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Latest Academic Works

Representing and exploiting benchmarking data for optimisation and learning

Author(s): Ana Kostovska (Author), Panče Panov (Supervisor), Sašo Džeroski (Co-Supervisor), Tome Eftimov (Co-Supervisor)

Year: 2025

Type: Doctoral dissertation

The rapid advancements in Machine Learning (ML) and Black-Box Optimization (BBO) have led to an increased reliance on benchmarking data for evaluating and comparing algorithms across diverse domain tasks. However, the effective exploitation of this data is hindered by challenges such as syntactic variability, semantic ambiguity, and lack of standardization. …

Probabilistic grammar-based equation discovery

Author(s): Jure Brence (Author), Sašo Džeroski (Supervisor), Ljupčo Todorovski (Co-Supervisor)

Year: 2024

Type: Doctoral dissertation

In this thesis, we introduce novel methods for equation discovery (ED), based on the use of probabilistic grammars. ED and symbolic regression address the task of finding a symbolic mathematical model that best describes observed data. Models can be as simple as an algebraic equation or as complex as a …

Considering autocorrelation in predictive models

Author(s): Daniela Stojanova (Author), Sašo Džeroski (Supervisor)

Year: 2012

Type: Doctoral dissertation

Most machine learning, data mining and statistical methods rely on the assumption that the analyzed data are independent and identically distributed (i.i.d.). More specifically, the individual examples included in the training data are assumed to be drawn independently from each other from the same probability distribution. However, cases where this …

Ensembles for predicting structured outputs

Author(s): Dragi Kocev (Author), Sašo Džeroski (Supervisor)

Year: 2011

Type: Doctoral dissertation

In this thesis, we address the task of learning models for predicting structured outputs, which take as input a tuple of attribute values and produce as output a structured object. In contrast to classification and regression, where the output is a single scalar value, in our case the output is …