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January 01, 2016

  • Date:28ThursdayDecember 2023

    Geometric Functional Analysis and Probability Seminar

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    Time
    13:30 - 14:30
    Title
    Persistence of stationary Gaussian fields with spectral singularity: from universality to entropic repulsion
    Location
    Jacob Ziskind Building
    LecturerOhad Noy Feldheim
    HUJI
    Organizer
    Department of Mathematics
    Contact
    AbstractShow full text abstract about We study the persistence event ${f(x)>0 for all x in D}$ ...»
    We study the persistence event ${f(x)>0 for all x in D}$ for stationary Gaussian fields on d dimensional Euclidean space, with a spectral singularity at the origin of order $alpha$, i.e. such that their spectral density at the origin behaves like $|lambda|^{-alpha}$. Our main result is that, under certain mild regularity conditions, the probability of persistence on a large ball $D=B(T)$ decays at a universal log-asymptotic rate of $m (d-alpha)(log T) capa(B(T))$, where $capa(B(T))$ is the capacity of $B(T)$ with respect to the field, and $m$ is the mass of the absolutely continuous component of its spectrum. This generalises a result of Bolthausen, Deuschel and Zeitouni for the Gaussian free field (GFF) on $^d$, $d ge 3$, to a wide class of Gaussian fields with spectral singularity.  Using this estimate, we establish an `entropic repulsion’ phenomenon,  showing that the field conditioned to persist is tending in distribution to an independent copy of the unconditioned process, shifted by a constant level of $sqrt{m (d-alpha)(log T)}$.

     

    This work is the first to introduce the notions of capacity and equilibrium potential to the spectral theory of persistence. In the course of the talk I will explain these notions, provide an overview of the proof and present the role of these notions in improving the precision of persistence probability estimates. I will also try to put this work in the context of current study of rare events of stationary Gaussian processes. No prior knowledge of the subject is assumed.

     

    Joint work with Naomi Feldheim from Bar-Ilan and Stephen Muirhead from Melbourne.
    Lecture
  • Date:31SundayDecember 2023

    The Clore Center for Biological Physics

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    Time
    13:15 - 14:15
    Title
    Erasing information fast and cheap --- How to approach Landauer’s bound?
    Location
    Edna and K.B. Weissman Building of Physical Sciences
    Organizer
    Clore Center for Biological Physics
    Contact
    AbstractShow full text abstract about The celebrated Landauer bound is the fundamental universal c...»
    The celebrated Landauer bound is the fundamental universal cost of computation: there must be dissipation of at least kBTlog2 per erasure of one bit. This fundamental bound is reached when the erasure protocol is performed in the slow quasi-static limit. Generally, the faster the erasure protocol, the more dissipation is generated.
    In this talk, I will present two approaches that challenge this view. First, it will be shown that by the use of a conserved quantity in the system, one can bypass Liouville’s theorem and perform erasure at zero energetic cost. The second approach that will be discussed is considering a system that is weakly coupled to the environment. In that case, one can design an erasure procedure that does not scale with its operation time.
    Lecture
  • Date:02TuesdayJanuary 2024

    A paradigm shift in GPCR recruitment and activity: GPCR Voltage Dependence Controls Neuronal Plasticity and Behavior

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    Time
    All day
    Location
    Gerhard M.J. Schmidt Lecture Hall
    LecturerProf. Moshe Parnas
    Dept of Physiology and Pharmacology Tel Aviv University
    Organizer
    Department of Brain Sciences
    Contact
    AbstractShow full text abstract about : G-protein coupled receptors (GPCRs) play a paramount role ...»
    : G-protein coupled receptors (GPCRs) play a paramount role in diverse brain functions. Twenty years ago, GPCR activity was shown to be regulated by membrane potential in vitro, but whether the voltage dependence of GPCRs contributes to neuronal coding and behavioral output under physiological conditions in vivo has never been demonstrated. We show in two different processes that muscarinic GPCR mediated neuromodulation in vivo is voltage dependent. First, we show that muscarinic type A receptors (mAChR-A) mediated neuronal potentiation is voltage dependent. This potentiation voltage dependency is abolished in mutant flies expressing a voltage independent receptor. Most important, muscarinic receptor voltage independence caused a strong behavioral effect of increased odor habituation. Second, we show that muscarinic type B receptors (mAChR-B) voltage dependency is required for both efficient and accurate learning and memory. Normally, to prevent non-specific olfactory learning and memory, mAChR-B activity suppress both signals that are required for plasticity. Behavior experiments demonstrate that mAChR-B knockdown impairs olfactory learning by inducing undesired changes to the valence of an odor that was not associated with the reinforcer. On the other hand, mAChR-B voltage dependence prevents mAChR-B to interfere with plasticity in neurons that are required for the learning and memory process. Indeed, generating flies with a voltage independent mAChR-B resulted in impaired learning. Thus, we provide the very first demonstrations of physiological roles for the voltage dependency of GPCRs by demonstrating crucial involvement of GPCR voltage dependence in neuronal plasticity and behavior. As such, our findings create a paradigm shift in our thinking on GPCR recruitment and activity. Together, we suggest that GPCR voltage dependency plays a role in many diverse neuronal functions including learning and memory and may serve as a target for novel drug development.
    Light refreshments before the seminar.
    Lecture
  • Date:02TuesdayJanuary 2024

