A train set forming for using artificial neural networks to database errors search
Abstract
A train set forming for using artificial neural networks to database errors search
Incoming article date: 03.05.2013It describes a method of train set forming for using artificial neural networks to search inauthentic rows in databases tables. An existing methods of the reliability ensure involve the use of integrity constraints and provides a truthfulness, but there is still a possibility of entering of inauthentic data, appropriate to all constraints. A more accurate assessment of reliability is possible with the use of artificial neural networks that require a training set. The main requirement for the training set - representation includes sufficiency, diversity and evenness. The approaches to each of these requirements are describes. Also calculations a sufficient number of rows for training neural networks of various types is given, as well as the results of experiments that confirm correctness of the theoretical calculations.
Keywords: database, authenticity, artificial neural networks, training set, representation