Publikasjoner
Vitenskapelig artikkel
- Juha Harviainen; Pekka Parviainen (2025). On Tractability of Learning Bayesian Networks with Ancestral Constraints. (ekstern lenke)
- Johannes Fiedler; Adria Salvador Palau; Eivind Kristen Osestad et al. (2023). Realistic mask generation for matter-wave lithography via machine learning. (ekstern lenke)
- Rune D. Kjærsgaard; Pekka Parviainen; Saket Saurabh et al. (2024). Fair Soft Clustering. (ekstern lenke)
- Madhumita Kundu; Pekka Parviainen; Saket Saurabh (2024). Discovering Bayesian Networks when Few Variables Matter. (ekstern lenke)
- Xiangju Qin; Paul Blomstedt; Eemeli Leppäaho et al. (2019). Distributed Bayesian matrix factorization with limited communication. (ekstern lenke)
- Amir Miraki; Pekka Parviainen; Reza Arghandeh (2024). Electricity demand forecasting at distribution and household levels using explainable causal graph neural network. (ekstern lenke)
- Hyeongji Kim; Changkyu Choi; Michael Christian Kampffmeyer et al. (2025). ProxyDR: Deep Hyperspherical Metric Learning with Distance Ratio-Based Formulation. (ekstern lenke)
- Pierre Gillot; Pekka Parviainen (2020). Scalable Bayesian Network Structure Learning via Maximum Acyclic Subgraph. (ekstern lenke)
- Pierre Gillot; Pekka Parviainen (2022). Convergence of Feedback Arc Set-Based Heuristics for Linear Structural Equation Models. (ekstern lenke)
- Tuukka Korhonen; Fedor Fomin; Pekka Parviainen (2024). Structural perspective on constraint-based learning of Markov networks. (ekstern lenke)
- Osestad Eivind Kristen; Pekka Parviainen; Johannes Fiedler (2025). A novel gas sensing principle based on quantum fluctuations. (ekstern lenke)
- Madhumita Kundu; Pekka Parviainen; Saket Saurabh (2024). Time–Approximation Trade-Offs for Learning Bayesian Networks. (ekstern lenke)
- Tanmay Inamdar; Madhumita Kundu; Pekka Parviainen et al. (2024). Exponential-Time Approximation Schemes via Compression. (ekstern lenke)
- Amir Miraki; Pekka Parviainen; Reza Arghandeh (2025). Probabilistic forecasting of renewable energy and electricity demand using Graph-based Denoising Diffusion Probabilistic Model. (ekstern lenke)
- Hyeongji Kim; Pekka Parviainen; Ketil Malde (2023). Measuring Adversarial Robustness using a Voronoi-Epsilon Adversary. (ekstern lenke)
- Topi Talvitie; Pekka Parviainen (2020). Learning Bayesian Networks with Cops and Robbers. (ekstern lenke)
- Brigt Arve Toppe Håvardstun; Cesar Ferri; José Hernández-Orallo et al. (2022). On the trade-off between fidelity and teaching complexity. (ekstern lenke)
Konferanseforedrag
Vitenskapelig bokkapittel
- Pierre Gillot; Pekka Parviainen (2022). Learning Large DAGs by Combining Continuous Optimization and Feedback Arc Set Heuristics. (ekstern lenke)
- Brigt Arve Toppe Håvardstun; Cesar Ferri; José Hernández-Orallo et al. (2023). XAI with Machine Teaching When Humans Are (Not) Informed About the Irrelevant Features. (ekstern lenke)
Doktorgradsavhandling
Konferanseposter
- Hyeongji Kim; Changkyu Choi; Michael Christian Kampffmeyer et al. (2024). ProxyDR: Deep Hyperspherical Metric Learning with Distance Ratio-Based Formulation. (ekstern lenke)
- Hyeongji Kim; Changkyu Choi; Michael Christian Kampffmeyer et al. (2024). ProxyDR: Deep Hyperspherical Metric Learning with Distance Ratio-Based Formulation. (ekstern lenke)