Fundamentals of Our Thinking 1

Daten

Offizielle Daten in der Fachveröffentlichung für das folgende akademische Jahr: 2023-2024

Lehrbeauftragte/r

Semesterwochenstunden

Vorlesungen: 12

Praktika: 0

Seminare: 0

Insgesamt: 12

Fachangaben

  • Kode des Kurses: OAF-GD1-T
  • 1 kredit
  • General Medicine
  • Optional modul
  • autumn
Voraussetzungen:

keine

Zahl der Kursteilnehmer für den Kurs:

min. 5 – max. 15

Erreichbar als Campus-Kurs für 5 fő számára. Campus-karok: ÁOK

Thematik

The course aims to introduce students to the fundamental principles and complexities of human thought. Using a holistic approach, the course will explore the related problems of how correct inference and cognition are possible, applying the tools and results of philosophy, mathematics and neuroscience. The human thinking is based on similarity, analogy, which is the basis of the concepts of differential diagnosis and differential therapy in the field of medicine. In both clinical practice and research, the correct inference and the correct interpretation of data are very important in order to make possible what is perhaps the ultimate goal of science, successful prediction.
In the first semester, after a brief philosophical introduction, we will deal with the theory of deductive and inductive inference, and briefly review the foundations of axiomatic reasoning, the theory of formal inference. The relationship between randomness and prediction will be explored, and finally we will conclude the semester with topics on artificial neural networks, machine learning and artificial intelligence.

Vorlesungen

  • 1. Introduction: Brief philosophical background. Information, knowledge. Medical thinking, differential diagnosis, differential therapy. Analogy as the basis of our thinking. - Dr. Péczely László Zoltán
  • 2. Scientific thinking: rationalism, empiricism. - Dr. Péczely László Zoltán
  • 3. Deductive inference, logic I. - Dr. Péczely László Zoltán
  • 4. Deductive inference, logic II. - Dr. Péczely László Zoltán
  • 5. Axiomatic thinking: definitions, axioms, theorems, proof, provability, consistency, completeness. - Dr. Péczely László Zoltán
  • 6. Measure of similarity. - Dr. Péczely László Zoltán
  • 7. Probability theory, the concept of conditional probability. Correlation and causality. - Dr. Péczely László Zoltán
  • 8. Inductive inference I. - Dr. Péczely László Zoltán
  • 9. Inductive inference II. - Dr. Péczely László Zoltán
  • 10. Neural networks, machine learning, artificial intelligence. - Dr. Péczely László Zoltán
  • 11. Supervised and unsupervised learning algorithms. - Dr. Péczely László Zoltán
  • 12. Reinforcement learning as a form of machine learning. - Dr. Péczely László Zoltán

Praktika

Seminare

Materialien zum Aneignen des Lehrstoffes

Obligatorische Literatur

Vom Institut veröffentlichter Lehrstoff

lecture slides

Skript

Empfohlene Literatur

Peter Norvig, Stuart J. Russell: Artificial Intelligence: A Modern Approach

Voraussetzung zum Absolvieren des Semesters

Maximum of 25 % absence allowed

Semesteranforderungen

Oral report at the end of the course.

Möglichkeiten zur Nachholung der Fehlzeiten

not necessary

Prüfungsfragen

Are the same as lecture topics.

Prüfer

Praktika, Seminarleiter/innen