Магистратура
2021/2022
Современные методы анализа данных
Лучший по критерию «Полезность курса для Вашей будущей карьеры»
Статус:
Курс обязательный (Анализ данных в биологии и медицине)
Направление:
01.04.02. Прикладная математика и информатика
Где читается:
Факультет компьютерных наук
Когда читается:
1-й курс, 1, 2 модуль
Формат изучения:
без онлайн-курса
Охват аудитории:
для своего кампуса
Преподаватели:
Попцова Мария Сергеевна
Прогр. обучения:
Анализ данных в биологии и медицине
Язык:
английский
Кредиты:
5
Контактные часы:
56
Course Syllabus
Abstract
The course introduces the theory and practice of machine learning algorithms and their applications in the area of bioinformatics. The students will learn data preprocessing techniques, methods of dimension reduction, technique of modeling using machine-learning algorithms, parameter tuning. The studied algorithms include linear regression with regularization (ridge regression, elastic net, lasso), multivariate adaptive regression splines, support vector machines, neural networks, k-nearest neighbors, classification and regression trees, random forest, gradient boosting. Workshops, which follow the lectures, seek to empower students with the practical skills in predictive modeling software tools, packages and applications. Many case studies of predictive models for bioinformatics data sets will be considered.
Learning Objectives
- • know the theory of the process and components of predictive modeling, types of predictive models, key steps of model creation, such as data-preprocessing, model construction and assessment of model performance.
- • know various practical applications of predictive modeling using machine-learning algorithms for the databases of molecular biology
- • acquire the skills to use python functions from different python packages to apply different types of models such as linear and nonlinear regression models, linear and nonlinear classification models, regression trees and rule-based models
- acquire the skills to use python functions from different python packages to pre-process the input data, i.e. calculate statistics, estimate skewness, apply appropriate transformation, perform PCA, find between-predictor correlations, generate dummy variables.
- • acquire the skills to use python functions to measure predictor importance and model performance, use filtering methods, measure outcome error.
- apply the knowledge and tools of predictive analytics to bioinformatics applications.
Expected Learning Outcomes
- apply the knowledge and tools of predictive analytics to real-life applications
- acquire the skills to implement machine-learning algorithms in python
- know the theory of machine-learning algorithms
Course Contents
- Big Data in Bioinformatics. Concepts of model building.
- Data Preprocessing.
- Linear regression models.
- Multivariate adaptive regression splines.
- Neural networks.
- Support vector machines. K-nearest neighbors.
- Measuring performance in classification models.
- Linear classification models
- Nonlinear classification models
- Decision Trees
- Machine-learning in bioinformatics
Assessment Elements
- Домашнее задание 1
- Домашнее задание 2
- Домашнее задание 3
- Домашнее задание 4
- Письменный экзамен
Interim Assessment
- 2021/2022 2nd module0.15 * Домашнее задание 4 + 0.15 * Домашнее задание 2 + 0.15 * Домашнее задание 3 + 0.15 * Домашнее задание 1 + 0.4 * Письменный экзамен
Bibliography
Recommended Core Bibliography
- Machine learning : a probabilistic perspective, Murphy, K. P., 2012
Recommended Additional Bibliography
- Witten, I. H. et al. Data Mining: Practical machine learning tools and techniques. – Morgan Kaufmann, 2017. – 654 pp.
- Witten, I. H., Frank, E., Hall, M. A., & Pal, C. J. (2017). Data Mining : Practical Machine Learning Tools and Techniques (Vol. Fourth edition). Cambridge, MA: Morgan Kaufmann. Retrieved from http://search.ebscohost.com/login.aspx?direct=true&site=eds-live&db=edsebk&AN=1214611