TY - JOUR
T1 - A residual-based message passing algorithm for constraint satisfaction problems
AU - Zhao, Chun Yan
AU - Fu, Yan Rong
AU - Zhao, Jin Hua
N1 - Publisher Copyright:
© 2022 Institute of Theoretical Physics CAS, Chinese Physical Society and IOP Publishing.
PY - 2022/3
Y1 - 2022/3
N2 - Message passing algorithms, whose iterative nature captures complicated interactions among interconnected variables in complex systems and extracts information from the fixed point of iterated messages, provide a powerful toolkit in tackling hard computational tasks in optimization, inference, and learning problems. In the context of constraint satisfaction problems (CSPs), when a control parameter (such as constraint density) is tuned, multiple threshold phenomena emerge, signaling fundamental structural transitions in their solution space. Finding solutions around these transition points is exceedingly challenging for algorithm design, where message passing algorithms suffer from a large message fluctuation far from convergence. Here we introduce a residual-based updating step into message passing algorithms, in which messages with large variation between consecutive steps are given high priority in the updating process. For the specific example of model RB (revised B), a typical prototype of random CSPs with growing domains, we show that our algorithm improves the convergence of message updating and increases the success probability in finding solutions around the satisfiability threshold with a low computational cost. Our approach to message passing algorithms should be of value for exploring their power in developing algorithms to find ground-state solutions and understand the detailed structure of solution space of hard optimization problems.
AB - Message passing algorithms, whose iterative nature captures complicated interactions among interconnected variables in complex systems and extracts information from the fixed point of iterated messages, provide a powerful toolkit in tackling hard computational tasks in optimization, inference, and learning problems. In the context of constraint satisfaction problems (CSPs), when a control parameter (such as constraint density) is tuned, multiple threshold phenomena emerge, signaling fundamental structural transitions in their solution space. Finding solutions around these transition points is exceedingly challenging for algorithm design, where message passing algorithms suffer from a large message fluctuation far from convergence. Here we introduce a residual-based updating step into message passing algorithms, in which messages with large variation between consecutive steps are given high priority in the updating process. For the specific example of model RB (revised B), a typical prototype of random CSPs with growing domains, we show that our algorithm improves the convergence of message updating and increases the success probability in finding solutions around the satisfiability threshold with a low computational cost. Our approach to message passing algorithms should be of value for exploring their power in developing algorithms to find ground-state solutions and understand the detailed structure of solution space of hard optimization problems.
KW - constraint satisfaction problems
KW - message passing algorithms
KW - model RB
KW - residuals of messages
UR - https://www.scopus.com/pages/publications/85126055882
U2 - 10.1088/1572-9494/ac4896
DO - 10.1088/1572-9494/ac4896
M3 - 文章
AN - SCOPUS:85126055882
SN - 0253-6102
VL - 74
JO - Communications in Theoretical Physics
JF - Communications in Theoretical Physics
IS - 3
M1 - 035601
ER -