    Enhanced Growth in Atomic Layer Deposition of Transition Metals: The Role of Surface Diffusion and Nucleation Sites

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    Time
    11:15 - 12:15
    Location
    Gerhard M.J. Schmidt Lecture Hall
    LecturerDr. Amnon Rothman
    Chemical Engineering, Stanford University
    Organizer
    Department of Molecular Chemistry and Materials Science
    Contact
    AbstractShow full text abstract about Noble metal thin films have attracted significant interest o...»
    Noble metal thin films have attracted significant interest owing to their distinctive properties and structures, which make them ideal for applications in microelectronics, catalysis, energy, and photovoltaics. While several parameters influence the properties of these metals for such applications, the deposition process remains a critical factor. Atomic Layer Deposition (ALD) stands out as a prevalent deposition technique due to its surface-sensitive nature. The ALD process is characterized by its self-limiting surface reactions, promoting a layer-by-layer growth mechanism and allowing for precise control over film thickness and conformality. However, challenges arise in achieving continuous, pinhole-free noble metal ALD layers on oxide surfaces, often resulting in low film quality. These challenges can be traced back to the lack of adequate nucleation sites and the poor wettability of the low-surface energy substrates. The research studied the impact of substrate surface functionalization using organometallic molecules, such as trimethylaluminum (TMA) and diethylzinc (DEZ), on the nucleation and growth of Ru layers. The results reveal an enhancement in both nucleation density and the average diameter of the Ru nanoparticles deposited, and these improvements were attributed to an increase in both nucleation sites and elevated surface diffusivity. The latter effect is speculated to result from a reduction in the substrate's surface free energy. The study also examines the influence of substrate surface characteristics, including surface termination and crystallinity, on the nucleation and growth of Ru metal via ALD. The morphologies of the resulting Ru thin films are studied using scanning electron microscopy (SEM), atomic force microscopy (AFM), and grazing incidence small angle x-ray scattering (GISAXS). These analytical results are integrated with an experimental model to elucidate the differences in growth mechanisms observed across substrates. The findings underscore the importance of substrate choice in the ALD process and broaden our understanding of Ru metal growth. This research serves as an important step in optimizing the ALD process for various applications by tailoring substrate selection.
    Lecture
  • Date:03WednesdayJanuary 2024

    Special Guest Seminar: Dr. Sharon Fleischer

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    Time
    10:00 - 12:00
    Title
    Stem cell based cardiac tissue models to study the human heart in health and disease
    Location
    Wolfson Building for Biological Research
    LecturerDr. Sharon Fleischer
    Columbia University
    Organizer
    Department of Molecular Cell Biology
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  • Date:03WednesdayJanuary 2024

