Abstract :
The concept of efficiency measures of multicategory information systems as well as the concepts of the relationship and the similarity measures between two efficiency measures have been recently introduced and developed. In this paper, the concave measures as a general class of efficiency measures and the information measures as a special class of concave measures are defined and investigated. The relationship between any concave measure, information measure in particular, and the Bayes probability of errorP_{B}is determined for any2\leq Q < \infty, whereQdenotes the number of categories in a multicategory information system. The so-called\epsilon_{ }0 and\epsilon_{m}criteria are proposed as the similarity measures between the information measures andP_{B}. The problems of determination, for any2 \leq Q < \infty, of all the information measures with minimal\epsilon_{0}and\epsilon_{m}criteria, called\epsilon_{0}-optimal and\epsilon_{m}-optimal, are formulated and completely solved, respectively. Additionally, the minimal values of\epsilon_{0}and\epsilon_{m}criteria are evaluated as well. It is pointed out that the well-known average conditional quadratic entropy is for all2 \leq Q < \inftyvery close to the\epsilon_{0}-optimal and\epsilon_{m}-Optimal information measures with respect to\epsilon_{0}and\epsilon_{m}criteria, respectively.