{"id":4266,"date":"2026-01-16T11:04:07","date_gmt":"2026-01-16T11:04:07","guid":{"rendered":"https:\/\/devserver.admin.uoc.gr\/damsl\/?page_id=4266"},"modified":"2026-01-16T11:07:09","modified_gmt":"2026-01-16T11:07:09","slug":"damsl-212-probabilistic-graphical-models","status":"publish","type":"page","link":"https:\/\/mscs.uoc.gr\/damsl\/damsl-212-probabilistic-graphical-models\/","title":{"rendered":"DAMSL-212 Probabilistic Graphical Models"},"content":{"rendered":"\t\t<div data-elementor-type=\"wp-page\" data-elementor-id=\"4266\" class=\"elementor elementor-4266\" data-elementor-post-type=\"page\">\n\t\t\t\t<div class=\"elementor-element elementor-element-47e7b33 e-flex e-con-boxed e-con e-parent\" data-id=\"47e7b33\" data-element_type=\"container\" data-settings=\"{&quot;background_background&quot;:&quot;classic&quot;}\">\n\t\t\t\t\t<div class=\"e-con-inner\">\n\t\t<div class=\"elementor-element elementor-element-2c87900 e-con-full e-flex e-con e-child\" data-id=\"2c87900\" data-element_type=\"container\">\n\t\t\t\t<div class=\"elementor-element elementor-element-63fb3b4 elementor-widget elementor-widget-text-editor\" data-id=\"63fb3b4\" data-element_type=\"widget\" data-widget_type=\"text-editor.default\">\n\t\t\t\t<div class=\"elementor-widget-container\">\n\t\t\t\t\t\t\t\t\t<p><strong style=\"font-size: 22px;\">Type<\/strong><\/p><p><strong style=\"font-size: 16px;\">Elective<\/strong><\/p>\t\t\t\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t<div class=\"elementor-element elementor-element-6ff4fab e-con-full e-flex e-con e-child\" data-id=\"6ff4fab\" data-element_type=\"container\">\n\t\t\t\t<div class=\"elementor-element elementor-element-cbbdc33 elementor-widget elementor-widget-text-editor\" data-id=\"cbbdc33\" data-element_type=\"widget\" data-widget_type=\"text-editor.default\">\n\t\t\t\t<div class=\"elementor-widget-container\">\n\t\t\t\t\t\t\t\t\t<p><strong style=\"font-size: 22px;\">Course Code<\/strong><\/p><p><strong style=\"font-size: 16px;\">DAMSL-212<\/strong><\/p>\t\t\t\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t<div class=\"elementor-element elementor-element-4728792 e-con-full e-flex e-con e-child\" data-id=\"4728792\" data-element_type=\"container\">\n\t\t\t\t<div class=\"elementor-element elementor-element-e4dd7f1 elementor-widget elementor-widget-text-editor\" data-id=\"e4dd7f1\" data-element_type=\"widget\" data-widget_type=\"text-editor.default\">\n\t\t\t\t<div class=\"elementor-widget-container\">\n\t\t\t\t\t\t\t\t\t<p><strong style=\"font-size: 22px;\">Teaching Semester<\/strong><\/p><p><strong style=\"font-size: 16px;\">B semester<\/strong><\/p>\t\t\t\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t<div class=\"elementor-element elementor-element-74b417e e-con-full e-flex e-con e-child\" data-id=\"74b417e\" data-element_type=\"container\">\n\t\t\t\t<div class=\"elementor-element elementor-element-c4e7ca8 elementor-widget elementor-widget-text-editor\" data-id=\"c4e7ca8\" data-element_type=\"widget\" data-widget_type=\"text-editor.default\">\n\t\t\t\t<div class=\"elementor-widget-container\">\n\t\t\t\t\t\t\t\t\t<p><strong style=\"font-size: 22px;\">ECTS Credits<\/strong><\/p><p><strong style=\"font-size: 16px;\">10<\/strong><\/p>\t\t\t\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t<div class=\"elementor-element elementor-element-aea9e47 e-flex e-con-boxed e-con e-parent\" data-id=\"aea9e47\" data-element_type=\"container\" data-settings=\"{&quot;background_background&quot;:&quot;classic&quot;}\">\n\t\t\t\t\t<div class=\"e-con-inner\">\n\t\t<div class=\"elementor-element elementor-element-ca881e9 e-grid e-con-full e-con e-child\" data-id=\"ca881e9\" data-element_type=\"container\">\n\t\t\t\t<div class=\"elementor-element elementor-element-8169c04 elementor-widget elementor-widget-text-editor\" data-id=\"8169c04\" data-element_type=\"widget\" data-widget_type=\"text-editor.default\">\n\t\t\t\t<div class=\"elementor-widget-container\">\n\t\t\t\t\t\t\t\t\t<div class=\"et_pb_module et_pb_text et_pb_text_5_tb_body et_pb_text_align_left et_pb_bg_layout_light\"><div class=\"et_pb_text_inner\"><div class=\"custom-field course-field \"><h6>Student Performance Evaluation<\/h6><p>Homework and\/or Lab Assignments, Final Exam and\/or