    Machine Learning and Statistics Seminar

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    Time
    11:15 - 12:15
    Title
    Theoretical Foundations of Neural Networks: Expressiveness, Optimization, and Generalization
    Location
    Jacob Ziskind Building
    Organizer
    Department of Computer Science and Applied Mathematics
    Contact
    AbstractShow full text abstract about In recent years neural networks achieved state-of-the-art re...»
    In recent years neural networks achieved state-of-the-art results in many different applications such as computer vision, natural language processing, and speech recognition. Despite their empirical success, the theoretical understanding of neural networks remains limited. This gap can be seen in all aspects of learning: optimization, generalization, and expressiveness. My thesis aims to address this gap by providing theoretical insights into neural network success, bridging the practical and theoretical aspects. In this talk, I focus on the three following topics:
    (1) Expressiveness: We study the memorization capabilities of neural networks, and provide a construction for memorization of $N$ labeled samples using a network with $ ilde{O}(sqrt{N})$ parameters, which is optimal up to log factors due to known lower bounds. Our analysis underscores the crucial role of depth in achieving near-optimal memorization capacity.
    (2) Optimization: Investigating the effects of mild over-parameterization on the optimization landscape of a simple ReLU network in a well-studied teacher-student setting.  We prove that the optimization landscape changes significantly between exact and over-parameterized regimes. For example, over-parameterization can turn local minima into saddle points in certain cases, making the landscape more favorable.  

    (3) Generalization: Exploring the generalization properties of interpolating 2-layer neural networks in the presence of label noise. We prove that in this overfitting regime, the input dimension plays a major role in the type of overfitting the network achieves. Namely, in dimension 1 the overfitting scales with the magnitude of the noise (tempered overfitting), while in high dimensions it converges to zero with the input dimension (benign overfitting).

     
    Lecture
  • Date:03WednesdayJanuary 2024

    Chemical and Biological Physics Guest seminar

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    Time
    15:00 - 16:00
    Title
    Atomic arrays as programmable quantum processors and sensors
    Location
    Gerhard M.J. Schmidt Lecture Hall
    LecturerDr Ran Finkelstein
    Caltech
    Organizer
    Department of Chemical and Biological Physics
    Contact
    AbstractShow full text abstract about Large arrays of trapped neutral atoms have emerged over the ...»
    Large arrays of trapped neutral atoms have emerged over the past few years as a promising platform for quantum information processing, combining inherent scalability with high-fidelity control and site-resolved readout. In this talk, I will discuss ongoing work with arrays of Alkaline-earth atoms. These divalent atoms offer unique properties stemming largely from their long-lived metastable states, which form the basis of the optical atomic clock. I will describe the design of a universal quantum processor based on clock qubits and its application in quantum metrology, and I will address the challenge of generating and benchmarking highly entangled states in an analog quantum simulator. First, we realize scalable local control of individual clock qubits, which we utilize to extend the Ramsey interrogation time beyond the coherence time of a single atom [1]. To realize a universal quantum processor, we demonstrate record high-fidelity two-qubit entangling gates mediated by Rydberg interactions, which we combine with dynamical reconfiguration to entangle clock probes in GHZ states and perform Ancilla-based detection [2]. We then use the narrow clock transition to measure and remove thermal excitations of atoms in tweezers (a technique known as erasure conversion) and generate hyperentangled states of motion and spin [3]. In the second part of the talk, I will describe a different approach for generating large scale entangled states in an analog quantum simulator configuration [4], including error mitigation [5] and benchmarking of a 60-atom simulator [6]. Together, these show the great promise and the large variety of experiments accessed with this emerging platform. [1] A. Shaw*, R. Finkelstein*, R. Tsai, P. Scholl, T. Yoon, J. Choi, M. Endres, Multi-ensemble metrology by programming local rotations with atom movements, arxiv:2303.16885, Nature Physics in press (2023). [2] R. Finkelstein, R. Tsai, A. Shaw, X. Sun, M. Endres, A universal quantum processor for entanglement enhanced optical tweezer clocks, in preparation. [3] P. Scholl*, A. Shaw*, R. Finkelstein*, R. Tsai, J. Choi, M. Endres, Erasure cooling, control, and hyper-entanglement of motion in optical tweezers, arXiv:2311.15580 (2023). [4] J. Choi, A. Shaw, I. Madjarov, X. Xie, R. Finkelstein, J. Covey, J. Cotler, D. Mark, H.Y. Huang, A. Kale, H. Pichler, F. Brandão, S. Choi, and M. Endres, Preparing random states and benchmarking with many-body quantum chaos, Nature 617 (2023) [5] P. Scholl, A. Shaw, R. Tsai, R. Finkelstein, J. Choi, M. Endres, Erasure conversion in a high-fidelity Rydberg quantum simulator, Nature 622 (2023). [6] A. Shaw, Z. Chen, J. Choi, D.K. Mark, P. Scholl, R. Finkelstein, A. Elben, S. Choi, M. Endres, Benchmarking highly entangled states on a 60-atom analog quantum simulator, arXiv:2308.07914 (2023).
    Lecture
  • Date:04ThursdayJanuary 2024

    Advancing MRI: Sequences and Applications

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    Time
    09:00 - 10:00
    Location
    Max and Lillian Candiotty Building
    LecturerDr. Edna Furman-Haran
    MRI Unit
    Organizer
    Department of Life Sciences Core Facilities
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    Lecture
  • Date:04ThursdayJanuary 2024

    Special Guest Seminar with Prof. Yegor Bazykin

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    Time
    10:00 - 11:00
    Title
    “Towards understanding and forecasting evolution of pathogenic viruses”
    Location
    Arthur and Rochelle Belfer Building for Biomedical Research
    LecturerProf. Yegor Bazykin
    Organizer
    Department of Molecular Genetics
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    Lecture
  • Date:04ThursdayJanuary 2024

    Vision and AI

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    Time
    12:15 - 13:15
    Title
    Generative Models for Abstractions
    Location
    Jacob Ziskind Building
    LecturerYael Vinker
    Tel Aviv University
    Organizer
    Department of Computer Science and Applied Mathematics
    Contact
    AbstractShow full text abstract about Humans often express, organize, and develop their thoughts v...»
    Humans often express, organize, and develop their thoughts visually, employing abstract representations like sketches, scribbles, and symbols. These abstract representations range from simple drawings made by kids to structured charts and diagrams made by researchers. Creating such abstract representations comes naturally to humans
    Lecture
  • Date:04ThursdayJanuary 2024

    Olfactory information processing: timing, sequences, geometry  and relevance

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    Time
    12:30 - 13:30
    Location
    Gerhard M.J. Schmidt Lecture Hall
    LecturerProf. Dmitry Rinberg
    Dept of Neuroscience and Physiology Neuroscience Institute NYU
    Organizer
    Department of Brain Sciences
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    Lecture
  • Date:04ThursdayJanuary 2024

    Geometric Functional Analysis and Probability Seminar

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    Time
    13:30 - 14:30
    Title
    Two applications of entropy in combinatorics
    Location
    Jacob Ziskind Building
    LecturerElad Tzalic
    WIS
    Organizer
    Department of Mathematics
    Contact
    AbstractShow full text abstract about In the talk I will present two applications of entropy in co...»
    In the talk I will present two applications of entropy in combinatorics and give tight bounds for the following problems:

    1. Let $G$ be a graph of maximum degree $d$. For two vertices $x,y$ how many shortest paths from $x$ to $y$ paths can there be in $G$? 

    2. A subset $S subseteq Z^d$ tiles the integer lattice $Z^d$ if one can write $Z^d$ as a union of disjoint translations of $S$. How many subsets of $[n]^d$ tile $Z^d$?

    Based on joint works with Itai Benjamini and Gady Kozma.
    Lecture
  • Date:07SundayJanuary 202410WednesdayJanuary 2024

    quantum error-correction meets high dimensional expansion, complexity hops on the boat

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    Time
    08:00 - 08:00
    Location
    The David Lopatie Conference Centre
    Chairperson
    Irit Dinur
    Organizer
    The Maurice and Gabriela Goldschleger Center for Nanophysics
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  • Date:07SundayJanuary 2024

    Clore Seminar-Professor Jay Fineberg

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    Time
    13:15 - 14:15
    Title
    The Fundamental Physics of the Onset of Frictional Motion: How do laboratory earthquakes nucleate?
    Location
    Nella and Leon Benoziyo Physics Building
    LecturerProf. Jay Fineberg
    Organizer
    Clore Center for Biological Physics
    Contact
    AbstractShow full text abstract about Recent experiments have demonstrated that rapid rupture fron...»
    Recent experiments have demonstrated that rapid rupture fronts, akin to earthquakes, mediate the transition to frictional motion. Moreover, once these dynamic rupture fronts (“laboratory earthquakes”) are created, their singular form, dynamics and arrest are well-described by fracture mechanics. Ruptures, however, need to be created within initially rough frictional interfaces, before they are able to propagate. This is the reason that “static friction coefficients” are not well-defined; frictional ruptures can nucleate for a wide range of applied forces. A critical open question is, therefore, how the nucleation of rupture fronts actually takes place. We experimentally demonstrate that rupture front nucleation is prefaced by extremely slow, aseismic, nucleation fronts. These nucleation fronts, which are often self-similar, are not described by our current understanding of fracture mechanics. The nucleation fronts emerge from initially rough frictional interfaces at well-defined stress thresholds, evolve at characteristic velocity and time scales governed by stress levels, and propagate within a frictional interface to form the initial rupture from which fracture mechanics take over. These results are of fundamental importance to questions ranging from earthquake nucleation and prediction to processes governing material failure.
    Lecture
  • Date:07SundayJanuary 2024

