Key Project of Natural Science Foundation in Universities of Anhui Province (No.KJ2017A352);Fund of Key Laboratory of Colleges and Universities in Anhui Province (No.ACAIM160102)
many researchers usually directly add the label confidence matrix as a priori knowledge to the classification model
and do not consider the influence of non-equilibrium prior knowledge on the quality of the label set.Based on this
the method of non-equilibrium parameters is introduced
and the basis confidence matrix obtained from the prior knowledge is non-equilibrium.Therefore
a multi-label learning algorithm is proposed
which uses kernel extreme learning machine with non-equilibrium label completion (KELM-NeLC).Firstly
information entropy is used to measure the correlation between labels which gets the basic label confidence matrix.Secondly
the basic label confidence matrix is improved to construct non-equilibrium label completion matrix by the non-equilibrium parameter.Finally
in order to learn to obtain a more accurate label confidence matrix
the non-equilibrium label completion matrix is introduced with the kernel extreme learning machine to solve the multi-label classification problem.The experimental results of the proposed algorithm in the opening benchmark multi-label datasets show that the KELM-NeLC algorithm has some advantages over other comparative multi-label learning algorithms and the statistical hypothesis test further illustrates the effectiveness of the proposed algorithm.