A High-Level Model of Neocortical Feedback Based on an Event Window Segmentation Algorithm

09/21/2014
by   Jerry R. Van Aken, et al.
0

The author previously presented an event window segmentation (EWS) algorithm [5] that uses purely statistical methods to learn to recognize recurring patterns in an input stream of events. In the following discussion, the EWS algorithm is first extended to make predictions about future events. Next, this extended algorithm is used to construct a high-level, simplified model of a neocortical hierarchy. An event stream enters at the bottom of the hierarchy, and drives processing activity upward in the hierarchy. Successively higher regions in the hierarchy learn to recognize successively deeper levels of patterns in these events as they propagate from the bottom of the hierarchy. The lower levels in the hierarchy use the predictions from the levels above to strengthen their own predictions. A C++ source code listing of the model implementation and test program is included as an appendix.

READ FULL TEXT
research
08/25/2021

The Next 700 Program Transformers

In this paper, we describe a hierarchy of program transformers in which ...
research
10/31/2022

High-Level Event Mining: A Framework

Process mining methods often analyze processes in terms of the individua...
research
02/14/2020

eSPICE: Probabilistic Load Shedding from Input Event Streams in Complex Event Processing

Complex event processing systems process the input event streams on-the-...
research
04/11/2022

Assessing hierarchies by their consistent segmentations

Recent segmentation approaches start by creating a hierarchy of nested i...
research
09/20/2016

Contextual Relationship-based Activity Segmentation on an Event Stream in the IoT Environment with Multi-user Activities

The human activity recognition in the IoT environment plays the central ...
research
09/14/1998

Distributed Computation as Hierarchy

This paper presents a new distributed computational model of distributed...

Please sign up or login with your details

Forgot password? Click here to reset