    Chemical and Biological Physics Guest seminar

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    Time
    15:00 - 15:00
    Title
    Static and dynamic biophysical properties of tissue microstructure: Insights from advanced in vivo MRI
    Location
    Gerhard M.J. Schmidt Lecture Hall
    LecturerDr Noam Shemesh
    Champalimaud Research Champalimaud Foundation, Lisbon
    Organizer
    Department of Chemical and Biological Physics
    Contact
    AbstractShow full text abstract about In living systems, the tissue micro-architecture consists of...»
    In living systems, the tissue micro-architecture consists of myriad cellular and subcellular elements whose density, size/shape distributions, composition, and permeability, endow the tissue with its biological functionality. Dynamic transport mechanisms are further critical for maintaining homeostasis and supporting diverse physiological functions such as action potentials and biochemical signaling. Still, how these biophysical properties change over time and how they couple to activity, remains largely unknown. This is mainly due to the difficulty in mapping these properties in-vivo, longitudinally, and with sufficient specificity. Magnetic Resonance Imaging (MRI), with its capacity for longitudinal studies and wealth of microscopic information leading to multiple contrast mechanisms, provides an outstanding opportunity to decipher these phenomena. In this talk I will discuss our recent advances in diffusion and functional MRI, including novel pulse sequences and biophysical modeling of diffusion processes in the microscopic tissue milieu, which provide, for the first time, the sought-after specificity for density, size, and permeability of particular (sub)cellular elements in tissues. I will show new experiments in rodents proving unique power-laws predicted from biophysical models, revealing axon density and size, as well as cell body density and size, along with validations against ground-truth histology and applications in animal models of disease. Evidence for exchange between the intracellular and extracellular space will also be given, along with a first approach for quantitatively mapping permeability in tissue. I will also introduce correlation tensor MRI (CTI), a new approach for source-separation in diffusional kurtosis, that offers surrogate markers of neurite beading effects, thereby further enhancing specificity, especially in stroke. Finally, I will touch upon dynamic modulations of neural tissue microstructure upon neural activity, and provide evidence for the existence of a neuro-morphological coupling in diffusion-weighted functional MRI signals. Future vistas and potential applications will be discussed.
    Lecture
  • Date:09TuesdayJanuary 2024

    Special Clore Seminar - Leenoy Meshulam

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    Time
    12:45 - 13:45
    Title
    Bridging scales in biological systems – from octopus skin to mouse brain
    Location
    Nella and Leon Benoziyo Physics Building
    LecturerLeenoy Meshulam
    University of Washington, Seattle
    Organizer
    Clore Center for Biological Physics
    Contact
    AbstractShow full text abstract about For an animal to perform any function, millions of cells in ...»
    For an animal to perform any function, millions of cells in its body furiously interact with each other. Be it a simple computation or a complex behavior, all biological functions involve the concerted activity of many individual units. A theory of function must specify how to bridge different levels of description at different scales. For example, to predict the weather, it is theoretically irrelevant to follow the velocities of every molecule of air. Instead, we use coarser quantities of aggregated motion of many molecules, e.g., pressure fields. Statistical physics provides us with a theoretical framework to specify principled methods to systematically ‘move’ between descriptions of microscale quantities (air molecules) to macroscale ones (pressure fields). Can we hypothesize equivalent frameworks in living systems? How can we use descriptions at the level of cells and their connections to make precise predictions of complex phenomena My research group will develop theory, modeling and analysis for a comparative approach to discover generalizable forms of scale bridging across species and behavioral functions. In this talk, I will present lines of previous, ongoing, and proposed research that highlight the potential of this vision. I shall focus on two seemingly very different systems: mouse brain neural activity patterns, and octopus skin cells activity patterns. In the mouse, we reveal striking scaling behavior and hallmarks of a renormalization group- like fixed point governing the system. In the octopus, camouflage skin pattern activity is reliably confined to a (quasi-) defined dynamical space. Finally, I will touch upon the benefits of comparing across animals to extract principles of multiscale function in biological systems, and propose future directions to investigate how macroscale properties, such as memory or camouflage, emerge from microscale level activity of individual cells.
    Lecture
  • Date:09TuesdayJanuary 2024

