Classifying Web Services With and Without Association Rules
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Abstract
The transition of the World Wide Web from a paradigm of static Web pages to one of
dynamic Web Services raises a new and challenging problem of locating desired Web
Services. With the expected growth of the number of Web Services available on the web,
the need for mechanisms that enable the automatic categorization to organize this vast
amount of data becomes important.
Web Services classification is the task of automatically sorting a set of documents into
categories from a predefined set. Automated Web Services classification is attractive
because it removes the need of manually organizing document bases, which can be too
expensive, or simply not feasible given the time constraints of the application or the
number of documents involved. The process involves text mining and classification of
WSDL (Web Service Description Language) documents based on Association rules. Text
mining techniques are used at the first stage, namely preprocessing, to extract relevant
information from a WSDL documents. Textual documentation, operations and arguments
accompanying descriptions of Web Services are preprocessed. Association rules are
applied to analyze the degree of dependency between contents of WSDL and category of
the Web Services. A machine learning classifier is used at the last stage to categorize the
documents under different categories. This classifier deduces a sequence of candidate
categories for a preprocessed Web service description. Here the concept of Association
rules in context of Web Services is used and its performance is compared with the
primitive algorithms for classification.
