DeepAI AI Chat
Log In Sign Up

How does the Mind store Information?

10/03/2019
by   Rina Panigrahy, et al.
0

How we store information in our mind has been a major intriguing open question. We approach this question not from a physiological standpoint as to how information is physically stored in the brain, but from a conceptual and algorithm standpoint as to the right data structures to be used to organize and index information. Here we propose a memory architecture directly based on the recursive sketching ideas from the paper "Recursive Sketches for Modular Deep Networks", ICML 2019 (arXiv:1905.12730), to store information in memory as concise sketches. We also give a high level, informal exposition of the recursive sketching idea from the paper that makes use of subspace embeddings to capture deep network computations into a concise sketch. These sketches form an implicit knowledge graph that can be used to find related information via sketches from the past while processing an event.

READ FULL TEXT
05/29/2019

Recursive Sketches for Modular Deep Learning

We present a mechanism to compute a sketch (succinct summary) of how a c...
08/18/2019

A New Fast Computation of a Permanent

This paper proposes a general algorithm called Store-zechin for quickly ...
09/04/2018

Improving the Expressiveness of Deep Learning Frameworks with Recursion

Recursive neural networks have widely been used by researchers to handle...
01/08/2020

Spinneret: Aiding Creative Ideation through Non-Obvious Concept Associations

Mind mapping is a popular way to explore a design space in creative thin...
01/14/2023

Improving Confidentiality for NFT Referenced Data Stores

A non-fungible token (NFT) references a data store location, typically, ...
05/25/2019

Robotic bees: Algorithms for collision detection and prevention

In the following paper we will discuss data structures suited for distan...
01/29/2020

The Tensor Brain: Semantic Decoding for Perception and Memory

We analyse perception and memory using mathematical models for knowledge...