Predicting next shopping stage using Google Analytics data for E-commerce applications

05/29/2019
by   Mihai Cristian Pîrvu, et al.
0

E-commerce web applications are almost ubiquitous in our day to day life, however as useful as they are, most of them have little to no adaptation to user needs, which in turn can cause both lower conversion rates as well as unsatisfied customers. We propose a machine learning system which learns the user behaviour from multiple previous sessions and predicts useful metrics for the current session. In turn, these metrics can be used by the applications to customize and better target the customer, which can mean anything from offering better offers of specific products, targeted notifications or placing smart ads. The data used for the learning algorithm is extracted from Google Analytics Enhanced E-commerce, which is enabled by most e-commerce websites and thus the system can be used by any such merchant. In order to learn the user patterns, only its behaviour features were used, which don't include names, gender or any other personal information that could identify the user. The learning model that was used is a double recurrent neural network which learns both intra-session and inter-session features. The model predicts for each session a probability score for each of the defined target classes.

READ FULL TEXT

page 4

page 6

page 8

research
12/16/2020

Analyzing and Predicting Purchase Intent in E-commerce: Anonymous vs. Identified Customers

The popularity of e-commerce platforms continues to grow. Being able to ...
research
09/17/2020

Learning to Personalize for Web Search Sessions

The task of session search focuses on using interaction data to improve ...
research
02/08/2020

Predict your Click-out: Modeling User-Item Interactions and Session Actions in an Ensemble Learning Fashion

This paper describes the solution of the POLINKS team to the RecSys Chal...
research
07/11/2021

Transformers with multi-modal features and post-fusion context for e-commerce session-based recommendation

Session-based recommendation is an important task for e-commerce service...
research
10/06/2020

Categorizing Online Shopping Behavior from Cosmetics to Electronics: An Analytical Framework

A success factor for modern companies in the age of Digital Marketing is...
research
09/02/2021

RF-LighGBM: A probabilistic ensemble way to predict customer repurchase behaviour in community e-commerce

It is reported that the number of online payment users in China has reac...
research
02/02/2021

OPAM: Online Purchasing-behavior Analysis using Machine learning

Customer purchasing behavior analysis plays a key role in developing ins...

Please sign up or login with your details

Forgot password? Click here to reset