5 research outputs found

    A MANUALLY WITHDRAWAL FACETS FOR QUERIES FROM THEIR EXPLORATION RESULTS

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    We advise aggregating frequent lists inside the top search engine results to mine query facets and implement a method known as QDMiner. More particularly, QDMiner extracts lists for free text, HTML tags, and repeat regions within the top search engine results, groups them into clusters in line with the products they contain, then ranks the clusters and products depending on how the lists and products come in the very best results. Our suggested approach is generic and doesn't depend on any sort of domain understanding. The primary objective of mining facets differs from query recommendation. We advise an organized solution, which we describe as QDMiner, to instantly mine query facets by removing and grouping frequent lists for free text, HTML tags, and repeat regions within top search engine results. We further evaluate the issue of list duplication, and discover better query facets could be found by modeling fine-grained similarities between lists and penalizing the duplicated lists. Experimental results reveal that a lot of lists are available and helpful query facets could be found by QDMiner. Our proposed approach is generic and doesn't depend on any specific domain understanding. As a result it can cope with open-domain queries. Query dependent. rather of the fixed schema for your concerns, we extract facets in the top retrieved documents for every query

    A Study on Consumer Switching Behaviour in Cellular Service Provider: A Study with reference to Chennai

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    Indian mobile market is one of the fastest growing markets and is forecasted to reach 868.47 million users by 2013. India has seen rapid increase in the number of players which caused the tariff rates to hit an all time low....Switching Behaviour, Cellular service provider, network stability
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