    Immunoception: Brain Representation and Control of Immunity

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    Time
    13:00 - 13:00
    Location
    Wolfson Building for Biological Research
    LecturerProf. Asya Rolls
    HHMI-Wellcome Scholar Rappaport Institute for Medical Research TECHNION Haifa
    Organizer
    Department of Brain Sciences
    Contact
    AbstractShow full text abstract about To function as an integrated entity, the organism must synch...»
    To function as an integrated entity, the organism must synchronize between behavior and physiology. Our research focuses on probing this synchronization through the lens of the brain-immune system interface. The immune system, pivotal in preserving the organism's integrity, is also a sensitive barometer of its overall state. I will discuss the emerging understanding of how the brain represents the state of the immune system and the specific neural mechanisms that enable the brain to orchestrate immune responses.
    Lecture
  • Date:10WednesdayJanuary 2024

    Students presentation day

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    Time
    08:30 - 18:00
    Location
    Dolfi and Lola Ebner Auditorium
    LecturerProf. Eran Hornstein
    Organizer
    Department of Molecular Neuroscience
    Contact
    Lecture
  • Date:10WednesdayJanuary 2024

    Machine Learning and Statistics Seminar

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    Time
    11:15 - 12:15
    Title
    Learning from dependent data and its modeling through the Ising model
    Location
    Jacob Ziskind Building
    LecturerYuval Dagan
    UC Berkeley
    Organizer
    Department of Computer Science and Applied Mathematics
    Contact
    AbstractShow full text abstract about I will present a theoretical framework for analyzing learnin...»
    I will present a theoretical framework for analyzing learning algorithms which rely on dependent, rather than independent, observations. While a common assumption is that the learning algorithm receives independent datapoints, such as unrelated images or texts, this assumption often does not hold. An example is data on opinions across a social network, where opinions of related people are often correlated, for example as a consequence of their interactions. I will present a line of work that models the dependence between such related datapoints using a probabilistic framework in which the observed datapoints are assumed to be sampled from some joint distribution, rather than sampled i.i.d. The joint distribution is modeled via the Ising model, which originated in the theory of Spin Glasses in statistical physics and was used in various research areas. We frame the problem of learning from dependent data as the problem of learning parameters of the Ising model, given a training set that consists of only a single sample from the joint distribution over all datapoints. We then propose using the Pseudo-MLE algorithm, and provide a corresponding analysis, improving upon the prior literature which necessitated multiple samples from this joint distribution. Our proof benefits from sparsifying a model's interaction network, conditioning on subsets of variables that make the dependencies in the resulting conditional distribution sufficiently weak. We use this sparsification technique to prove generic concentration and anti-concentration results for the Ising model, which have found applications beyond the scope of our work.

    Based on joint work with Constantinos Daskalakis, Anthimos Vardis Kandiros, Nishanth Dikkala, Siddhartha Jayanti, Surbhi Goel and Davin Choo.
    Lecture
  • Date:11ThursdayJanuary 2024

    Vision and AI

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    Time
    12:15 - 13:15
    Title
    Emergent Visual-Semantic Hierarchies in Image-Text Representations
    Location
    Jacob Ziskind Building
    LecturerMorris Alper
    Tel Aviv University
    Organizer
    Department of Computer Science and Applied Mathematics
    Contact
    AbstractShow full text abstract about While recent vision-and-language models are a powerful tool ...»
    While recent vision-and-language models are a powerful tool for analyzing text and images in a shared semantic space, they do not explicitly model the hierarchical nature of the set of texts which may describe an image. Our work finds emergent understanding of visual-semantic hierarchies in these models, despite not being directly trained for this purpose. Furthermore, we show that foundation models may be better aligned to hierarchical reasoning via a text-only fine-tuning phase, while retaining pretraining knowledge.

    Bio: Morris Alper is a PhD student at the School of Electrical Engineering, Tel Aviv University (TAU). Under the mentorship of Dr. Hadar Averbuch-Elor, he is researching multimodal learning – machine learning applied to tasks involving vision and language and other structured modalities such as 3D. 
    Lecture

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