Description |
Artificial intelligence (AI) is undergoing an explosive phase — machines can now accomplish complex specific tasks at a level that exceeds human skills. At the basis of this performance is the ability to understand the sensory input from the external world and to associate it with effective strategies to achieve the desired goal. This advanced school aims to combine different yet strongly coupled perspectives: first, theoretical approaches, which focus on principles, algorithms, and their applications to computer science; second, the relationship with experimental neuroscience, which has inspired the latest generation developments in AI and has, in turn, benefited from the ability of AI to investigate the computations underlying complex cognitive processes; third, applications such as robotics, gaming, etc. The topics covered include: • deep learning and its relation to vision and language • reinforcement learning and decision making • sensorimotor learning • the ethics of artificial intelligence and its impact on society Invited lecturers: B. Biggio (Cagliari U.) D. Braun (Ulm U.) P. Dayan (Max Planck Institute for Biological Cybernetics) J. Di Carlo (MIT) B. Kappen (Radboud U., Nijmegen) T. Lattimore (DeepMind, London) M. Pelillo (Ca' Foscari U.) J. Peters (Technische Universitaet Darmstadt) L. Rosasco (U. Genova, MIT & IIT) N. Tishby (The Hebrew University of Jerusalem) R. Zecchina (U. Bocconi ) Financial support for students from India is available under the Pratiksha Trust Scholarships, ICTS Bangalore |
Winter School on Quantitative Systems Biology: Learning and Artificial Intelligence | (smr 3246)
Go to day
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08:00 - 18:50
Monday, 12 November
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08:00
Registration & Administrative Formalities
50'
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08:50
Welcome Address
10'
Speaker: A. Celani (ICTP) -
09:00
Neural Reinforcement Learning 1: Prediction
1h45'
Speaker: P. DAYAN (Max Planck Institute for Biological Cybernetics, Tuebingen) - 10:45 Coffee break 30'
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11:15
Tutorial - Introduction to the Visual System
1h45'
Speaker: D. ZOCCOLAN (SISSA) - 13:00 Lunch break 1h30'
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14:30
Tutorial - Learning from Noisy Sequential Observations
1h45'
Speaker: C. MATHYS (SISSA) - 16:15 Coffee break 30'
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16:45
Reverse Engineering Human Vision 1: Where are the Neural Computations?
1h45'
Speaker: J. DICARLO (MIT) Material: Video - 18:30 Welcome reception 20'
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08:00
Registration & Administrative Formalities
50'
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08:00 - 18:50
Monday, 12 November
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09:00 - 18:30
Tuesday, 13 November
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09:00
Neural Reinforcement Learning 2: Choice
1h45'
Speaker: P. DAYAN (Max Planck Institute for Biological Cybernetics, Tuebingen) - 10:45 Coffee break 30'
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11:15
Reverse Engineering Human Vision 2: How Can We Model those Computations?
1h45'
Speaker: J. DICARLO (MIT) Material: Video - 13:00 Lunch break 1h30'
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14:30
Perceptrons and Gradient Descent Learning Rules
1h45'
Speaker: B. KAPPEN (Radboud U., Nijmegen) Material: Slides Suggested exercises - 16:15 Coffee break 30'
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16:45
Hands-on tutorial: An Introduction to Neural Networks
1h45'
Speaker: A. PEZZOTTA (ICTP) Material: Material
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09:00
Neural Reinforcement Learning 2: Choice
1h45'
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09:00 - 18:30
Tuesday, 13 November
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09:00 - 18:30
Wednesday, 14 November
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09:00
Neural Reinforcement Learning 3: The Self and the Other
1h45'
Speaker: P. DAYAN (Max Planck Institute for Biological Cybernetics, Tuebingen) - 10:45 Coffee break 30'
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11:15
Reverse Engineering Human Vision 3: What Is Still Missing?
1h45'
Speaker: J. DICARLO (MIT) Material: Video - 13:00 Lunch break 1h30'
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14:30
Control Theory and Path Integral Methods - 1
1h45'
Speaker: B. KAPPEN (Radboud U., Nijmegen) Material: Slides Suggested exercises Video - 16:15 Coffee break 30'
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16:45
Information Theory of Deep Learning - Rethinking Statistical Learning theory for Large-scale Learning
1h45'
Speaker: N. TISHBY (The Hebrew University of Jerusalem) Material: Video
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09:00
Neural Reinforcement Learning 3: The Self and the Other
1h45'
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09:00 - 18:30
Wednesday, 14 November
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09:00 - 18:30
Thursday, 15 November
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09:00
Information Theory of Deep Learning - The Special Role of Stochastic Gradient Descent and the Information Bottleneck Limit
1h45'
Speaker: N. TISHBY (The Hebrew University of Jerusalem) Material: Video - 10:45 Coffee break 25'
- 11:10 Group Photo 5' ( ICTP Cafeteria - terrace )
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11:15
Control Theory and Path Integral Methods - 2
1h45'
Speaker: B. KAPPEN (Radboud U., Nijmegen) Material: Slides Video - 13:00 Lunch break 1h30'
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14:30
Adversarial Machine Learning (Part I)
1h45'
Speaker: B. BIGGIO (Cagliari U.) Material: Slides Video - 16:15 Coffee break 30'
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16:45
Hands-on tutorial: Overfitting and Regularization
1h45'
Speaker: A. ANSUINI (SISSA) Material: Material
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09:00
Information Theory of Deep Learning - The Special Role of Stochastic Gradient Descent and the Information Bottleneck Limit
1h45'
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09:00 - 18:30
Thursday, 15 November
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09:00 - 18:50
Friday, 16 November
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09:00
Information Theory of Deep Learning - What Do the Layers of Deep Neural Networks Represent?
