Laptop Price Prediction System Using Machine Learning
Keywords:
Challenging, Prediction, algorithms, laptops, Machine LearningAbstract
In recent times, the use of laptops has come a necessity for scholars, professionals, and businesses. With the increase in demand, the prices of laptops have been shifting constantly. This has made it challenging for users to decide when and where to buy a laptop at an affordable price. As a result, the development of machine literacy algorithms for predicting laptop prices has come pivotal. Machine learning (ML) is high quality in assisting in making decisions and predictions from the large volume of facts produced. This paper aims to explore the use of machine literacy models, for predicting laptop prices grounded on specifications handed by the users. The Prediction model is delivered with one- of-a-kind duos of features and several regarded computing device literacy models.
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