EFRI BRAID: Using Proto-Object Based Saliency Inspired By Cortical Local Circuits to Limit the Hypothesis Space for Deep Learning Models

Information

  • NSF Award
  • 2223725
Owner
  • Award Id
    2223725
  • Award Effective Date
    9/1/2022 - a year ago
  • Award Expiration Date
    8/31/2026 - 2 years from now
  • Award Amount
    $ 1,999,112.00
  • Award Instrument
    Standard Grant

EFRI BRAID: Using Proto-Object Based Saliency Inspired By Cortical Local Circuits to Limit the Hypothesis Space for Deep Learning Models

This Emerging Frontiers in Research and Innovation (EFRI) project will close the gap between natural intelligence (NI) and artificial intelligence (AI), by using computational models of the brain to help AI systems make more efficient use of both data and power. Specifically, the project takes inspiration from the ability of mammalian brains to store and process only an appropriately chosen subset of the information conveyed by the visual system. Without this feature, called selective attention or “saliency,” the brain would soon be overwhelmed by the sheer volume of incoming sensory data. This project will translate neuroscience models of visual attention to new algorithms for learning in deep neural networks. These new algorithms will greatly reduce the number of variables that must be updated while learning new patterns. The benefits of these brain-inspired algorithms will be amplified by implementation on customized computing hardware designed to mimic the form and function of structures from the mammalian brain. The result will enable new AI devices with transformative new capabilities and performance for applications from self-driving cars to medical diagnosis. As revolutionary as existing AI systems are, they fall well short of living organisms in the natural world, such as a young animal learning from its parent how to survive, which requires the recognition of predators and learning of effective evasive actions. Extrapolation of current AI hardware and software predicts that reaching these levels of performance would require prohibitive amounts of energy and training data. Projects such as this one will lead to the next generation of AI, overcoming these anticipated obstacles through new, neuro-inspired, learning strategies. This project will support the AI workforce of the future by educating a diverse cadre of AI trainees, from K-12 to Postdocs, and it will make innovative algorithms, hardware and datasets available to the AI research and development community.<br/><br/>Deep learning has achieved impressive performance in multiple tasks, driven by the capacity for backpropagation to “assign credit” to a vast array of parameters. Typical networks have immensely complex computational graphs, with many options to assign credit for every computation. This large number of options comes with the benefits of being very flexible in learning, but also with the costs of large energy consumption and the need for very large datasets for learning. A preselection of important (salient) features will cause inductive biases in learning, but such biases, when appropriately conditioned, can be optimally selected; this occurs in biological information processing via evolution or development. For this project, these biases can be inspired by biology or learned and can be instantiated in software and hardware. This goal of this project is creation of a hybrid architecture, where local circuits implement an attentional mechanism that provides a “gate” or modulation for selecting features for a global learning network with a convolutional architecture. The attentional mechanism dramatically decreases the number of features considered for inference and for learning by including a learned prior of what features are important. The starting point for the research will be existing attentional models that fit biological data, but this will be expanded by allowing a metasearch over the attentional mechanisms. The expectation is that after determining and implementing optimal attentional mechanisms for a set of tasks/input statistics, power requirement for both inference and learning will be substantially reduced, and learning will be enabled based on considerably fewer examples than traditional methods. This project will also provide substantial opportunities to advance training of highly qualified artificial intelligence workers, from a pool of multi-disciplinary trainees, including under-represented minorities and women, at all levels from K-12 to Postdoctoral Fellowships. Furthermore, the results will be made available in the form of databases and published system designs.<br/><br/>This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

  • Program Officer
    Jordan Bergjberg@nsf.gov7032925365
  • Min Amd Letter Date
    9/16/2022 - a year ago
  • Max Amd Letter Date
    9/16/2022 - a year ago
  • ARRA Amount

Institutions

  • Name
    Johns Hopkins University
  • City
    BALTIMORE
  • State
    MD
  • Country
    United States
  • Address
    3400 N CHARLES ST
  • Postal Code
    212182608
  • Phone Number
    4439971898

Investigators

  • First Name
    Andreas
  • Last Name
    Andreou
  • Email Address
    andreou@jhu.edu
  • Start Date
    9/16/2022 12:00:00 AM
  • First Name
    Ernst
  • Last Name
    Niebur
  • Email Address
    niebur@jhu.edu
  • Start Date
    9/16/2022 12:00:00 AM
  • First Name
    Ralph
  • Last Name
    Etienne-Cummings
  • Email Address
    retienne@jhu.edu
  • Start Date
    9/16/2022 12:00:00 AM
  • First Name
    Stefan
  • Last Name
    Mihalas
  • Email Address
    stefanm@alleninstitute.org
  • Start Date
    9/16/2022 12:00:00 AM

Program Element

  • Text
    EFRI Research Projects
  • Code
    7633

Program Reference

  • Text
    BRAIN Initiative Res Support
  • Code
    8091
  • Text
    WOMEN, MINORITY, DISABLED, NEC
  • Code
    9102