Search Results for author: Mark Burgess

Found 7 papers, 1 papers with code

Neuroscience needs Network Science

no code implementations10 May 2023 Dániel L Barabási, Ginestra Bianconi, Ed Bullmore, Mark Burgess, SueYeon Chung, Tina Eliassi-Rad, Dileep George, István A. Kovács, Hernán Makse, Christos Papadimitriou, Thomas E. Nichols, Olaf Sporns, Kim Stachenfeld, Zoltán Toroczkai, Emma K. Towlson, Anthony M Zador, Hongkui Zeng, Albert-László Barabási, Amy Bernard, György Buzsáki

We explore the challenges and opportunities in integrating multiple data streams for understanding the neural transitions from development to healthy function to disease, and discuss the potential for collaboration between network science and neuroscience communities.

Testing the Quantitative Spacetime Hypothesis using Artificial Narrative Comprehension (I) : Bootstrapping Meaning from Episodic Narrative viewed as a Feature Landscape

no code implementations23 Sep 2020 Mark Burgess

The problem of extracting important and meaningful parts of a sensory data stream, without prior training, is studied for symbolic sequences, by using textual narrative as a test case.

Testing the Quantitative Spacetime Hypothesis using Artificial Narrative Comprehension (II) : Establishing the Geometry of Invariant Concepts, Themes, and Namespaces

no code implementations23 Sep 2020 Mark Burgess

Given a pool of observations selected from a sensor stream, input data can be robustly represented, via a multiscale process, in terms of invariant concepts, and themes.

From Observability to Significance in Distributed Information Systems

no code implementations12 Jul 2019 Mark Burgess

To understand and explain process behaviour we need to be able to see it, and decide its significance, i. e. be able to tell a story about its behaviours.

A Spacetime Approach to Generalized Cognitive Reasoning in Multi-scale Learning

no code implementations12 Feb 2017 Mark Burgess

This is an expensive and static approach which depends heavily on the availability of a very particular kind of prior raining data to make inferences in a single step.

Spacetimes with Semantics (III) - The Structure of Functional Knowledge Representation and Artificial Reasoning

no code implementations7 Aug 2016 Mark Burgess

Using the previously developed concepts of semantic spacetime, I explore the interpretation of knowledge representations, and their structure, as a semantic system, within the framework of promise theory.

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