Abstract

The last two decades have witnessed an explosive growth of e-commerce applications. Existing online recommendation systems for e-commerce applications, particularly group-buying applications, suffer from scalability and data sparsity problems when confronted with exponentially increasing large-scale data. This leads to a poor recommendation effect of traditional collaborative filtering (CF) methods in group-buying applications. In order to address this challenge, this paper proposes a hybrid two-phase recommendation (HTPR) method which consists of offline preparation and online recommendation, combining clustering and collaborative filtering techniques. The user-item category tendency matrix is constructed after clustering items, and then users are clustered to facilitate personalized recommendation where items are generated by collaborative filtering technology. In addition, a parallelized strategy was developed to optimize the recommendation process. Extensive experiments on a real-world dataset were conducted by comparing HTPR with other three recommendation methods: traditional CF, user-clustering based CF, and item-clustering based CF. The experimental results show that the proposed HTPR method is effective and can improve the accuracy of online recommendation systems for group-buying applications.

Highlights

  • In recent years, the rapid development of the Mobile Internet [1] and Web 2.0 [2,3] has transformed people’s way of life and created new business models and economic behaviors, to enable a culture of sharing-economy

  • Experiments for item clustering and user clustering are conducted to evaluate the effectiveness of hybrid two-phase recommendation (HTPR), and to determine the values of relevant parameters used in the clustering process

  • HTPR was compared with basic collaborative filtering (CF), user clustering based CF (UCCF) and item clustering based CF (ICCF) on the prediction quality (MAE), and on the quality of recommendation (Precision, Recall and F1) to evaluate accuracy

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Summary

A Hybrid Two-Phase Recommendation for

School of Accounting, Shanghai Lixin University of Accounting and Finance, Shanghai 201602, China College of Electrical Information and Engineering, Tongji University, Shanghai 201804, China Featured Application: The hybrid two-phase recommendation for some group-buying based e-commerce applications, such as Meituan.com and Pinduoduo.com.

Introduction
Recommendation Techniques
Clustering
Two-phase
Problem Statement
Feature Description
Feature Description of Item Attribute
Feature Description of User Behavior
Overview of the Proposed Solution
Feature Supplementation Based on Item Clustering
Integrating Similarity Calculation and User Clustering
Online Recommendation
Experimental Results
Experiment Dataset and Metrics
Effectiveness Evaluation
Impact regulating parameter
In most proven to provide more accurate predictions than
Conclusions and Future
Full Text
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