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A machine learning based heuristic to predict the efficacy of online sale

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arxiv 2005.04612 v1 pith:UXLFJFWG submitted 2020-05-10 cs.LG stat.ML

A machine learning based heuristic to predict the efficacy of online sale

classification cs.LG stat.ML
keywords salediscountefficacymachinesignificancedifferentduringfeatures
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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It is difficult to decide upon the efficacy of an online sale simply from the discount offered on commodities. Different features have different influence on the price of a product which must be taken into consideration when determining the significance of a discount. In this paper we have proposed a machine learning based heuristic to quantify the \textit{"significance"} of the discount offered on any commodity. Our proposed technique can quantify the significance of the discount based on features and the original price, and hence can guide a buyer during a sale season by predicting the efficacy of the sale. We have applied this technique on the Flipkart Summer Sale dataset using Support Vector Machine, which predicts the efficacy of the sale with an accuracy of 91.11\%. Our result shows that very few mobile phones have a significant discount during the Flipkart Summer Sale.

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