The
vector space model is one of the classical and widely applied information
retrieval models to rank the web page based on similarity values. The retrieval
operations consist of cosine similarity function to compute the similarity
values between a given query and the set of documents retrieved and then rank
the documents according to the relevance. In this paper, we are presenting
different approaches of vector space model to compute similarity values of hits
from search engine for given queries based on terms weight. In order to achieve
the goal of an effective evaluation algorithm, our work intends to extensive
analysis of the main aspects of Vector space model, its approaches and provides
a comprehensive comparison for Term-Count Model, Tf-Idf model and Vector space
model based on normalization.
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