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Hi there! 👋

I am Gianluigi, a PhD student in Applied Mathematics at Université Côte d'Azur, where I am part of the J. A. Dieudonné laboratory and Maasai, an Inria team located in Sophia Antipolis.

I am currently working on the interpretability of machine learning models and algorithms, both by analyzing their theoretical foundations and by proposing new solutions, under the supervision of Damien Garreau and Frédéric Precioso.

Previously, I got an MSc in Mathematical Engineering and a BSc in Applied Mathematics, both from Politecnico di Torino. You can contact me by e-mail, on LinkedIn or on Twitter.

Gianluigi Lopardo's Projects

anchors_vs_lime_text icon anchors_vs_lime_text

A Comparison of Feature Importance and Rule Extraction for Interpretability on Text Data

attention_meets_xai icon attention_meets_xai

Code for the paper "Attention Meets Post-hoc Interpretability: A Mathematical Perspective"

cbc-ratings_prediction icon cbc-ratings_prediction

The purpose of this paper is to analyze how and how much a film's attributes affect its rating, using several regression techniques.

covid-19 icon covid-19

Stima giornaliera del valore R(t) del COVID-19 nelle regioni italiane

financial-articles_analysis icon financial-articles_analysis

(Part of) a project for the Business intelligence class. The goal is to analyze a dataset of financial articles and apply machine learning technique to extract useful information.

german-credit-data_credit_risk icon german-credit-data_credit_risk

This project is about the analysis of credit risks of German Credit Data. Different classification models and preprocessing methods are used and compared.

heloc-credit-approval icon heloc-credit-approval

This notebook is ispired by the AIX360 HELOC Credit Approval Tutorial, which shows different explainability methods for a credit approval process. Here XGBoost is used for classification, achieving better accuracy than most of the models used in that notebook. Then, feature importance methods are shown, to be compared with the Data Scientist explanations methods provided in the above notebook. The first ones come directly with XGBoost and the other is based on SHAP.

open-world-recognition icon open-world-recognition

The project's goal is to get familiar with cutting-edge models capable of acting in an open world, incremental learning approaches in image classification and open set strategies

pcs_project icon pcs_project

Scientific programming and computing project carried out in MATLAB.

pilgrim-dropout_prediction icon pilgrim-dropout_prediction

The purpose of this work is to predict which customers are about to leave the bank. To do this, the main classification algorithms will be used to predict whether a customer from 1999 will still be a customer in 2000 or not.

smace icon smace

A New Method for the Interpretability of Composite Decision Systems.

transfer-learning icon transfer-learning

The aim of this project is to apply and explore Transfer Learning. The dataset used is Caltech101, the neural network used for the first part of the project is AlexNet.

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