Abstract :
In molecular biology, it is often desirable to find common properties in large numbers of drug candidates. One family of methods stems from the data mining community, where algorithms to find frequent graphs have received increasing attention over the past years. However, the computational complexity of the underlying problem and the large amount of data to be explored essentially render sequential algorithms useless. In this paper, we present a distributed approach to the frequent subgraph mining problem to discover interesting patterns in molecular compounds. This problem is characterized by a highly irregular search tree, whereby no reliable workload prediction is available. We describe the three main aspects of the proposed distributed algorithm, namely, a dynamic partitioning of the search space, a distribution process based on a peer-to-peer communication framework, and a novel receiver-initiated load balancing algorithm. The effectiveness of the distributed method has been evaluated on the well-known National Cancer Institute´s HIV-screening data set, where we were able to show close-to linear speedup in a network of workstations. The proposed approach also allows for dynamic resource aggregation in a nondedicated computational environment. These features make it suitable for large-scale, multidomain, heterogeneous environments, such as computational grids
Keywords :
biology computing; data mining; distributed algorithms; molecular biophysics; molecular configurations; pattern recognition; peer-to-peer computing; resource allocation; tree searching; distributed algorithm; dynamic load balancing; frequent subgraph mining; interesting pattern discovery; irregular search tree; molecular biology; molecular structure distributed mining; peer-to-peer communication framework; receiver-initiated load balancing algorithm; search space dynamic partitioning; Cancer; Computational complexity; Data mining; Distributed algorithms; Drugs; Large-scale systems; Load management; Partitioning algorithms; Peer to peer computing; Workstations; Distributed computing; biochemical databases; dynamic load balancing; frequent patterns; molecular compounds.; peer-to-peer computing; subgraph mining;