Hopcroft-Karp Algorithm Utilization for Efficient Big Data Shortest Path Computation

Swarnalatha, Erram and Mohankumar, N. and Sarasu, R. and Elakkiya, K. and Irulappan, Ganesh Babu and Rajmohan, M. (2025) Hopcroft-Karp Algorithm Utilization for Efficient Big Data Shortest Path Computation. In: Hopcroft-Karp Algorithm Utilization for Efficient Big Data Shortest Path Computation.

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Abstract

Large-scale network shortest route searching needs unique big data computing methodologies. This study proposes a novel usage of the Hopcroft-Karp technique for bipartite matching to determine the shortest paths in large graphs. Changes to partitioning and parallel processing address data sparsity, dynamic updates, and scalability issues. To enhance graph analysis in huge data settings across diverse applications, algorithmic advances, performance trade-offs, and integration with existing shortest route techniques are examined. Real-world applications reveal significant efficiency gains. Hopcroft-Karp addresses bipartite network maximum matching difficulties for large-scale shortest route calculations. Alternating Breath First Search (BFS) and Depth First Search (DFS) creates layered graphs to find augmenting pathways. This approach optimizes big dataset processing and analysis computing efficiency and accuracy. Enough data and shortest route calculations must be optimized to do difficult jobs quickly and properly. Hopcroft-Karp's scalability simplifies data management by improving shortest route determination speed and reliability. Data analysis and management are simplified to meet contemporary computer and data environment norms. Both Hopcroft-Karp datasets are shown. Bivariate Hopcroft-Karp 1st instance bipartite network with U1-U5 rows and V1-V5 columns. Cell numbers represent node edge weights. V1-V5 columns are 12-35 for U1 rows, 15-52 for U2, 18-41 for U3, 28-45 for U4, and 22-46 for U5. U1 rows 38-60, U2 25-71, U3 22-66, U4 21-75, and U5 4983 for 2nd instance construction. © 2025 Elsevier B.V., All rights reserved.

Item Type: Conference or Workshop Item (Paper)
Additional Information: Cited by: 0
Uncontrolled Keywords: Big data; Data handling; Graph algorithms; Graphic methods; Information analysis; Information management; Scalability; Big data analyze; Bipartite graphs; Bipartite network; Hopcroft; Hopcroft Karp algorithms; Large-scale network; Route calculations; Route-searching; Shortest path computations; Shortest route; Computational efficiency; Economic and social effects
Subjects: Computer Science > Computational Theory and Mathematics
Divisions: Arts and Science > School of Arts and Science, Chennai > Physics
Depositing User: Unnamed user with email techsupport@mosys.org
Date Deposited: 26 Nov 2025 06:08
Last Modified: 26 Nov 2025 06:08
URI: https://vmuir.mosys.org/id/eprint/402

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