Currently, one of the big problems in the Internet is the counteraction
against the spread of harmful information. The paper considers models,
algorithms and a common technique for choosing measures to counter harmful
information, based on an assessment of the semantic content of information
objects under conditions of uncertainty. Methods of processing incomplete,
contradictory and fuzzy knowledge are used. Two cases of the algorithm
implementation to eliminate the uncertainties in the assessment and
categorization of the semantic content of information objects are analyzed.
The first case is focused on processing fuzzy data. The second case is based
on using an artificial neural network. An experimental evaluation of the
proposed technique have shown that the use of both cases makes it possible
to eliminate uncertainties of any type and, thereby, to increase the
efficiency of choosing measures to counter harmful information