Continuous item set mining is a generally exploratory procedure that centers on finding intermittent relationships among information. The unflinching advancement of business sectors and business conditions prompts the need of information mining calculations to find huge relationship changes to responsively suit item and administration arrangement to client needs. Change mining, with regards to visit item sets, centers around recognizing and revealing critical changes in the arrangement of mined item sets starting with one time span then onto the next. The revelation of continuous summed up item sets, i.e., item sets that regularly happen in the source information, and give an undeniable level reflection of the mined information, gives new difficulties in the investigation of item sets that become uncommon, and accordingly are not, at this point removed, from a specific point. This task proposes a novel sort of powerful example, to be specific the A DB-Scan Dynamic Sequential Combinatorial Analysis (DSCA-SCANNING), that addresses the development of an item set in continuous time-frames, by revealing the data about its successive speculations described by insignificant excess (i.e., least degree of reflection) on the off chance that it gets rare in a specific time-frame. To address DSCA mining, it proposes DSCA, a calculation that centers around evading item set mining followed by post handling by abusing a help driven item set speculation approach. To concentrate on the insignificantly repetitive incessant speculations and hence decrease the measure of the created designs, the revelation of a savvy subset, specifically the, is tended to also in this work.