1h45'
Speaker: N. TISHBY (The Hebrew University of Jerusalem) Material: Video - 10:45 Coffee break 30'
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11:15
Adversarial Machine Learning (Part II)
1h45'
Speaker: B. BIGGIO (Cagliari U.) Material: Slides Video - 13:00 Lunch break 1h30'
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14:30
Hands-on tutorial: Convolutional Neural Networks: Theory
1h45'
Speaker: G. MATTEUCCI (SISSA) Material: Slides - 16:15 Coffee break 30'
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16:45
Hands-on tutorial: Convolutional Neural Networks: Practicals
1h45'
Speaker: E. ANNAVINI (SISSA) Material: Material - 18:30 Get-together 20'
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09:00
Information Theory of Deep Learning - What Do the Layers of Deep Neural Networks Represent?
1h45'
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09:00 - 18:50
Friday, 16 November
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09:00 - 19:30
Monday, 19 November
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09:00
Regularization in Learning Theory
1h45'
Speaker: L. ROSASCO (Genoa U. and MIT) Material: Slides Video - 10:45 Coffee break 30'
- 13:00 Lunch break 1h30'
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14:30
Robot Learning - 1
1h45'
Speaker: J. PETERS (Technische U. Darmstadt) Material: Video - 16:15 Coffee break 30'
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16:45
Hands-on tutorial: Reinforcement Learning: theory
1h45' (
Adriatico Guest House - Informatics Laboratory
)
Speaker: D. HOFMANN (Emory U.) Material: Material - 18:30 Reception 1h0'
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09:00
Regularization in Learning Theory
1h45'
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09:00 - 19:30
Monday, 19 November
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09:00 - 20:15
Tuesday, 20 November
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09:00
Implicit Regularization
1h45'
Speaker: L. ROSASCO (Genoa U. and MIT) Material: Slides Video - 10:45 Coffee break 30'
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11:15
Robot Learning - 2
1h45'
Speaker: J. PETERS (Technische U. Darmstadt) Material: Video - 13:00 Lunch break 1h30'
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14:30
Typical Minima in Single-Layer and Multilayer Networks
1h45'
Speaker: R. ZECCHINA (U. Bocconi, Milan) Material: Video - 16:15 Coffee break 30'
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16:45
The Central Role of Wide Flat Minima: Rarity, Geometrical Features and Accessibility
1h45'
Speaker: R. ZECCHINA (U. Bocconi, Milano) Material: Video
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09:00
Implicit Regularization
1h45'
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09:00 - 20:15
Tuesday, 20 November
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09:00 - 18:30
Wednesday, 21 November
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09:00
Regularization with (Random) Projections
1h45'
Speaker: L. ROSASCO (Genoa U. and MIT) Material: Slides Video - 10:45 Coffee break 30'
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11:15
Robot Learning - 3
1h45'
Speaker: J. PETERS (Technische U. Darmstadt) Material: Video - 13:00 Lunch break 1h30'
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14:30
Loss Functions for Deep Learning
1h45'
Speaker: R. ZECCHINA (U. Bocconi, Milano) Material: Video - 16:15 Coffee break 30'
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16:45
Bandit Algorithms - 1
1h45'
Speaker: T. LATTIMORE (DeepMind, London) Material: Video
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09:00
Regularization with (Random) Projections
1h45'
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09:00 - 18:30
Wednesday, 21 November
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09:00 - 18:30
Thursday, 22 November
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09:00
Computational Models of Sensorimotor Learning and Decision-making - 1
1h45'
Speaker: D. BRAUN (U. of Ulm) Material: Video - 10:45 Coffee break 30'
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11:15
Computational Models of Sensorimotor Learning and Decision-making - 2
1h45'
Speaker: D. BRAUN (U. of Ulm) Material: Video - 13:00 Lunch break 1h30'
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14:30
Bandit Algorithms - 2
1h45'
Speaker: T. LATTIMORE (DeepMind, London) Material: Video - 16:15 Coffee break 30'
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16:45
Hands-on tutorial: Reinforcement Learning: Practicals
1h45'
Speaker: M. ADORISIO (ICTP) Material: Material
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09:00
Computational Models of Sensorimotor Learning and Decision-making - 1
1h45'
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09:00 - 18:30
Thursday, 22 November
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09:00 - 18:50
Friday, 23 November
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09:00
Computational Models of Sensorimotor Learning and Decision-making - 3
1h45'
Speaker: D. BRAUN (U. of Ulm) Material: Video - 10:45 Coffee break 30'
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11:15
Bandit Algorithms - 3
1h45'
Speaker: T. LATTIMORE (DeepMind, London) Material: Video - 13:00 Lunch break 1h30'
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14:30
Through the Philosopher’s Glass
1h45' (
Adriatico Guest House - Kastler Lecture Hall Area (Lower Level 1)
)
Speaker: M. PELILLO (U. Ca' Foscari, Venice) Material: Slides - 16:15 Coffee break 30'
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16:45
Hands-on tutorial: Adversarial attacks and representations decoding
1h45'
Material: Material - 18:30 Reception 20'
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09:00
Computational Models of Sensorimotor Learning and Decision-making - 3
1h45'
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09:00 - 18:50
Friday, 23 November