SL method for computing a near-optimal solution using linear and non-linear programming in cost-based hypothetical reasoning
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摘要
Hypothetical reasoning is an important framework for knowledge-based systems, however, its inference time grows exponentially with respect to problem size. In this paper, we present an understandable efficient method called slide-down and lift-up (SL) method which uses a linear programming technique for determining an initial search point and a non-linear programming technique for efficiently finding a near-optimal 0–1 solution. To escape from trapping into local optima, we have developed a new local handler, which systematically fixes a variable to a locally consistent value. Since the behavior of the SL method is illustrated visually, the simple inference mechanism of the method can be easily understood.
论文关键词:Hypothetical reasoning,Linear programming,Non-linear programming
论文评审过程:Received 2 May 2001, Accepted 22 November 2001, Available online 19 April 2002.
论文官网地址:https://doi.org/10.1016/S0950-7051(02)00020-5