Author : Amritesh Sidhu 1
Date of Publication :11th September 2019
Abstract: In present scenario, the number of TV reality shows are growing day-by-day. Television rating points (TRPs) play a vital role in the broadcasting field of TV. TRPs can also be deployed to study the interests of the viewers. In this paper, firstly viewers’ opinions are examined. Then six factors have been considered based on which, a random tree is made. This random tree is a part of classification (a technique of data mining). Finally, this random tree helps to predict the TRP of a serial or a channel.
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