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MSc in Statistik und maschinelles Lernen

Linköping University


Sitz

Schweden

Studienformat

Campus

Kurssprache

Englisch

Studienbereiche

Mathematik, Statistik, Informatik, Datenwissenschaft, Künstliche Intelligenz

Dauer

2 Jahre

Studienrhythmus

Vollzeit

Niveau

Master of Science (MSc)

Studiengebühren

Infos anfordern

Beschreibung des Programms

Unleash the power of data and statistics to make the right decisions happen. We integrate statistical modeling and analysis with machine learning, data mining, and data management to give you unique skills.

The rapid development of information technologies has overwhelmed society with enormous volumes of information generated by large or complex systems from telecommunications, robotics, medicine, business, and many other fields. This master’s program meets the challenges of learning from these complex volumes by means of models and algorithms from machine learning, data mining, and other computer-intensive statistical methods. By joining us, you will increase the efficiency and productivity of the systems and make them smarter and more autonomous.

Learn to make reliable predictions

The program focuses on modern methods from machine learning and database management that use the power of statistics to build efficient models and make reliable predictions and optimal decisions. You will gain deep theoretical knowledge as well as practical experience from extensive amounts of laboratory work. If you want to complement your studies with courses at other universities, you can participate in exchange studies during the third semester.

Depending on your interests, you will work towards your thesis at a company, a governmental institution, or a research unit at LiU. There you can apply your knowledge to a real problem and meet people who use advanced data analytics in practice or you can go deeper into the research.

This program is for you if you aspire to learn how to:

  • improve the ability of a mobile phone’s speech recognition software to distinguish vowels in a noisy environment
  • provide early warning of a financial crisis by analyzing the frequency of crisis-related words in financial media and internet forums
  • improve directed marketing by analyzing shopping patterns in supermarkets’ scanner databases
  • build an effective spam filter
  • estimate the effect that new traffic legislation will have on the number of deaths in road accidents
  • use a complex DNA microarray dataset to learn about the risk factors of cancer
  • determine the origin of an olive oil sample with the use of interactive and dynamic graphics

Syllabus and course details

The program runs over two years and encompasses 120 credits, including a thesis.

The introductory block of courses contains a course in basic statistics that is recommended for students with a background in computer science or engineering, and a course in programming that is recommended for students having a degree in statistics or mathematics. The courses Machine learning, Advanced Data Mining, Deep Learning, Big Data Analytics, Computational Statistics, and Bayesian learning constitute the core of the program.

In addition, master’s students have the freedom to choose among profile courses - aimed to strengthen students’ statistical and analytical competence - and complementary courses - that allow students to focus on particular applied areas or relevant courses from other disciplines. Opportunities for exchange studies are provided during the third semester of the program.

To be awarded the degree, students must have passed 90 ECTS credits of courses including 42 ECTS credits of the compulsory courses, a minimum of 6 ECTS credits of the introductory courses, a minimum of 12 ECTS credits of the profile courses, and, possibly, some amount of complementary courses. The students must also have successfully defended a master’s thesis of 30 ECTS credits.

Introduction

The rapid IT development has led to the overwhelming of society with enormous volumes of information generated by large or complex systems. Information can be stored in large databases, it can come in a streaming manner or it can be a result of the interaction between the system and the learning environment. This advanced-level program meets the challenges of learning from these complex information volumes by means of models and algorithms which enable efficient prediction, analysis, and decision making. Statistical modeling and analysis are integrated with machine learning, data mining, and data management into a solid basis for professional work with the information modeling and analysis of data in large or complex systems. The program also provides excellent qualifications for a career in research. The program leads to a master's degree in Statistics.

Aim

National Qualifications according to the Swedish Higher Education Act

Knowledge and understanding

For a Degree of Master (120 credits) the student shall

  • demonstrate knowledge and understanding in Statistics, including both broad knowledge of the field and a considerable degree of specialized knowledge in certain areas of the field as well as insight into current research and development work, and
  • demonstrate specialized methodological knowledge in Statistics.

Specialized knowledge in machine learning shall include modern powerful techniques for classification and regression, prediction, methods for statistical simulation and optimization, Bayesian methods, and methods for the analysis of large databases.

Competence and skills

For a Degree of Master (120 credits) the student shall

  • demonstrate the ability to critically and systematically integrate knowledge and analyze, assess and deal with complex phenomena, issues and situations even with limited information
  • demonstrate the ability to identify and formulate issues critically, autonomously, and creatively as well as to plan and, using appropriate methods, undertake advanced tasks within predetermined time frames and so contribute to the formation of knowledge as well as the ability to evaluate this work
  • demonstrate the ability in speech and writing both nationally and internationally to report clearly and discuss his or her conclusions and the knowledge and arguments on which they are based in dialogue with different audiences, and
  • demonstrate the skills required for participation in research and development work or autonomous employment in some other qualified capacity.

Judgment and approach

For a Degree of Master (120 credits) the student shall

  • demonstrate the ability to make assessments in statistics informed by relevant disciplinary, social, and ethical issues and also to demonstrate awareness of ethical aspects of research and development work
  • demonstrate insight into the possibilities and limitations of research, and especially research in statistics its role in society and the responsibility of the individual for how it is used, and
  • demonstrate the ability to identify the personal need for further knowledge and take responsibility for his or her ongoing learning.

