An intelligent theory of cost for partial metric spaces

  • Authors:
  • Steve Matthews;Michael Bukatin

  • Affiliations:
  • University of Warwick, Coventry, UK;Nokia Corporation, Boston Massachusetts

  • Venue:
  • AGI'12 Proceedings of the 5th international conference on Artificial General Intelligence
  • Year:
  • 2012

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Abstract

Partial metric spaces generalise metric spaces, allowing non zero self distance. This is needed to model computable partial information, but falls short in an important respect. The present cost of computing information, such as processor time or memory used, is rarely expressible in domain theory, but contemporary theories of algorithms incorporate precise control over cost of computing resources. Complexity theory in Computer Science has dramatically advanced through an intelligent understanding of algorithms over discrete totally defined data structures such as directed graphs, without using partially defined information. So we have an unfortunate longstanding separation of partial metric spaces for modelling partially defined computable information from the complexity theory of algorithms for costing totally defined computable information. To bridge that separation we seek an intelligent theory of cost for partial metric spaces. As examples we consider the cost of computing a double negation ¬¬p in two-valued propositional logic, the cost of computing negation as failure in logic programming, and a cost model for the hiaton time delay.