We suggest a conjugate subgradient type method without any line-search for
minimization of convex non differentiable functions. Unlike the custom methods
of this class, it does not require monotone decrease of the goal function and
reduces the implementation cost of each iteration essentially. At the same
time, its step-size procedure takes into account behavior of the method along
the iteration points. Preliminary results of computational experiments confirm
efficiency of the proposed modification.Comment: 11 page