Ranking and Fraud Review Detection for Mobile Apps using KNN Algorithm IJTSRD
Ranking fraud in the mobile App business propose to fraud exercises which have an inspiration self-motivated, bringing up the Apps up in the prevalent rundown. By and by days, number of shady means are used more much of the time by application developers, such expanding their Apps’ business or posting fraud App appraisals, to give situating mutilation. There is a confined research for abstaining from ranking fraud. This paper gives a whole thought of situating double dealing and distinguishes the Ranking fraud unmistakable framework for mobile Apps. This work is gathering into three groupings. At first is web ranking spam detection, second is online review spam acknowledgment and last one is mobile application suggestion. The Web ranking spam incorporates to any ponder activities which pass on to choose Web pages a ridiculous ideal pertinence or centrality. Review spam is planned to give out of line perspective of a couple of items keeping in mind the end goal to affect the clients’ perspective of the items by particularly or in a roundabout way influeating or harming the item’s notoriety. In propose framework we additionally expel the fake reviews from the dataset utilizing comparability measure algorithm and after that identify the web rank spam. The trial result demonstrates that propose framework spare the time and additionally memory than the current framework.
By G. Mutyalamma | K. Komali | G. Pushpa”Ranking and Fraud Review Detection for Mobile Apps using KNN Algorithm”
Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-2 | Issue-1 , December 2017,
Ranking and Fraud Review Detection for Mobile Apps using KNN Algorithm IJTSRD IEEE PAPER
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