CLVTools - Tools for Customer Lifetime Value Estimation
A set of state-of-the-art probabilistic modeling
approaches to derive estimates of individual customer lifetime
values (CLV). Commonly, probabilistic approaches focus on
modelling 3 processes, i.e. individuals' attrition,
transaction, and spending process. Latent customer attrition
models, which are also known as "buy-'til-you-die models",
model the attrition as well as the transaction process. They
are used to make inferences and predictions about transactional
patterns of individual customers such as their future purchase
behavior. Moreover, these models have also been used to predict
individuals’ long-term engagement in activities such as playing
an online game or posting to a social media platform. The
spending process is usually modelled by a separate
probabilistic model. Combining these results yields in lifetime
values estimates for individual customers. This package
includes fast and accurate implementations of various
probabilistic models for non-contractual settings (e.g.,
grocery purchases or hotel visits). All implementations support
time-invariant covariates, which can be used to control for
e.g., socio-demographics. If such an extension has been
proposed in literature, we further provide the possibility to
control for time-varying covariates to control for e.g.,
seasonal patterns. Currently, the package includes the
following latent attrition models to model individuals'
attrition and transaction process: [1] Pareto/NBD model
(Pareto/Negative-Binomial-Distribution), [2] the Extended
Pareto/NBD model (Pareto/Negative-Binomial-Distribution with
time-varying covariates), [3] the BG/NBD model
(Beta-Gamma/Negative-Binomial-Distribution) and the [4]
GGom/NBD (Gamma-Gompertz/Negative-Binomial-Distribution).
Further, we provide an implementation of the Gamma/Gamma model
to model the spending process of individuals.