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2018 | 113 | 10-19
Article title

A Single Substitute Review Creation Using Data Mining Techniques

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EN
Abstracts
EN
E-commerce has been the latest sensational bubble that humankind has witnessed in recent years. Most of the products these days are bought and sold online through the medium of internet. One of the most common things we witness on an E-commerce site is reviews. These reviews are massive and it is almost impossible to go through each and every one of those reviews yet many customers’ are influenced by them. Most of these reviews are insignificant and useless; therefore we propose a way to replace all the reviews with a small paragraph which can appropriately summarize all the reviews in an epitome. This includes removing spam reviews and proposing a methodology to appropriately weigh a given review based on its content. Then the final step is creating a single paragraph review containing all the appropriate information about the product.
Year
Volume
113
Pages
10-19
Physical description
Contributors
author
  • Department of Information Technology, KIET Group of Institutions, (Accredited by NAAC with “A” Grade), 13-Km Stone, Ghaziabad-Meerut Road, Ghaziabad – 201206, UP, India
  • Department of Information Technology, KIET Group of Institutions, (Accredited by NAAC with “A” Grade), 13-Km Stone, Ghaziabad-Meerut Road, Ghaziabad – 201206, UP, India
References
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Document Type
article
Publication order reference
Identifiers
YADDA identifier
bwmeta1.element.psjd-ce2a863a-410d-45fb-a654-82bef6559927
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