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2026 m. gegužės 4 d., 13 val.

Vilnius, Akademijos g. 4, 203 kab.
Nuotoliniu būdu „MS Teams“ aplinkoje (https://bit.ly/DMSTI_2026-05-04)

 

Akvilė Vitkauskaitė

(vadovas dr. Andrius Čiginas)

 

„Populiacijos parametrų vertinimas esant daliniam socialinių tinklų duomenų padengimui“

Anotacija: Official statistics increasingly consider online sources, but in practice, coverage is often incomplete, yielding a nonprobability sample that may not represent the full target population. We study this problem using the population of candidates in the 2024 Lithuanian parliamentary elections (about 1,700 persons), linked to official candidate information and campaign-period posts from publicly accessible profiles on a major social network; only a substantial share of candidates can be collected in the primary workflow, while the remainder require alternative handling. Our aim is to estimate population-level indicators for the share of positive, neutral, and negative political messaging. Using auxiliary variables available for all candidates from the official election frame, we will compare three practical strategies: a two-stage probability sampling design (sampling candidates and then sampling posts), nonprobability estimation adjusted with propensity-score weighting and calibration to population margins, and a hybrid two-phase approach that adds a probability follow-up sample from the noncovered group. A manually archived benchmark will be used to evaluate bias, uncertainty, and subgroup performance, providing implementation-oriented guidance for official statistics settings. 

 

Sathuta Piripun Sellapperuma

(vadovas doc. dr. Algirdas Lančinskas)

 

„Multi-Agent System for Park & Ride Hub Location“

Anotacija: The research addresses the Park & Ride hub location problem under uncertainty in traveler behavior. A Multi-Agent System is developed in which agents represent different traveler behaviour models and employ a learning-based approach to generate solutions. The agents collaboratively generate and evaluate solutions in order to identify compromise alternatives and select the robust solution.