Přehled o publikaci
2025
Scalable Counting of Minimal Trap Spaces and Fixed Points in Boolean Networks
KABIR, Mohimenul; Van-Giang TRINH; Samuel PASTVA a Kuldeep S. MEELZákladní údaje
Originální název
Scalable Counting of Minimal Trap Spaces and Fixed Points in Boolean Networks
Autoři
KABIR, Mohimenul; Van-Giang TRINH; Samuel PASTVA a Kuldeep S. MEEL
Vydání
Dagstuhl, Germany, 31ST INTERNATIONAL CONFERENCE ON PRINCIPLES AND PRACTICE OF CONSTRAINT PROGRAMMING, CP 2025, od s. 1-26, 26 s. 2025
Nakladatel
SCHLOSS DAGSTUHL, LEIBNIZ CENTER INFORMATICS
Další údaje
Jazyk
angličtina
Typ výsledku
Stať ve sborníku
Stát vydavatele
Německo
Utajení
není předmětem státního či obchodního tajemství
Forma vydání
elektronická verze "online"
Označené pro přenos do RIV
Ne
Organizace
Fakulta informatiky – Masarykova univerzita – Repozitář
ISSN
Klíčová slova anglicky
Computational systems biology; Boolean network; Fixed point; Trap space; Answer set counting; Projected counting; Abstract argumentation; Logic programming
Změněno: 7. 2. 2026 00:50, RNDr. Daniel Jakubík
Anotace
V originále
Boolean Networks (BNs) serve as a fundamental modeling framework for capturing complex dynamical systems across various domains, including systems biology, computational logic, and artificial intelligence. A crucial property of BNs is the presence of trap spaces - subspaces of the state space that, once entered, cannot be exited. Minimal trap spaces, in particular, play a significant role in analyzing the long-term behavior of BNs, making their efficient enumeration and counting essential. The fixed points in BNs are a special case of minimal trap spaces. In this work, we formulate several meaningful counting problems related to minimal trap spaces and fixed points in BNs. These problems provide valuable insights both within BN theory (e.g., in probabilistic reasoning and dynamical analysis) and in broader application areas, including systems biology, abstract argumentation, and logic programming. To address these computational challenges, we propose novel methods based on approximate answer set counting, leveraging techniques from answer set programming. Our approach efficiently approximates the number of minimal trap spaces and the number of fixed points without requiring exhaustive enumeration, making it particularly well-suited for large-scale BNs. Our experimental evaluation on an extensive and diverse set of benchmark instances shows that our methods significantly improve the feasibility of counting minimal trap spaces and fixed points, paving the way for new applications in BN analysis and beyond.