Έμβλημα Πολυτεχνείου Κρήτης
Το Πολυτεχνείο Κρήτης στο Facebook  Το Πολυτεχνείο Κρήτης στο Instagram  Το Πολυτεχνείο Κρήτης στο Twitter  Το Πολυτεχνείο Κρήτης στο YouTube   Το Πολυτεχνείο Κρήτης στο Linkedin

Νέα / Ανακοινώσεις / Συζητήσεις

Τα μηνύματά μου    Αναζήτηση

  • Όλες οι κατηγορίες
  • Δημόσιες Ανακοινώσεις
  • Διαλέξεις / Ημερίδες / Εκδηλώσεις
  • Ομιλία της Κωνσταντίνας Βαλογιάννη (IE Univ, Madrid) | 07.06.2023, 15:00

Ομιλία της Κωνσταντίνας Βαλογιάννη (IE Univ, Madrid) | 07.06.2023, 15:00

  • Συντάχθηκε 05-06-2023 10:17 Πληροφορίες σύνταξης

    Ενημερώθηκε: -

    Τόπος: Λ - Κτίριο Επιστημών/ΗΜΜΥ, 141Π-98,141Θ-97
    Έναρξη: 07/06/2023 15:00
    Λήξη: 07/06/2023 16:00

    Τίτλος

    Causal ABM: A Methodology for Learning Plausible Causal Models using Agent-Based Modeling

     

    Περίληψη

    We present Causal ABM, a methodology to derive causal structures describing complex underlying behavioral phenomena. Agent-based models (ABMs) have powerful advantages for causal modeling that have not been explored sufficiently. Unlike traditional causal estimation approaches which often result in "one best" causal structure that is learned, two properties of ABMs - equifinality (the ability of different sets of conditions or model representations to yield the same outcome) and mutlifinality (the same ABM might yield different outcomes) - can be exploited to learn multiple diverse "plausible causal models" from data. Using an illustrative example of news sharing on social networks we show how this idea can be applied to learn such causal sets. We also show how genetic algorithms can be used as a estimation technique to learn multiple plausible causal models from data due to their parallel search structure. However, significant computational challenges remain before this can be generally applied, and we, therefore, highlight specific key issues that need to be addressed in future work.


    Βιογραφικό

    Konstantina Valogianni is an Assistant Professor of Information Systems at IE University. She has received her PhD from Rotterdam School of Management, Erasmus University Rotterdam (2016). Her research focuses on using Machine Learning to enable sustainable societies. Her main line of research focuses on designing intelligent algorithms to facilitate a better electric mobility integration in current smart grids. Her work has appeared in journals, such as Information Systems Research, Production and Operations Management, Information & Management, Decision Support Systems, Energy Policy, as well as conferences such as the International Conference on Information Systems (ICIS), AAAI Conference on Artificial Intelligence (AAAI), the International Conference on Autonomous Agents and Multiagent Systems (AAMAS). She is teaching technology and innovation management and machine learning courses at the Masters and Executive levels, whereas she also teaches PhD courses on information systems.


    Σύνδεσμος εκδήλωσης


  • Συντάχθηκε 07-06-2023 15:23 Πληροφορίες σύνταξης

    Ενημερώθηκε: -

    Η ομιλία μόλις ξεκίνησε στο Αμφιθέατρο «Θέλμα Μαυρίδου» στο Κτίριο Επιστημών. 


© Πολυτεχνείο Κρήτης 2012