Abstract: Predicting the individual’s
web-browsing behavior on the internet
is more important for advertisement mining. This makes the advertisers
or the publishers to successfully interact with users in providing relevant
advertisement, many intelligent interfaces requires a method for
recognizing, analyzing and predicting user behavior actions. Initially we need to
collect a log of datasets with user behavior attributes. Hidden Markov Model is used to derive a
pattern for predicting the behavior of the users on the web. Also, it
helps in analyzing the performance of user behavior profile and estimating the advertising
cost to perform Mapreduce jobs based on user's search query. With these collected information, optimized advertisement is deployed
to the user using Bigquery mechanism.
Keywords : Hidden Markov Model, behavioral targeting, Mapreduce, Advertisement mining, Bigquery.