Implementing and Training Predictive Customer Lifetime Value Models in Python
Implementing and Training Predictive Customer Lifetime Value Models in Python by Jean-Rene Gauthier, Ben Van Dyke
Customer lifetime value models (CLVs) are powerful predictive models that allow analysts and data scientists to forecast how much customers are worth to a business. CLV models provide crucial inputs to inform marketing acquisition decisions, retention measures, customer care queuing, demand forecasting, etc. They are used and applied in a variety of verticals, including retail, gaming, and telecom.
This tutorial is separated into two parts:
In the first part, we will provide a brief overview of the ins and outs of probabilistic models, which can be used to quantify the future value of a customer, and demonstrate how e-commerce companies are using the outputs of these models to identify, retain, and target high-value customers.
In the second part, we will implement, train, and validate predictive customer lifetime value models in a hands-on Python tutorial. Throughout the tutorial, we will use a real-world retail dataset and go over all the steps necessary to build a reliable customer lifetime value model: data exploration, feature engineering, model implementation, training, and validation. We will also use some of the probabilistic programming language packages available in Python (e.g. Stan, PyMC) to train these models.
The resulting Python notebooks will lay out the foundation for more advanced models tailored to the specifics of each business setting. Throughout the tutorial, we will give the audience additional tips on how to tweak the models to fit different business settings.
www.pydata.org
PyData is an educational program of NumFOCUS, a 501(c)3 non-profit organization in the United States. PyData provides a forum for the international community of users and developers of data analysis tools to share ideas and learn from each other. The global PyData network promotes discussion of best practices, new approaches, and emerging technologies for data management, processing, analytics, and visualization. PyData communities approach data science using many languages, including (but not limited to) Python, Julia, and R.
PyData conferences aim to be accessible and community-driven, with novice to advanced level presentations. PyData tutorials and talks bring attendees the latest project features along with cutting-edge use cases.
Видео Implementing and Training Predictive Customer Lifetime Value Models in Python канала PyData
Customer lifetime value models (CLVs) are powerful predictive models that allow analysts and data scientists to forecast how much customers are worth to a business. CLV models provide crucial inputs to inform marketing acquisition decisions, retention measures, customer care queuing, demand forecasting, etc. They are used and applied in a variety of verticals, including retail, gaming, and telecom.
This tutorial is separated into two parts:
In the first part, we will provide a brief overview of the ins and outs of probabilistic models, which can be used to quantify the future value of a customer, and demonstrate how e-commerce companies are using the outputs of these models to identify, retain, and target high-value customers.
In the second part, we will implement, train, and validate predictive customer lifetime value models in a hands-on Python tutorial. Throughout the tutorial, we will use a real-world retail dataset and go over all the steps necessary to build a reliable customer lifetime value model: data exploration, feature engineering, model implementation, training, and validation. We will also use some of the probabilistic programming language packages available in Python (e.g. Stan, PyMC) to train these models.
The resulting Python notebooks will lay out the foundation for more advanced models tailored to the specifics of each business setting. Throughout the tutorial, we will give the audience additional tips on how to tweak the models to fit different business settings.
www.pydata.org
PyData is an educational program of NumFOCUS, a 501(c)3 non-profit organization in the United States. PyData provides a forum for the international community of users and developers of data analysis tools to share ideas and learn from each other. The global PyData network promotes discussion of best practices, new approaches, and emerging technologies for data management, processing, analytics, and visualization. PyData communities approach data science using many languages, including (but not limited to) Python, Julia, and R.
PyData conferences aim to be accessible and community-driven, with novice to advanced level presentations. PyData tutorials and talks bring attendees the latest project features along with cutting-edge use cases.
Видео Implementing and Training Predictive Customer Lifetime Value Models in Python канала PyData
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