Advanced Data Mining Technologies in Bioinformatics by Hui-Huang Hsu

By Hui-Huang Hsu

The applied sciences in info mining were effectively utilized to bioinformatics learn long ago few years, yet extra examine during this box is critical. whereas great growth has been revamped the years, a few of the basic demanding situations in bioinformatics are nonetheless open. facts mining performs a necessary function in realizing the rising difficulties in genomics, proteomics, and platforms biology. complex facts Mining applied sciences in Bioinformatics covers vital examine themes of knowledge mining on bioinformatics. Readers of this booklet will achieve an figuring out of the fundamentals and difficulties of bioinformatics, in addition to the purposes of knowledge mining applied sciences in tackling the issues and the basic study themes within the box. complex information Mining applied sciences in Bioinformatics is intensely precious for info mining researchers, molecular biologists, graduate scholars, and others drawn to this subject.

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