Search results for: reinforcement learning, dqn, logic games, prolog, wumpus world - Bridge of Knowledge

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Search results for: reinforcement learning, dqn, logic games, prolog, wumpus world

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Search results for: reinforcement learning, dqn, logic games, prolog, wumpus world

  • Architektura Systemów Komputerowych

    Główną tematyką badawczą podejmowaną w Katedrze jest rozwój architektury aplikacji i systemów komputerowych, w szczególności aplikacji i systemów równoległych i rozproszonych. "Architecture starts when you carefully put two bricks together" - stwierdza niemiecki architekt Ludwig Mies von der Rohe. W przypadku systemów komputerowych dotyczy to nie cegieł, a modułów sprzętowych lub programowych. Przez architekturę systemu komputerowego...

  • Zespół Systemów Multimedialnych

    * technologie archiwizacji, rekonstrukcji i dostępu do nagrań archiwalnych * technologie inteligentnego monitoringu wizyjnego i akustycznego * multimedialne technologie telemedyczne * multimodalne interfejsy komputerowe

  • Emotions in Human-Computer Interaction Research Group (EMORG)

    * rozpoznawanie emocji użytkownika (ang. emotion elicitation) * reprezentację informacji o emocjach użytkownika (ang. emotion representation/ affect modelling) i zarządzanie nimi * ekspresję emocji lub reakcję na emocje przez programy np. przez wirtualne postaci (ang. affect expression) * wybrane zastosowania to badanie użyteczności oprogramowania rozszerzone o aspekty emocjonalne * badania wzorców behawioralnych w połączeniu...

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Search results for: reinforcement learning, dqn, logic games, prolog, wumpus world

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Search results for: reinforcement learning, dqn, logic games, prolog, wumpus world

  • Neural network agents trained by declarative programming tutors

    Publication

    This paper presents an experimental study on the development of a neural network-based agent, trained using data generated using declarative programming. The focus of the study is the application of various agents to solve the classic logic task – The Wumpus World. The paper evaluates the effectiveness of neural-based agents across different map configurations, offering a comparative analysis to underline the strengths and limitations...

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  • Model-free and Model-based Reinforcement Learning, the Intersection of Learning and Planning

    Publication

    - Year 2022

    My doctoral dissertation is intended as the compound of four publications considering: structure and randomness in planning and reinforcement learning, continuous control with ensemble deep deterministic policy gradients, toddler-inspired active representation learning, and large-scale deep reinforcement learning costs.

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  • Analysis of Learning Outcomes in Medical Education with the Use of Fuzzy Logic

    Publication

    - Studies in Logic, Grammar and Rhetoric - Year 2021

    The national curricula of the EU member states are structured around learning outcomes, selected according to Bloom’s Taxonomy. The authors of this paper claim that using Bloom’s Taxonomy to phrase learning outcomes in medical education in terms of students’ achievements is difficult and unclear. This paper presents an efficient method of assessing course learning outcomes using Fuzzy Logic.

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  • AUTOMATIC LEARNING OF STRATEGY AND RULES IN CARD GAMES USING IMAGE FROM CAMERA

    Publication

    Below work tries to answer a question: if it is possible to replace real human with computer system in social games. As a subject for experiments, card games were chosen, because they require a lot of player interaction (playing and taking cards), while their rules are easy to present in form of clear list of statements. Such a system, should allow real players to play without constant worrying about guiding or helping computer...

  • Structure and Randomness in Planning and Reinforcement Learning

    Publication

    - Year 2021

    Planning in large state spaces inevitably needs to balance the depth and breadth of the search. It has a crucial impact on the performance of a planner and most manage this interplay implicitly. We present a novel method \textit{Shoot Tree Search (STS)}, which makes it possible to control this trade-off more explicitly. Our algorithm can be understood as an interpolation between two celebrated search mechanisms: MCTS and random...

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