Description
Multimodal machine learning (MMML) is a vibrant multi-disciplinary research field which addresses some of the original goals of artificial intelligence by integrating and modeling multiple communicative modalities, including linguistic, acoustic and visual messages. With the initial research on audio-visual speech recognition and more recently with language & vision projects such as image and video captioning, this research field brings some unique challenges for multimodal researchers given the heterogeneity of the data and the contingency often found between modalities. This course will teach fundamental mathematical concepts related to MMML including multimodal alignment and fusion, heterogeneous representation learning and multi-stream temporal modeling. We will also review recent papers describing state-of-the-art probabilistic models and computational algorithms for MMML and discuss the current and upcoming challenges.
Recommended preparation: This is a graduate course designed primarily for PhD and research master students at LTI, MLD, CSD, HCII and RI; others, for example (undergraduate) students of CS or from professional master programs, are advised to seek prior permission of the instructor. It is required for students to have taken an introduction machine learning course such as 10-401, 10-601, 10-701, 11-663, 11-441, 11-641 or 11-741. Prior knowledge of deep learning is recommended. Students should have proper academic background in probability, statistic and linear algebra. Programming knowledge in Python is also strongly recommended.
More details in the Syllabus document.
Recommended preparation: This is a graduate course designed primarily for PhD and research master students at LTI, MLD, CSD, HCII and RI; others, for example (undergraduate) students of CS or from professional master programs, are advised to seek prior permission of the instructor. It is required for students to have taken an introduction machine learning course such as 10-401, 10-601, 10-701, 11-663, 11-441, 11-641 or 11-741. Prior knowledge of deep learning is recommended. Students should have proper academic background in probability, statistic and linear algebra. Programming knowledge in Python is also strongly recommended.
More details in the Syllabus document.
General Information
Time
Tuesdays and Thursday, 3:05pm-4:25pm
Location
DH 1212
Name | Office Hours | |
---|---|---|
AmirAli Bagher Zadeh | When? Where? | |
Louis-Philippe Morency | When? Where? | |
Tianqin Li | When? Where? | |
Ta Chung Chi | When? Where? | |
Xuandi FU | When? Where? | |
Martin Ma | When? Where? |
Lecture Slides
Lecture Slides
Lecture Date
Nov 16, 2021
Nov 11, 2021
Nov 9, 2021
Oct 28, 2021
Oct 26, 2021
Oct 19, 2021
Oct 12, 2021
Oct 7, 2021
Sep 30, 2021
Sep 28, 2021
Sep 23, 2021
Sep 16, 2021
Sep 14, 2021
Sep 9, 2021
Sep 7, 2021
Sep 2, 2021
Aug 31, 2021
Reading Assignments
Reading Assignments
Start Date
Oct 18, 2021
Nov 10, 2021
Sep 1, 2021