision/06_Regularization_and_Bias_Variance_11-20.mp4 12.6 MB
Lectures/Week 6 - 17 Learning-Overview/01_Learning-_Overview_15-35.mp4 17.51 MB
Lectures/Week 7 - 18 Learning- Parameter Estimation in BNs/01_Maximum_Likelihood_Estimation_14-59.mp4 15.15 MB
Lectures/Week 7 - 18 Learning- Parameter Estimation in BNs/02_Maximum_Likelihood_Estimation_for_Bayesian_Networks_15-49.mp4 17.72 MB
Lectures/Week 7 - 18 Learning- Parameter Estimation in BNs/03_Bayesian_Estimation_15-27.mp4 18.66 MB
Lectures/Week 7 - 18 Learning- Parameter Estimation in BNs/04_Bayesian_Prediction_13-40.mp4 16.21 MB
Lectures/Week 7 - 18 Learning- Parameter Estimation in BNs/05_Bayesian_Estimation_for_Bayesian_Networks_17-02.mp4 21.16 MB
Lectures/Week 7 - 19 Learning- Parameter Estimation in MNs/01_Maximum_Likelihood_for_Log-Linear_Models_28-47.mp4 34.6 MB
Lectures/Week 7 - 19 Learning- Parameter Estimation in MNs/02_Maximum_Likelihood_for_Conditional_Random_Fields_13-24.mp4 15.1 MB
Lectures/Week 7 - 19 Learning- Parameter Estimation in MNs/03_MAP_Estimation_for_MRFs_and_CRFs_9-59.mp4 11.29 MB
Lectures/Week 8 - 20 Structure Learning/01_Structure_Learning_Overview_5-49.mp4 6.66 MB
Lectures/Week 8 - 20 Structure Learning/02_Likelihood_Scores_16-49.mp4 18.73 MB
Lectures/Week 8 - 20 Structure Learning/03_BIC_and_Asymptotic_Consistency_11-26.mp4 12.53 MB
Lectures/Week 8 - 20 Structure Learning/04_Bayesian_Scores_20-35.mp4 22.62 MB
Lectures/Week 8 - 20 Structure Learning/05_Learning_Tree_Structured_Networks_12-05.mp4 14.46 MB
Lectures/Week 8 - 20 Structure Learning/06_Learning_General_Graphs-_Heuristic_Search_23-36.mp4 26.77 MB
Lectures/Week 8 - 20 Structure Learning/07_Learning_General_Graphs-_Search_and_Decomposability_15-46.mp4 17.64 MB
Lectures/Week 9 - 21 Learning With Incomplete Data/01_Learning_With_Incomplete_Data_-_Overview_21-34.mp4 24.86 MB
Lectures/Week 9 - 21 Learning With Incomplete Data/02_Expectation_Maximization_-_Intro_16-17.mp4 18.07 MB
Lectures/Week 9 - 21 Learning With Incomplete Data/03_Analysis_of_EM_Algorithm_11-32.mp4 12.88 MB
Lectures/Week 9 - 21 Learning With Incomplete Data/04_EM_in_Practice_11-17.mp4 12.69 MB
Lectures/Week 9 - 21 Learning With Incomplete Data/05_Latent_Variables_22-00.mp4 26.7 MB
Lectures/Week 9 - 22 Learning- Wrapup/01_Summary-_Learning_20-11.mp4 25.69 MB
Lectures/Week 9 - 23 Summary/01_Class_Summary_24-38.mp4 32.21 MB
其他位置