Local aims

Upon completing the program the students shall be able to:

  • model information volumes that are generated by large or complex systems
  • select a suitable model in a given context
  • extract and organize large volumes of complexly structured data
  • explore, summarize and present large and complex data sets by static, interactive, and dynamic graphical facilities
  • use advanced software to analyze large or complex data volumes
  • implement models suitable for data analysis, prediction, and decision making in some computer language
  • combine data information with other sources of prior information to improve inference and prediction performance
  • give examples of application areas where it is required to model information volumes that emerge from large or complex systems.
  • uncover and statistically verify previously unknown patterns and trends in the data
  • present a written thesis with a theoretical or an applied study of large or complex systems or data sets by means of methods from statistics and machine learning.

Research

The Division of Statistics and Machine Learning

We conduct research in the intersection of Statistics/Computer Science and host; the bachelor's program Statistik och data analyst, the international master's program Statistics and Data Mining, and the Machine Learning courses for engineers.

Informationen über das Institut

_Are you curious about what it is like to study at LiU? Join us for a chat about what it is like to live and study on our campuses in Sweden. We offer free webinars and recordings for both prospective and admitted degree students throughout the year. Visit our _ _Meet us online _ _page. _

About Linköping University

Linköping University will never rest on its laurels.

In close collaboration with the business world and society, Linköping University (LiU) conducts world-leading, boundary-crossing research in fields including materials science, IT and hearing. In the same spirit, the university offers many innovative educational programs, many of them with a clear vocational focus, leading to qualification as, for example, doctors, teachers, economists, and engineers.

The university has 32,000 students and 4,000 employees on four campuses. Together we seek answers to the complex questions facing us today. Our students are among the most desirable in the labor market and international rankings consistently place LiU as a leading global university.

LiU achieved university status in 1975 and innovation is our only tradition.

History of Linköping University

In 1975 Sweden’s sixth university was founded in Linköping. Since then Linköping University (LiU) has grown considerably, expanding to Norrköping and Stockholm.

Linköping has been an important center of learning since medieval times when Linköping Cathedral offered a school with extensive international contacts and its own student hall in Paris. In 1627 the Cathedral School became the third upper secondary school in Sweden and in 1843 a college for elementary school teachers began operations. In Norrköping, the Fröbel Institute – Sweden’s first college for training pre-school teachers – was founded in 1902.

From university college to university

What would later become Linköping University began to take shape in the mid-1960s. Higher education in Sweden was expanding and in 1965 the Swedish Parliament decided to establish a branch of Stockholm University, together with a university college of engineering and medicine, in Linköping.

In the autumn of 1967, the branch of Stockholm University moved into premises in central Linköping. There the first students could take courses in the humanities, social sciences, and natural sciences. Two years later the units for engineering and medicine got underway.

In 1970 education and research started moving into the recently built Campus Valla, a short distance from the town center. Buildings A and B were the first to be completed. The same year the various parts were merged to form Linköping University College, including faculties of engineering, medicine and arts, and sciences.

The new university college was the first in Sweden to offer study programs in Industrial Engineering and Management and Applied Physics and Electrical Engineering, both starting in 1969. A few years later, in 1975, Linköping University launched Sweden’s first Computer Science and Engineering program.

1975 was also the year when Linköping University College became Linköping University, the sixth university in Sweden. In line with the 1977 reform of the Swedish higher education system, teacher education was also transferred to Linköping University.

Interdisciplinary research and problem-based learning

Linköping University has always worked with innovation in education and research. In 1980 the newly formed Department of Thematic Studies adopted an approach that was new in Sweden. Research was organized in interdisciplinary themes, such as Technology and Social Change or Water and Environmental Studies. Scientists worked across boundaries to solve complex problems. LiU was also first in Sweden to introduce graduate research schools for different themes. The model later spread to other parts of the university and became a national success.

The new Faculty of Health Sciences (Hälsouniversitetet), formed in 1986, combined governmentally and regionally funded education. It introduced a radically changed methodology, being the first in Sweden to use problem-based learning, PBL. Later, LiU became the first university in the world to allow students from different health sciences programs to treat actual patients on a student-managed training ward.

Expansion to Norrköping – and Stockholm

A significant milestone in the history of the University was the opening of Campus Norrköping in 1997. Some programs had previously operated from Norrköping, but the number of students now grew drastically in line with government efforts to expand higher education. Historical factories in the former industrial district were again filled with life, as they were filled with classrooms, laboratories, cafés, a library and of course students.

Linköping University also expanded to Stockholm when the reputable Carl Malmsten School of Furniture sought a collaborative partner from the academic sector. The Malmsten furniture design and handicraft programs became part of LiU in 2000. After almost 60 years at Södermalm in central Stockholm, Malmstens moved to new premises on the island of Lidingö in the autumn of 2009. LiU got its fourth campus.

Buro Millennial / Pexels

LiU in figures

Some important figures for Linköping University.

Education

  • 32,000 students (full-time equivalents 17,907)
  • 21,400 on Campus Valla
  • 5,500 on Campus Norrköping
  • 3,900 on University Hospital Campus (US)
  • 2,100 distance students and students in other locations, including Campus Lidingö

(Some students take courses on more than one campus.)

  • 120 study programs, of which 27 are international programs in English
  • 550 single-subject courses
  • Exchange agreements with 400 universities in 50 countries
  • 2,400 international students
  • 2,200 first cycle degrees
  • 2,700 second-cycle degrees

Research and scientific training

  • 300 professors
  • 1,200 PhD students
  • 40 licentiate degrees
  • 140 doctoral degrees

Staff

  • 4,000 employees (full-time equivalents 3,156)

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