Recent Advancements in Computational Intelligence: Concepts, Methodologies and Applications (Part 1)

Value Vue: AI-driven Price Prediction and Comparable Companion Using NLP and Cloud Computing

Author(s): Geetha P.*, Kapila Vani R. K., Padmavathy T. and Lakshmi Narayanan S.

Pp: 249-272 (24)

DOI: 10.2174/9798898810337125010014

* (Excluding Mailing and Handling)

Abstract

Consumers are constantly bombarded with options in a high-velocity environment, and big-ticket products, including cars, homes, laptops, etc., require major decision-making. It is crucial to assist consumers in effective decisions in line with their requirements and returns. As things stand today, there is no holistic service that can provide precise and immediate price estimates with the capability to offer similar products in the same price bracket as well. Value Vue is a groundbreaking and transformative solution website, which emerges as the answer to these existing gaps, accompanying a new era of precision and trust so consumers can make informed purchasing decisions. Value Vue boasts an intuitive and user-friendly website design, offering a seamless browsing experience that simplifies price predictions. At its core, Value Vue leverages the powerful synergy between advanced machine learning models and cloud computing, offering an unprecedented level of confidence and convenience to individuals navigating the complex world of significant purchases. Committed to data integrity and transparency, Value Vue is a price prediction model that relies on reliable and reputable sources to ensure accuracy, in addition to the trustworthiness of its information, while its cloud-powered scalability allows it to seamlessly handle extensive data sets, catering to various markets and user needs. Value Vue is an automation of valuation processes, enhanced market transparency, and personalized recommendations in a friendly environment.


Keywords: Artificial intelligence, Cloud computing, Machine learning, Natural language processing, Price prediction.

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