Fine-tuned Predictive Model for Verifying POI Data

International Journal of Advanced Computer Science and Applications(2021)

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Abstract
Mapping websites and geo portals are playing a vital role in daily life due to the availability of geo-tagged data.From booking a cab to search a place, getting traffic information, review of the place, searching for a doctor or best school available in the locality, we are heavily dependent on the map services and geo portals available for finding such information.There is voluminous data available on these sources and it is getting increasing every moment.These data are majorly collected through crowdsourcing methods where people are contributing.As a basic principle of Garbage in garbage out, the quality of this data impacts the quality of the services based on this data.Therefore, it is highly desired to have a model which can predict the quality/accuracy of the geotagged Point of interest data.We propose a novel Fine-Tuned Predictive Model to check the accuracy of this data using the best suitable supervised machine learning approach.This work focuses on the complete life cycle of the model building, starting from the data collection to the fine-tuning of the hyperparameters.We covered the challenges particularly to the geotagged POI data and remedies to resolve the issues to make it suitable for predictive modeling for classifying the data based on their accuracy.This is a unique work that considers multiple sources including ground truth data to verify the geotagged data using a machine learning approach.After exhaustive experiments, we obtained the best values for hyperparameters for the selected predictive model built on the real data set prepared specifically to target the proposed solution.This work provides a way to develop a robust pipeline for predicting the accuracy of crowdsourced geotagged data.
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Key words
Crowdsourced Mapping,Location Prediction,Location-Based Data,Web-based GIS,Volunteered Geographic Information
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