Computational approaches to finding and measuring inconsistency in arbitrary knowledge bases
نویسندگان
چکیده
a r t i c l e i n f o a b s t r a c t Keywords: Inconsistency measures Minimal inconsistent subsets Minimal unsatisfiable subformulae SAT Random SAT There is extensive theoretical work on measures of inconsistency for arbitrary formulae in knowledge bases. Many of these are defined in terms of the set of minimal inconsistent subsets (MISes) of the base. However, few have been implemented or experimentally evaluated to support their viability, since computing all MISes is intractable in the worst case. Fortunately, recent work on a related problem of minimal unsatisfiable sets of clauses (MUSes) offers a viable solution in many cases. In this paper, we begin by drawing connections between MISes and MUSes through algorithms based on a MUS generalization approach and a new optimized MUS transformation approach to finding MISes. We implement these algorithms, along with a selection of existing measures for flat and stratified knowledge bases, in a tool called mimus. We then carry out an extensive experimental evaluation of mimus using randomly generated arbitrary knowledge bases. We conclude that these measures are viable for many large and complex random instances. Moreover, they represent a practical and intuitive tool for inconsistency handling.
منابع مشابه
ar X iv : 1 10 7 . 20 88 v 1 [ cs . A I ] 1 1 Ju l 2 01 1 Advancing Multi - Context Systems by Inconsistency Management
Multi-Context Systems are an expressive formalism to model (possibly) non-monotonic information exchange between heterogeneous knowledge bases. Such information exchange, however, often comes with unforseen side-effects leading to violation of constraints, making the system inconsistent, and thus unusable. Although there are many approaches to assess and repair a single inconsistent knowledge b...
متن کاملFinding and measuring inconsistency in arbitrary knowledge bases
There is extensive theoretical work on measures of inconsistency for arbitrary formulae in knowledge bases. Many of these are de ned in terms of the set of minimal inconsistent subsets (MISes) of the base. However, few have been implemented or experimentally evaluated to support their viability, since computing all MISes is intractable in the worst case. Fortunately, recent work on a related pr...
متن کاملAdvancing Multi-Context Systems by Inconsistency Management
Multi-Context Systems are an expressive formalism to model (possibly) non-monotonic information exchange between heterogeneous knowledge bases. Such information exchange, however, often comes with unforseen side-effects leading to violation of constraints, making the system inconsistent, and thus unusable. Although there are many approaches to assess and repair a single inconsistent knowledge b...
متن کاملApproaches to measuring inconsistency for stratified knowledge bases
• My main concern with the paper is that whilst a range of options are investigated for measuring inconsistency in prioritized knowledge bases, each of which is significantly influenced by the measures proposed in the literature for flat knowledge bases, there is a lack of a unified framework for comparing the different options. The results only show some differences between them in terms of so...
متن کاملAn Anytime Algorithm for Computing Inconsistency Measurement
Measuring inconsistency degrees of inconsistent knowledge bases is an important problem as it provides context information for facilitating inconsistency handling. Many methods have been proposed to solve this problem and a main class of them is based on some kind of paraconsistent semantics. In this paper, we consider the computational aspects of inconsistency degrees of propositional knowledg...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2014