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== 메타데이터 ==
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* ID :  [https://www.wikidata.org/wiki/Q128570 Q128570]

2020년 12월 26일 (토) 05:00 판

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말뭉치

  1. This blog contains a real-life scenario in Bioinformatics.[1]
  2. Let’s have a small glimpse of Bioinformatics, here we discover what is Bioinformatics?[1]
  3. In Bioinformatics, neural networks produce the properties of prediction and analysis or classification of genes in several classes.[1]
  4. Machine learning is also producing promising results with great advances in Bioinformatics.[1]
  5. I was doing my undergraduate research on BioInformatics and I had a great passion for machine learning and deep learning.[2]
  6. My passion forced me to search about Integrating machine learning and deep learning techniques to solve problems in BioInformatics.[2]
  7. In simple terms, BioInformatics is the application of algorithms, tools, and techniques to manage and analyze biological data.[2]
  8. It focuses on performing data-based predictions and has several applications in the field of bioinformatics.[3]
  9. Bioinformatics involves the processing of biological data using approaches based on computation and mathematics.[3]
  10. ML is currently being applied in six key subfields of bioinformatics such as microarrays, evolution, systems biology, genomics, text mining, and proteomics.[3]
  11. The first section will provide an outline of ML in bioinformatics.[3]
  12. Machine learning in bioinformatics.[4]
  13. Min, S., Lee, B. & Yoon, S. Deep learning in bioinformatics.[4]
  14. Sample subset optimization techniques for imbalanced and ensemble learning problems in bioinformatics applications.[4]
  15. AdaSampling for positive-unlabeled and label noise learning with bioinformatics applications.[4]
  16. Extracting inherent valuable knowledge from omics big data remains as a daunting problem in bioinformatics and computational biology.[5]
  17. Bioinformatics is a field of study that uses computation to extract knowledge from biological data.[6]
  18. Ultimately I think for machine learning to really flourish, it's going to come down to better bioinformatics data.[6]
  19. Machine learning techniques are increasingly being used to address problems in computational biology and bioinformatics.[7]
  20. It then describes the main problems in bioinformatics and the fundamental concepts and algorithms of machine learning.[8]
  21. Due to the revolution in high-throughput technologies bioinformatics became Big Data Science of Genomics.[9]
  22. In 2013, a group of bioinformatics professors from across the globe made several meetings at Heidelberg University, Germany.[10]
  23. During the meetings, they formulated main bioinformatics challenges of the decade.[10]
  24. Bioinformatics and Pharmacology are moving towards personalized medicine for every disease.[10]
  25. There are many opportunities to use Machine Learning projects ideas in Bioinformatics from those that we already discussed to those that were not.[10]
  26. As the bioinformatics field grows, it must keep pace not only with new data but with new algorithms.[11]
  27. The bioinformatics field is increasingly relying on machine learning (ML) algorithms to conduct predictive analytics and gain greater insights into the complex biological processes of the human body.[11]
  28. This is the most extensively utilized clustering worldview in bioinformatics.[11]
  29. Thanks to these advances, new applications appear in the area of bioinformatics.[12]
  30. In this Special Issue, we seek research and case studies that demonstrate the application of machine learning to support applied scientific research, in any area of bioinformatics.[12]
  31. This book covers a wide range of subjects in applying machine learning approaches for bioinformatics projects.[13]
  32. First, it introduces the most widely used machine learning approaches in bioinformatics and discusses, with evaluations from real case studies, how they are used in individual bioinformatics projects.[13]
  33. Second, it introduces state-of-the-art bioinformatics research methods.[13]
  34. Unlike most of the bioinformatics books on the market, the content coverage is not limited to just one subject.[13]
  35. If anyone is looking for a project in either the areas of machine learning or bioinformatics, I have many projects available.[14]
  36. Bioinformatics also has significant potential in solving population and evolutionary genetics questions.[15]
  37. Bioinformatics has been given a spotlight amid COVID-19.[15]
  38. This survey provides an overview of fully homomorphic encryption and its applications in medicine and bioinformatics.[16]
  39. The course covers advanced topics in bioinformatics with a focus on machine learning.[17]
  40. This workshop is intended to provide an introduction to machine learning and its application to bioinformatics.[18]

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