Partial Information Decomposition as a Unified Approach to the Specification of Neural Goal Functions
Michael Wibral, Viola Priesemann, Jim W. Kay, Joseph T. Lizier,, William A. Phillips

TL;DR
This paper proposes using partial information decomposition (PID) to unify and analyze neural goal functions, providing a domain-independent framework to understand diverse neural processing motifs and designing new goal functions.
Contribution
It introduces PID as a tool to compare and design neural goal functions, unifying various approaches under a common information-theoretic framework.
Findings
PID enables comparison of neural goal functions
Reevaluation of existing goal functions using PID
Design of a new goal function 'coding with synergy'
Abstract
In many neural systems anatomical motifs are present repeatedly, but despite their structural similarity they can serve very different tasks. A prime example for such a motif is the canonical microcircuit of six-layered neo-cortex, which is repeated across cortical areas, and is involved in a number of different tasks (e.g.sensory, cognitive, or motor tasks). This observation has spawned interest in finding a common underlying principle, a 'goal function', of information processing implemented in this structure. By definition such a goal function, if universal, cannot be cast in processing-domain specific language (e.g. 'edge filtering', 'working memory'). Thus, to formulate such a principle, we have to use a domain-independent framework. Information theory offers such a framework. However, while the classical framework of information theory focuses on the relation between one input and…
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