SNU Biointelligence Lab

Molecular ML

Bio-Inspired Human-Level Machine Learning

Sep 2012 - Sep 2015 Air Force Research Laboratory (AFRL)

Overview

How can brain computation be so fast, flexible, and robust? What kinds of representational and organizational principles facilitate the biological brain to learn so efficiently and flexibly on the sub-second time scale and so reliably on the continuous lifetime scale? Understanding these principles and constructing computational models that implement them in a natural way can achieve scientific breakthroughs in computational architectures and algorithms that enable true human-level robust intelligence.

This project developed bio-inspired machine learning technology that is competitive with human learning in its performance (speed, flexibility, reliability, robustness) and style (online, incremental, predictive, self-teaching). The approach rests on two interlocking layers: a “human-like” machine learning model based on dynamic neural populations (neural assemblies), and a “molecular” implementation of that model in molecular populations (molecular assemblies) using in vitro DNA computing. The molecular machine learning model is validated on high-level cognitive information processing tasks involving language, vision, and decision-making.

The project targets innovation across computational intelligence, cognitive science, and engineering. The notion of bio-inspired human-level machine learning combined with molecular-computing implementation — grounded in population coding and dynamic coordination — offers a novel paradigm for flexible and reliable computing. In particular, the dynamic molecular assembly model of cognitive memory and learning provides a new tool for simulating dynamical cognitive systems.

Two-Layer Architecture

  1. Human-like machine learning model: knowledge is encoded as weighted hypergraphs over dynamic neural assemblies, enabling online, incremental, and predictive learning from few examples.
  2. Molecular implementation: in vitro DNA computing executes the learning model using DNA strands as computational units, realizing molecular pattern classification via DNA beacons and DNA-based language models.

Validated Cognitive Tasks

Research Team

Principal Investigator

Researchers

Contact: Prof. Byoung-Tak Zhang — btzhang@snu.ac.kr

Publications

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