Recognizing the Tractability in Big Data Computing

10/03/2019
by   Jianzhong Li, et al.
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Due to the limitation on computational power of existing computers, the polynomial time does not works for identifying the tractable problems in big data computing. This paper adopts the sublinear time as the new tractable standard to recognize the tractability in big data computing, and the random-access Turing machine is used as the computational model to characterize the problems that are tractable on big data. First, two pure-tractable classes are first proposed. One is the class PL consisting of the problems that can be solved in polylogarithmic time by a RATM. The another one is the class ST including all the problems that can be solved in sublinear time by a RATM. The structure of the two pure-tractable classes is deeply investigated and they are proved PL^i⊊PL^i+1 and PL⊊ST. Then, two pseudo-tractable classes, PTR and PTE, are proposed. PTR consists of all the problems that can solved by a RATM in sublinear time after a PTIME preprocessing by reducing the size of input dataset. PTE includes all the problems that can solved by a RATM in sublinear time after a PTIME preprocessing by extending the size of input dataset. The relations among the two pseudo-tractable classes and other complexity classes are investigated and they are proved that PT⊆P, 'T^0_Q⊊PTR^0_Q and PT_P = P.

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