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  1. Normative parties in subject position and in object position.Tereza Novotná & Matteo Pascucci - 2021 - In Martin Blicha & Igor Sedlár, The Logica Yearbook 2020. College Publications. pp. 147-164.
    We analyze some normative relations as instances of a general schema of relations among a finite number of parties; in this schema parties can play various roles grouped into two main conceptual layers, called 'subject position' and 'object position'. Relying on the theoretical apparatus introduced, we develop a new symbolic representation for normative reasoning which constitutes an alternative to approaches available in the literature. Our contribution includes a semantic characterization for a series of logical systems built over the proposed framework.
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    It cannot be right if it was written by AI: on lawyers’ preferences of documents perceived as authored by an LLM vs a human.Jakub Harasta, Tereza Novotná & Jaromir Savelka - forthcoming - Artificial Intelligence and Law:1-38.
    Large Language Models (LLMs) enable a future in which certain types of legal documents may be generated automatically. This has a great potential to streamline legal processes, lower the cost of legal services, and dramatically increase access to justice. While many researchers focus on proposing and evaluating LLM-based applications supporting tasks in the legal domain, there is a notable lack of investigations into how legal professionals perceive content if they believe an LLM has generated it. Yet, this is a critical (...)
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    Assisted normative reasoning with Aristotelian diagrams.Kathrin Hanauer, Tereza Novotná & Matteo Pascucci - 2023 - In Giovanni Sileno, Jerry Spanakis & Gijs van Dijck, Legal Knowledge and Information Systems. Proceedings of JURIX 2023. IOS Press. pp. 89-94.
    We design a framework for assisted normative reasoning based on Aristotelian diagrams and algorithmic graph theory which can be employed to address heterogeneous tasks of deductive reasoning. Here we focus on two problems of normative determination: we show that the algorithms used to address these problems are computationally efficient and their operations are traceable by humans. Finally, we discuss an application of our framework to a scenario regulated by the GDPR.
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