Comparing Labeled Trees: An Efficient Algorithm

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Title: Comparing Labeled Trees: An Efficient Algorithm

Research Question: How can we develop an efficient algorithm for comparing labeled trees, which are trees with nodes labeled with symbols, even if the labels are not restricted to leaves and may not be distinct?

Methodology: The researchers proposed an algorithm that compares labeled trees in a more general manner than previous methods, which were only concerned with uniformly labeled trees (trees with all their nodes labeled with the same symbol) and evolutionary trees (leaf-labeled trees with distinct symbols for distinct leaves). Their algorithm works for labeled trees with labels that can be arbitrary.

Results: The researchers presented an algorithm that is faster than previous methods and applicable to a wider range of labeled trees. They also showed how to speed up matching algorithms for node-unbalanced or weight-unbalanced input graphs, leading to an efficient algorithm for a new matching problem called the hierarchical bipartite matching problem, which is the core of their maximum agreement subtree algorithm.

Implications: This research has implications for various fields that use labeled tree comparison, such as biology, chemistry, linguistics, computer vision, and structured text databases. The new algorithm is faster and more versatile, making it more suitable for handling larger and more complex data sets. It also provides a new approach to matching problems in graph theory.

Link to Article: https://arxiv.org/abs/0101010v1 Authors: arXiv ID: 0101010v1