doktorska disertacija
Jure Žabkar (Avtor), Ivan Bratko (Mentor), Janez Demšar (Komentor)

Povzetek

Učenje kvalitativnih odvisnosti

Ključne besede

kvalitativno modeliranje;kvalitativno učenje;parcialni odvodi;okolice;sosednost;Padé;Qube;izbirni nomogrami;Edgar;Strudel;Qing;

Podatki

Jezik: Slovenski jezik
Leto izida:
Tipologija: 2.08 - Doktorska disertacija
Organizacija: UL FRI - Fakulteta za računalništvo in informatiko
Založnik: [J. Žabkar]
UDK: 004.8(043.3)
COBISS: 8024660 Povezava se bo odprla v novem oknu
Št. ogledov: 44
Št. prenosov: 14
Ocena: 0 (0 glasov)
Metapodatki: JSON JSON-RDF JSON-LD TURTLE N-TRIPLES XML RDFA MICRODATA DC-XML DC-RDF RDF

Ostali podatki

Sekundarni jezik: Angleški jezik
Sekundarni naslov: Learning qualitative dependencies
Sekundarni povzetek: The thesis presents novel approaches to learning qualitative models from given data. Learning qualitative models lies in the intersection of qualitative reasoning and machine learning. Qualitative models are abstractions and simplifications of numerical models. Qualitative modelling thus tends to learn simple and comprehensible models. Qualitative models are useful because they support human way of reasoning. Automatic learning of such models from data follows the main goal of artificial intelligence which is to make machines reason like humans. Another useful aspect of automatic learning of qualitative models is to make software tools that assist humans in understanding and discovering new knowledge from data. The motivation behind the methods that we develop in this thesis comes from the fact that, when inspecting the relation between two quantities, people most often consider only two quantities at a time. Although they do not make it explicit, they assume other quantities in the context constant. In mathematics, this principle is known as partial derivative and has been, since its discovery by Newton and Leibniz at the end of 17th century, an indispensable tool in mathematics and physics. The core of this thesis deals with the algorithms for computation of partial derivatives from data and learning qualitative models from partial derivatives. Taking mathematical definition of partial derivative as a foundation, we have developed six methods (with a common name Padé) for computation of partial derivatives in regression domains and a method (Qube) for computation of probabilistic partial derivatives in classification. We proposed a novel two-phase method for learning qualitative models from precomputed partial derivatives. In the first phase, we compute qualitative partial derivatives for each learning example and in the second phase we use an appropriate machine learning algorithm for classification to induce a qualitative model. As a part of our research, we have also developed four other algorithms for learning qualitative models and Q2 learning. We shortly describe these algorithms at the end of the thesis. We have implemented the above mentioned methods in Orange, an open source machine learning framework. We tested and evaluated them in controlled environment, a set of artificial domains, where we studied their properties. Further, we demonstrated how qualitative partial derivatives can be used in knowledge discovery from data. We conclude the experimental section with four realistic domains - two smaller robotic domains and two case studies. We used Padé in realistically simulated domain billiards and Qube in a real medical domain from infectology. In both cases we asked domain experts for explaining the induced qualitative models. Both algorithms induced simple, accurate and comprehensible models and proved useful in the conceptualization of the domains. We conclude the thesis with a short discussion of the results and possible further work.
Sekundarne ključne besede: artificial intelligence;qualitative modelling;machine learning;qualitative learning;partial derivatives;neighbourhood;Padé;Qube;selective nomograms;Edgar;Strudel;Qing;computer science;doctoral dissertations;theses;Umetna inteligenca;Disertacije;Modeliranje;Strojno učenje;
Vrsta datoteke: application/pdf
Vrsta dela (COBISS): Doktorska disertacija
Komentar na gradivo: Univ. v Ljubljani, Fak. za računalništvo in informatiko
Strani: X, 100 str.
ID: 23960050
Priporočena dela:
, doktorska disertacija
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, s Pythonom do prvega klasifikatorja
, magistrsko delo