Although
several distance or similarity functions for trees have been introduced, their
performance is not always satisfactory in many applications, ranging from
document clustering to natural language processing. This research proposes a
new similarity function for trees, namely Extended Sub tree (EST), where a new
sub tree mapping is proposed. EST generalizes the edit base distances by
providing new rules for sub tree mapping. Further, the new approach seeks to
resolve the problems and limitations of previous approaches. Extensive
evaluation frameworks are developed to evaluate the performance of the new
approach against previous proposals. Clustering and classification case studies
utilizing three real-worlds and one synthetic labeled data sets are performed
to provide an unbiased evaluation where different distance functions are
investigated. The experimental results demonstrate the superior performance of
the proposed distance function. In addition, an empirical runtime analysis
demonstrates that the new approach is one of the best tree distance functions
in terms of runtime efficiency.
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