Project<\/p><\/div><\/div><\/div><div class=\"et_pb_module et_pb_text et_pb_text_6_tb_body et_pb_text_align_left et_pb_bg_layout_light\"><div class=\"et_pb_text_inner\"><div class=\"custom-field course-field \"><p>\u00a0<\/p><\/div><\/div><\/div>\t\t\t\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t<div class=\"elementor-element elementor-element-ca0c741 e-flex e-con-boxed e-con e-parent\" data-id=\"ca0c741\" data-element_type=\"container\" data-settings=\"{&quot;background_background&quot;:&quot;classic&quot;}\">\n\t\t\t\t\t<div class=\"e-con-inner\">\n\t\t<div class=\"elementor-element elementor-element-6f13111 e-grid e-con-full e-con e-child\" data-id=\"6f13111\" data-element_type=\"container\" data-settings=\"{&quot;background_background&quot;:&quot;classic&quot;}\">\n\t\t\t\t<div class=\"elementor-element elementor-element-6361eff elementor-widget elementor-widget-text-editor\" data-id=\"6361eff\" data-element_type=\"widget\" data-widget_type=\"text-editor.default\">\n\t\t\t\t<div class=\"elementor-widget-container\">\n\t\t\t\t\t\t\t\t\t<div id=\"outcomes\" class=\"et_pb_module et_pb_text et_pb_text_1_tb_body et_pb_text_align_left et_pb_bg_layout_light\"><div class=\"et_pb_text_inner\"><div class=\"custom-field course-main \"><h6><span style=\"text-decoration: underline;\">Syllabus<\/span><\/h6><ul><li>Introduction + Probability<\/li><li>Random variables and their distributions<\/li><li>Bayesian Inference\/Frequentist. Inference\u00a0<\/li><li>Directed Graphical Models\u00a0<\/li><li>Directed graphical Models, Naive Bayes Classifier<\/li><li>Undirected Graphical Models<\/li><li>Exact Inference.<\/li><li>Exact Inference.<\/li><li>Monte Carlo Sampling<\/li><li>Learning PGMs-Parameter Learning<\/li><li>Learning PGMs-Structure Learning<\/li><li>Causality.<\/li><li>Expectation-Maximization<\/li><\/ul><\/div><\/div><\/div>\t\t\t\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t<div class=\"elementor-element elementor-element-caa1dca elementor-widget elementor-widget-text-editor\" data-id=\"caa1dca\" data-element_type=\"widget\" data-widget_type=\"text-editor.default\">\n\t\t\t\t<div class=\"elementor-widget-container\">\n\t\t\t\t\t\t\t\t\t<h6><span style=\"text-decoration: underline;\">Learning Outcomes<\/span><\/h6><div id=\"outcomes\" class=\"et_pb_module et_pb_text et_pb_text_2_tb_body et_pb_text_align_left et_pb_bg_layout_light\"><div class=\"et_pb_text_inner\"><div class=\"custom-field course-main \"><p>This is a graduate-level introduction to the principles of statistical inference with probabilistic models defined using graphical representations. Probabilistic graphical modeling and inference is a powerful modern approach to representing the combined statistics of data and models, reasoning about the world in the face of uncertainty, and learning about it from data. This course will provide a solid introduction to the methodology and associated techniques.\u00a0<\/p><p>The objective of this course is for students to develop a solid understanding of probabilistic graphical models, learn how to apply them to diverse problems. Students are expected to become familiar with the following concepts: Bayesian methodology, conditional independence, model selection, directed graphical models (Bayes nets), undirected graphical models (Markov random fields, factor graphs), exact inference on graphs using message passing, expressing model learning as inference, approximate inference for missing value problems using expectation maximization (EM), variational inference, sampling probability distributions using Markov chain Monte Carlo (MCMC). Specific Topics Include:<\/p><ol><li style=\"list-style-type: none;\"><ol><li>Creating both directed and undirected graphical models for data.<\/li><li>Identifying conditional independencies in graphical models.<\/li><li>Specifying distributions for parameters of model components that link the model to data.<\/li><li>Applying exact and approximate inference methods to compule manginal probabilities and maximally probable configurations given a model (sum-product and max-sum algorithms, respectively, Monte Carlo sampling methods).<\/li><li>Applying approximate inference to learn model parameters using expectation maximization (EM algorithm) and variational inference.