“…In supervised learning, the annotations of a huge number of instances may not be easily obtained in many practical applications due to the concerns including but not limited to time consumption, expenditure, and privacy preserving. For these reasons, many weakly supervised learning (WSL) frameworks [1] have been studied in various scenarios recently, including semi-supervised learning [2,3,4,5,6,7,8], positive-unlabeled learning [9,10,11,12], unlabeled-unlabeled learning [13,14], noisy-label learning [15,16,17,18], complementary and partial-label learning [19,20,21,22,23,24,25,26,27], similarity-based learning [28,29,30], and positive-confidence learning [31].…”