Bioinformatics__The_Machine_Learning_Approach

时间:2014-10-01 06:57:17
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文件名称:Bioinformatics__The_Machine_Learning_Approach

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更新时间:2014-10-01 06:57:17

bioinformatics, machine learning

An unprecedented wealth of data is being generated by genome sequencing projects and other experimental efforts to determine the structure and function of biological molecules. The demands and opportunities for interpreting these data are expanding more than ever. Biotechnology, pharmacology, and medicine will be particularly affected by the new results and the increased understanding of life at the molecular level. Bioinformatics is the development and application of computer methods for analysis, interpretation, and prediction, as well as for the design of experiments. It has emerged as a strategic frontier between biology and computer science. Machine learning approaches (e.g., neural networks, hidden Markov models, and belief networks) are ideally suited for areas where there is a lot of data but little theory--and this is exactly the situation in molecular biology. As with its predecessor, statistical model fitting, the goal in machine learning is to extract useful information from a body of data by building good probabilistic models. The particular twist behind machine learning, however, is to automate the process as much as possible. In this book, Pierre Baldi and S?ren Brunak present the key machine learning approaches and apply them to the computational problems encountered in the analysis of biological data. The book is aimed at two types of researchers and students. First are the biologists and biochemists who need to understand new data-driven algorithms, such as neural networks and hidden Markov models, in the context of biological sequences and their molecular structure and function. Second are those with a primary background in physics, mathematics, statistics, or computer science who need to know more about specific applications in molecular biology.


网友评论

  • 好资源,谢谢楼主
  • 资源可以用,对学习有帮助
  • 不错 非常经典的教材
  • 中国已经得到了很多物种全基因组数据,但是研究深度还有待加强,仍然需要好好地学习!
  • 没有下下来啊,还扣我分!
  • 谢楼主,但是书有点小,楼主有更好的资料吗
  • 书很经典,就是英文的,没有耐心看完
  • 不错 非常经典的教材
  • 不错 非常经典的教材
  • 最近在恶补概率图模型,所以下载了相关的资源。还没有来得及细看的。但仅仅从目录看,既有概率图模型(PGM)和机器学习等基础知识的介绍,特别是还有其在BioInformatics中的应用示例。应该不错。谢谢!
  • 该书的2001年第二版电子版。