Abstract: The paper highlighted the problems of selection methods for the preparation of the "raw" data for
subsequent processing in the systems of intelligent information analysis. Each application domain contains a lot
of different types of identification characteristics. Most algorithms are unable to work directly with all types and
formats of data. Therefore, the preparation or the transformation of the input data set is an integral part of
analysis system design. In the paper discusses methods of transformation of continuous and discrete types of
data useful for analysis of the vector set. On the example of the domain "Information customs control" has been
shown as configured training set for recognition of risks violation of customs legislation, based on a neural
network the type multilayer perceptron. Were also considered methods of forming pseudographic patterns from
the input sequence data initially did not a graphic of origin.
Keywords: preprocessing, transformation data
ACM Classification Keywords: D.2 SOFTWARE ENGINEERING – D.2.12 Interoperability – Data mapping
Link:
PREPROCESSING "RAW" DATA SETS AS AN IMPORTANT ASPECT OF INTELLIGENT INFORMATION PROCESSING
Sergii Konovalenko
http://foibg.com/ibs_isc/ibs-27/ibs-27-p21.pdf