<\/li><\/ol><\/li><\/ol><\/div><\/div><\/div>\t\t\t\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t<div class=\"elementor-element elementor-element-396be16 e-flex e-con-boxed e-con e-parent\" data-id=\"396be16\" data-element_type=\"container\">\n\t\t\t\t\t<div class=\"e-con-inner\">\n\t\t\t\t<div class=\"elementor-element elementor-element-93f3c11 elementor-widget elementor-widget-spacer\" data-id=\"93f3c11\" data-element_type=\"widget\" data-widget_type=\"spacer.default\">\n\t\t\t\t<div class=\"elementor-widget-container\">\n\t\t\t\t\t\t\t<div class=\"elementor-spacer\">\n\t\t\t<div class=\"elementor-spacer-inner\"><\/div>\n\t\t<\/div>\n\t\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t","protected":false},"excerpt":{"rendered":"<p>Type Elective Course Code DAMSL-212 Teaching Semester B semester ECTS Credits 10 Student Performance Evaluation Homework and\/or Lab Assignments, Final Exam and\/or Project \u00a0 Syllabus Introduction + Probability Random variables and their distributions Bayesian Inference\/Frequentist. Inference\u00a0 Directed Graphical Models\u00a0 Directed graphical Models, Naive Bayes Classifier Undirected Graphical Models Exact Inference. Exact Inference. Monte Carlo Sampling Learning PGMs-Parameter Learning Learning PGMs-Structure Learning Causality. Expectation-Maximization Learning Outcomes This is a graduate-level introduction to the principles of statistical inference with probabilistic models defined using graphical representations. Probabilistic graphical modeling and inference is a powerful modern approach to representing the combined statistics of data and models, reasoning about the world in the face of uncertainty, and learning about it from data. This course will provide a solid introduction to the methodology and associated techniques.\u00a0 The objective of this course is for students to develop a solid understanding of probabilistic graphical models, learn how to apply them to diverse problems. Students are expected to become familiar with the following concepts: Bayesian methodology, conditional independence, model selection, directed graphical models (Bayes nets), undirected graphical models (Markov random fields, factor graphs), exact inference on graphs using message passing, expressing model learning as inference, approximate inference for missing value problems using expectation maximization (EM), variational inference, sampling probability distributions using Markov chain Monte Carlo (MCMC). Specific Topics Include: Creating both directed and undirected graphical models for data. Identifying conditional independencies in graphical models. Specifying distributions for parameters of model components that link the model to data. Applying exact and approximate inference methods to compule manginal probabilities and maximally probable configurations given a model (sum-product and max-sum algorithms, respectively, Monte Carlo sampling methods). Applying approximate inference to learn model parameters using expectation maximization (EM algorithm) and variational inference.<\/p>\n","protected":false},"author":194,"featured_media":0,"parent":0,"menu_order":0,"comment_status":"closed","ping_status":"closed","template":"","meta":{"_acf_changed":false,"inline_featured_image":false,"footnotes":""},"class_list":["post-4266","page","type-page","status-publish","hentry","post-no-thumbnail"],"acf":[],"_links":{"self":[{"href":"https:\/\/mscs.uoc.gr\/damsl\/wp-json\/wp\/v2\/pages\/4266","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/mscs.uoc.gr\/damsl\/wp-json\/wp\/v2\/pages"}],"about":[{"href":"https:\/\/mscs.uoc.gr\/damsl\/wp-json\/wp\/v2\/types\/page"}],"author":[{"embeddable":true,"href":"https:\/\/mscs.uoc.gr\/damsl\/wp-json\/wp\/v2\/users\/194"}],"replies":[{"embeddable":true,"href":"https:\/\/mscs.uoc.gr\/damsl\/wp-json\/wp\/v2\/comments?post=4266"}],"version-history":[{"count":4,"href":"https:\/\/mscs.uoc.gr\/damsl\/wp-json\/wp\/v2\/pages\/4266\/revisions"}],"predecessor-version":[{"id":4279,"href":"https:\/\/mscs.uoc.gr\/damsl\/wp-json\/wp\/v2\/pages\/4266\/revisions\/4279"}],"wp:attachment":[{"href":"https:\/\/mscs.uoc.gr\/damsl\/wp-json\/wp\/v2\/media?parent=4266"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}