NESPJun 28, 2019

High Speed Cognitive Domain Ontologies for Asset Allocation Using Loihi Spiking Neurons

arXiv:1906.12338v112 citations
Originality Incremental advance
AI Analysis

This enables real-time, low-power asset allocation for autonomous systems and decision support tools, though it is incremental as it applies an existing neuromorphic method to a specific bottleneck.

The paper tackled the slow asset allocation problem in Cognitive Domain Ontologies by using a grid of spiking neurons, achieving over 99.9% accuracy and a speedup of more than 1000 times on larger problems when implemented on the Intel Loihi neuromorphic processor.

Cognitive agents are typically utilized in autonomous systems for automated decision making. These systems interact at real time with their environment and are generally heavily power constrained. Thus, there is a strong need for a real time agent running on a low power platform. The agent examined is the Cognitively Enhanced Complex Event Processing (CECEP) architecture. This is an autonomous decision support tool that reasons like humans and enables enhanced agent-based decision-making. It has applications in a large variety of domains including autonomous systems, operations research, intelligence analysis, and data mining. One of the key components of CECEP is the mining of knowledge from a repository described as a Cognitive Domain Ontology (CDO). One problem that is often tasked to CDOs is asset allocation. Given the number of possible solutions in this allocation problem, determining the optimal solution via CDO can be very time consuming. In this work we show that a grid of isolated spiking neurons is capable of generating solutions to this problem very quickly, although some degree of approximation is required to achieve the speedup. However, the approximate spiking approach presented in this work was able to complete all allocation simulations with greater than 99.9% accuracy. To show the feasibility of low power implementation, this algorithm was executed using the Intel Loihi manycore neuromorphic processor. Given the vast increase in speed (greater than 1000 times in larger allocation problems), as well as the reduction in computational requirements, the presented algorithm is ideal for moving asset allocation to low power, portable, embedded hardware.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes