Partial information decomposition as a unified approach to the specification of neural goal functions

•Unified framework to compare neural goal functions based on information theory.•Domain-independent description of neural information processing.•Enabling principled comparison of neural goal functions.•Partial information decomposition for multi-input systems.•Measuring unique, shared and synergist...

Full description

Saved in:
Bibliographic Details
Published inBrain and cognition Vol. 112; pp. 25 - 38
Main Authors Wibral, Michael, Priesemann, Viola, Kay, Jim W., Lizier, Joseph T., Phillips, William A.
Format Journal Article
LanguageEnglish
Published United States Elsevier Inc 01.03.2017
Elsevier Science
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:•Unified framework to compare neural goal functions based on information theory.•Domain-independent description of neural information processing.•Enabling principled comparison of neural goal functions.•Partial information decomposition for multi-input systems.•Measuring unique, shared and synergistic contributions to neural output. 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 one output (Shannon’s mutual information), we argue that neural information processing crucially depends on the combination of multiple inputs to create the output of a processor. To account for this, we use a very recent extension of Shannon Information theory, called partial information decomposition (PID). PID allows to quantify the information that several inputs provide individually (unique information), redundantly (shared information) or only jointly (synergistic information) about the output. First, we review the framework of PID. Then we apply it to reevaluate and analyze several earlier proposals of information theoretic neural goal functions (predictive coding, infomax and coherent infomax, efficient coding). We find that PID allows to compare these goal functions in a common framework, and also provides a versatile approach to design new goal functions from first principles. Building on this, we design and analyze a novel goal function, called ‘coding with synergy’, which builds on combining external input and prior knowledge in a synergistic manner. We suggest that this novel goal function may be highly useful in neural information processing.
Bibliography:ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 23
ISSN:0278-2626
1090-2147
DOI:10.1016/j.bandc.2015.09.004