1 research outputs found
I/O efficient bisimulation partitioning on very large directed acyclic graphs
In this paper we introduce the first efficient external-memory algorithm to
compute the bisimilarity equivalence classes of a directed acyclic graph (DAG).
DAGs are commonly used to model data in a wide variety of practical
applications, ranging from XML documents and data provenance models, to web
taxonomies and scientific workflows. In the study of efficient reasoning over
massive graphs, the notion of node bisimilarity plays a central role. For
example, grouping together bisimilar nodes in an XML data set is the first step
in many sophisticated approaches to building indexing data structures for
efficient XPath query evaluation. To date, however, only internal-memory
bisimulation algorithms have been investigated. As the size of real-world DAG
data sets often exceeds available main memory, storage in external memory
becomes necessary. Hence, there is a practical need for an efficient approach
to computing bisimulation in external memory.
Our general algorithm has a worst-case IO-complexity of O(Sort(|N| + |E|)),
where |N| and |E| are the numbers of nodes and edges, resp., in the data graph
and Sort(n) is the number of accesses to external memory needed to sort an
input of size n. We also study specializations of this algorithm to common
variations of bisimulation for tree-structured XML data sets. We empirically
verify efficient performance of the algorithms on graphs and XML documents
having billions of nodes and edges, and find that the algorithms can process
such graphs efficiently even when very limited internal memory is available.
The proposed algorithms are simple enough for practical implementation and use,
and open the door for further study of external-memory bisimulation algorithms.
To this end, the full open-source C++ implementation has been made freely
available