Effective method for detecting error causes from incoherent biological ontologies.

Journal: Mathematical biosciences and engineering : MBE
Published Date:

Abstract

Computing the minimal axiom sets (MinAs) for an unsatisfiable class is an important task in incoherent ontology debugging. Ddebugging ontologies based on patterns (DOBP) is a pattern-based debugging method that uses a set of heuristic strategies based on four patterns. Each pattern is represented as a directed graph and the depth-first search strategy is used to find the axiom paths relevant to the MinAs of the unsatisfiable class. However, DOBP is inefficient when a debugging large incoherent ontology with a lot of unsatisfiable classes. To solve the problem, we first extract a module responsible for the erroneous classes and then compute the MinAs based on the extracted module. The basic idea of module extraction is that rather than computing MinAs based on the original ontology O, they are computed based on a module M extracted from O. M provides a smaller search space than O because M is considerably smaller than O. The experimental results on biological ontologies show that the module extracted using the Module-DOBP method is smaller than the original ontology. Lastly, our proposed approach optimized with the module extraction algorithm is more efficient than the DOBP method both for large-scale ontologies and numerous unsatisfiable classes.

Authors

  • Yu Zhang
    College of Marine Electrical Engineering, Dalian Maritime University, Dalian, China.
  • Haitao Wu
    College of Information Engineering, Huanghuai University, Zhumadian 463000, China.
  • Jinfeng Gao
    College of Information Engineering, Huanghuai University, Henan 463000, China; Henan Key Laboratory of Smart Lighting, Henan 463000, China. Electronic address: hhgaostudy@163.tom.
  • Yongtao Zhang
    Department of Information and Electronic Engineering, Shangqiu Institute of Technology, Shangqiu 476000, China.
  • Ruxian Yao
    College of Information Engineering, Huanghuai University, Henan 463000, China; Henan Key Laboratory of Smart Lighting, Henan 463000, China.
  • Yuxiang Zhu
    College of Information Engineering, Huanghuai University, Zhumadian 463000, China.