Guarantees and Limits of Preprocessing in Constraint Satisfaction and Reasoning
نویسندگان
چکیده
We present a first theoretical analysis of the power of polynomial-time preprocessing for important combinatorial problems from various areas in AI. We consider problems from Constraint Satisfaction, Global Constraints, Satisfiability, Nonmonotonic and Bayesian Reasoning under structural restrictions. All these problems involve two tasks: (i) identifying the structure in the input as required by the restriction, and (ii) using the identified structure to solve the reasoning task efficiently. We show that for most of the considered problems, task (i) admits a polynomial-time preprocessing to a problem kernel whose size is polynomial in a structural problem parameter of the input, in contrast to task (ii) which does not admit such a reduction to a problem kernel of polynomial size, subject to a complexity theoretic assumption. As a notable exception we show that the consistency problem for the AtMost-NValue constraint admits a polynomial kernel consisting of a quadratic number of variables and domain values. Our results provide a firm worst-case guarantees and theoretical boundaries for the performance of polynomial-time preprocessing algorithms for the considered problems.
منابع مشابه
Limits of Preprocessing
We present a first theoretical analysis of the power of polynomial-time preprocessing for important combinatorial problems from various areas in AI. We consider problems from Constraint Satisfaction, Global Constraints, Satisfiability, Nonmonotonic and Bayesian Reasoning. We show that, subject to a complexity theoretic assumption, none of the considered problems can be reduced by polynomial-tim...
متن کاملPreprocessing Techniques for Distributed Constraint Optimization
Although algorithms for Distributed Constraint Optimization Problems (DCOPs) have emerged as a key technique for distributed reasoning, their application faces significant hurdles in many multiagent domains due to their inefficiency. Preprocessing techniques have been successfully used to speed up algorithms for centralized constraint satisfaction problems. This paper introduces a framework of ...
متن کاملConsistency Methods for Temporal Reasoning
Reasoning about time is important in real-life situations and in engineered systems. In this research, we develop new algorithms for solving the Simple Temporal Problems (STP) and the more general Temporal Constraint Satisfaction Problem (TCSP). First, we propose a new efficient algorithm, the STP-solver, for computing the minimal network of an STP. This algorithm achieves high performance by e...
متن کاملOptimal portfolio allocation with imposed price limit constraint
Daily price limits are adopted by many securities exchanges in countries such as the USA, Canada, Japan and various other countries in Europe and Asia, in order to increase the stability of the financial market. These limits confine the price of the financial asset during all trading stages of any trading day to a range, usually determined based on the previous day’s closing price. In this pape...
متن کاملFeature selection with test cost constraint
Feature selection is an important preprocessing step in machine learning and data mining. In real-world applications, costs, including money, time and other resources, are required to acquire the features. In some cases, there is a test cost constraint due to limited resources. We shall deliberately select an informative and cheap feature subset for classification. This paper proposes the featu...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Artif. Intell.
دوره 216 شماره
صفحات -
تاریخ انتشار 2014