Zap: Making Predictions Based on Online User Behavior

07/16/2018
by   Yuri Chervonyi, et al.
0

This paper introduces Zap, a generic machine learning pipeline for making predictions based on online user behavior. Zap combines well known techniques for processing sequential data with more obscure techniques such as Bloom filters, bucketing, and model calibration into an end-to-end solution. The pipeline creates website- and task-specific models without knowing anything about the structure of the website. It is designed to minimize the amount of website-specific code, which is realized by factoring all website-specific logic into example generators. New example generators can typically be written up in a few lines of code.

READ FULL TEXT

page 3

page 7

research
10/11/2021

Omnidata: A Scalable Pipeline for Making Multi-Task Mid-Level Vision Datasets from 3D Scans

This paper introduces a pipeline to parametrically sample and render mul...
research
11/03/2017

The effect of website attributes and mental involvement online impulse purchases

This research aimed at investigating the impact of website features and ...
research
03/12/2022

End-to-End Multi-Tab Website Fingerprinting Attack: A Detection Perspective

Website fingerprinting attack (WFA) aims to deanonymize the website a us...
research
06/23/2021

Analisis Kualitas Layanan Website E-Commerce Bukalapak Terhadap Kepuasan Pengguna Mahasiswa Universitas Bina Darma Menggunakan Metode Webqual 4.0

The growth of new technology, motivates some product marketing to be don...
research
05/17/2023

OpenLB User Guide: Associated with Release 1.6 of the Code

OpenLB is an object-oriented implementation of LBM. It is the first impl...
research
03/09/2018

Modelos de Resposta para Experimentos Randomizados em Redes Sociais de Larga Escala

A/B tests are randomized experiments frequently used by companies that o...
research
08/31/2022

End-to-End Rationale Reconstruction

The logic behind design decisions, called design rationale, is very valu...

Please sign up or login with your details

Forgot password? Click here to reset