f11Stat946presentation: Difference between revisions

From statwiki
Jump to navigation Jump to search
No edit summary
m (Conversion script moved page F11Stat946presentation to f11Stat946presentation: Converting page titles to lowercase)
 
(41 intermediate revisions by 11 users not shown)
Line 7: Line 7:
{| class="wikitable"
{| class="wikitable"


{| border="1" cellpadding="4"
{| border="1" cellpadding="5"
|-
|-
|width="200pt"|Date
|width="200pt"|Date
Line 13: Line 13:
|width="700pt"|Title
|width="700pt"|Title
|width="50pt"|Link
|width="50pt"|Link
|width="50pt"|Summary
|-
|-
|-
|-
|-
|-
|Nov 15 (Presentation 1)|| Venkata Manem || Gene finding with a hidden Markov model of genome structure and evolution|| [http://bioinformatics.oxfordjournals.org/content/19/2/219.full.pdf]
|Nov 15 (Presentation 1)|| Azin Ashkan || A Dynamic Bayesian Network Click Model for Web Search Ranking || [http://olivier.chapelle.cc/pub/DBN_www2009.pdf]||[[A Dynamic Bayesian Network Click Model for Web Search Ranking|Summary]]
|-
|-
|-
|-
|Nov 15 (Presentation 2)|| Mohammad Rostami ||Compressed Sensing Reconstruction via Belief Propagation ||[http://dsp.rice.edu/sites/dsp.rice.edu/files/cs/csbpTR07142006.pdf]
|Nov 15 (Presentation 2)|| Keyvan Golestan || Decentralised Data Fusion: A Graphical Model Approach || [http://isif.org/fusion/proceedings/fusion09CD/data/papers/0280.pdf]||[[Decentralised Data Fusion: A Graphical Model Approach (Summary)|Summary]]
|-
|-
|-
|-
|Nov 17 (Presentation 1)||   || ||
|Nov 17 (Presentation 1)|| Venkata Manem || Quantifying cancer progression with conjunctive Bayesian networks.|| [http://bioinformatics.oxfordjournals.org/content/25/21/2809.full.pdf] || [[Quantifying cancer progression with conjunctive Bayesian networks.|Summary]]
|-
|-
|-
|-
|Nov 17 (Presentation 2)||  || ||
|Nov 17 (Presentation 2)||  Mohammad Rostami ||Compressed Sensing Reconstruction via Belief Propagation ||[http://dsp.rice.edu/sites/dsp.rice.edu/files/cs/csbpTR07142006.pdf]|| [[Compressed Sensing Reconstruction via Belief Propagation|Summary]]
|-
|-
|-
|-
|Nov 22 (Presentation 1)|| Mazen A. Melibari ||Learning the Structure of Deep Sparse Graphical Models|| [http://www.cs.toronto.edu/~rpa/papers/adams-wallach-ghahramani-2010a.pdf]
|Nov 22 (Presentation 1)|| Mazen A. Melibari ||An HDP-HMM for Systems with State Persistence|| [http://www.cs.brown.edu/~sudderth/papers/icml08.pdf]
|| [[An HDP-HMM for Systems with State Persistence|Summary]]
|-
|-
|-
|-
|Nov 22 (Presentation 2)||Tameem Adel|| Graphical Models for Structured Classification, with an Application to Interpreting Images of Protein Sub-cellular Location Patterns || [http://jmlr.csail.mit.edu/papers/volume9/chen08a/chen08a.pdf]
|Nov 22 (Presentation 2)||Tameem Adel|| Graphical Models for Structured Classification, with an Application to Interpreting Images of Protein Sub-cellular Location Patterns || [http://jmlr.csail.mit.edu/papers/volume9/chen08a/chen08a.pdf] || [[Graphical models for structured classification, with an application to interpreting images of protein subcellular location patterns|Summary]]
|-
|-
|-
|-
|Nov 24 (Presentation 1)|| Pouria Fewzee || ||
|Nov 24 (Presentation 1)|| Pouria Fewzee || Context Adaptive Training with Factorized Decision Trees for HMM-Based Speech Synthesis || [http://mi.eng.cam.ac.uk/~ky219/papers/yu-is10.pdf] || [[Context Adaptive Training with Factorized Decision Trees for HMM-Based Speech Synthesis|Summary]]
|-
|-
|-
|-
|Nov 24 (Presentation 2)|| Ali-Akbar Samadani || ||
|Nov 24 (Presentation 2)|| Ali-Akbar Samadani ||Incremental Learning, Clustering and Hierarchy Formation of Whole Body Motion Patterns using Adaptive Hidden Markov Chains || [http://ijr.sagepub.com/content/27/7/761.abstract]||[[Incremental Learning, Clustering and Hierarchy Formation of Whole Body Motion Patterns using Adaptive Hidden Markov Chains(Summary)|Summary]]
|-
|-
|-
|-
|Nov 29 (Presentation 1)|||| ||
|Nov 29 (Presentation 1)||Hojatollah Yeganeh ||Markov Random Fields for Super-Resolution ||[http://www.merl.com/reports/docs/TR2000-08.pdf]||[[Markov Random Fields for Super-Resolution|Summary]]
|-
|-
|Nov 29 (Presentation 2)||Areej Alhothali || ||
|-
|-
|Dec 1 (Presentation 1)||Hojatollah Yeganeh || Single-image super-resolution based on Markov random field and contourlet transform||[http://spiedigitallibrary.org/jei/resource/1/jeime5/v20/i2/p023005_s1]
|-
|-
|-
|-
|Nov 29 (Presentation 2)||Areej Alhothali || Video-based face recognition using adaptive hidden markov models||[http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=1211373]||[[Video-based face recognition using Adaptive HMM|Summary]]
|}
|}
|}
|}

Latest revision as of 08:45, 30 August 2017

Sign up for your presentation in the following table. Chose a date between Nov 15 and Dec 1 (inclusive). You just need to sign up your name at the moment. When you chose the paper that you would like to present, add its title and a link to the paper.


Date Speaker Title Link Summary
Nov 15 (Presentation 1) Azin Ashkan A Dynamic Bayesian Network Click Model for Web Search Ranking [1] Summary
Nov 15 (Presentation 2) Keyvan Golestan Decentralised Data Fusion: A Graphical Model Approach [2] Summary
Nov 17 (Presentation 1) Venkata Manem Quantifying cancer progression with conjunctive Bayesian networks. [3] Summary
Nov 17 (Presentation 2) Mohammad Rostami Compressed Sensing Reconstruction via Belief Propagation [4] Summary
Nov 22 (Presentation 1) Mazen A. Melibari An HDP-HMM for Systems with State Persistence [5] Summary
Nov 22 (Presentation 2) Tameem Adel Graphical Models for Structured Classification, with an Application to Interpreting Images of Protein Sub-cellular Location Patterns [6] Summary
Nov 24 (Presentation 1) Pouria Fewzee Context Adaptive Training with Factorized Decision Trees for HMM-Based Speech Synthesis [7] Summary
Nov 24 (Presentation 2) Ali-Akbar Samadani Incremental Learning, Clustering and Hierarchy Formation of Whole Body Motion Patterns using Adaptive Hidden Markov Chains [8] Summary
Nov 29 (Presentation 1) Hojatollah Yeganeh Markov Random Fields for Super-Resolution [9] Summary
Nov 29 (Presentation 2) Areej Alhothali Video-based face recognition using adaptive hidden markov models [10] Summary