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  1. Music_lyrics_with_python Music_lyrics_with_python Public

    In this project, the songs' lyrics were analysed by musical genre in recent years and an attempt was made to find out whether there was a relationship between the lyrics, the sentiment and the topi…

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    This work aims to represent through Network Analysis the football market flow of the 6 major European leagues, trying to understand how the football market has evolved from 1990 to 2021. Network An…

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  5. Credit_Card_Fraud_Detection Credit_Card_Fraud_Detection Public

    A very important area nowadays is the prediction of fraudulent transactions in banking. When dealing with this data, the problem we run into is imbalance, the transactions available are mostly legi…

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  6. Credit_Card_Fraud_Detection-Italian_Bank Credit_Card_Fraud_Detection-Italian_Bank Public

    The goal of this projects was to minimise both false positives i.e. genuine transactions that are classified as fraudulent, and false negatives, fraudulent transactions that are classified as genui…

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