Optimal Algebraic Breadth-First Search for Sparse Graphs

ACM TRANSACTIONS ON KNOWLEDGE DISCOVERY FROM DATA(2021)

引用 7|浏览1
暂无评分
摘要
There has been a rise in the popularity of algebraic methods for graph algorithms given the development of the GraphBLAS library and other sparse matrix methods. An exemplar for these approaches is BreadthFirst Search (BFS). The algebraic BFS algorithm is simply a recurrence of matrix-vector multiplications with the n x n adjacency matrix, but the many redundant operations over nonzeros ultimately lead to suboptimal performance. Therefore an optimal algebraic BFS should be of keen interest especially if it is easily integrated with existing matrix methods. Current methods, notably in the GraphBLAS, use a Sparse Matrix masked-Sparse Vector multiplication in which the input vector is kept in a sparse representation in each step of the BFS, and nonzeros in the vector are masked in subsequent steps. This has been an area of recent research in GraphBLAS and other libraries. While in theory, these masking methods are asymptotically optimal on sparse graphs, many add work that leads to suboptimal runtime. We give a new optimal, algebraic BFS for sparse graphs, thus closing a gap in the literature. Our method multiplies progressively smaller submatrices of the adjacency matrix at each step. Let n and m refer to the number of vertices and edges, respectively. On a sparse graph, our method takes O(n) algebraic operations as opposed to O(m) operations needed by theoretically optimal sparse matrix approaches. Thus, for sparse graphs, it matches the bounds of the best-known sequential algorithm, and on a Parallel Random Access Machine, it is work-optimal. Our result holds for both directed and undirected graphs. Compared to a leading GraphBLAS library, our method achieves up to 24x faster sequential time, and for parallel computation, it can be 17x faster on large graphs and 12x faster on large-diameter graphs.
更多
查看译文
关键词
Breadth-first search,graph algorithm,sparse matrix,linear algebra
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要