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Serendipitous Recommendation in E-Commerce Using Innovator-Based Collaborative Filtering

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TLDR
A novel recommendation algorithm termed innovator-based CF is proposed that can recommend cold items to users by introducing the concept of innovators, achieving the balance between serendipity and accuracy.
Abstract
Collaborative filtering (CF) algorithms have been widely used to build recommender systems since they have distinguishing capability of sharing collective wisdoms and experiences. However, they may easily fall into the trap of the Matthew effect, which tends to recommend popular items and hence less popular items become increasingly less popular. Under this circumstance, most of the items in the recommendation list are already familiar to users and therefore the performance would seriously degenerate in finding cold items, i.e., new items and niche items. To address this issue, in this paper, a user survey is first conducted on the online shopping habits in China, based on which a novel recommendation algorithm termed innovator-based CF is proposed that can recommend cold items to users by introducing the concept of innovators. Specifically, innovators are a special subset of users who can discover cold items without the help of recommender system. Therefore, cold items can be captured in the recommendation list via innovators, achieving the balance between serendipity and accuracy. To confirm the effectiveness of our algorithm, extensive experiments are conducted on the dataset provided by Alibaba Group in Ali Mobile Recommendation Algorithm Competition, which is collected from the real e-commerce environment and covers massive user behavior log data.

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Journal ArticleDOI

The Long Tail: Why the Future of Business is Selling Less of More

TL;DR: The central premise of the book is that the combination of the Pareto or Zipf distribution that is characteristic of Web traffic and the direct access to consumers via Web technology has opened up new business opportunities in the ''long tail''.
Journal ArticleDOI

Personalized Recommendation System Based on Collaborative Filtering for IoT Scenarios

TL;DR: A novel recommendation model based on time correlation coefficient and an improved K-means with cuckoo search (CSK-me means) called TCCF is proposed, which can provide a higher quality recommendation by analyzing the user's behaviors and cluster similar users together for further quick and accurate recommendation.
Journal ArticleDOI

DeepCF: A Unified Framework of Representation Learning and Matching Function Learning in Recommender System

TL;DR: A general framework named DeepCF, short for Deep Collaborative Filtering, is proposed, to combine the strengths of the two types of methods and overcome such flaws in dot product and low-rank relations respectively.
Journal ArticleDOI

EDMF: Efficient Deep Matrix Factorization With Review Feature Learning for Industrial Recommender System

TL;DR: Zhang et al. as discussed by the authors proposed an efficient deep matrix factorization (EDMF) with review feature learning for the industrial recommender system, which extracts the interactive features of onefold review by convolutional neural networks with word-attention mechanism.
Journal ArticleDOI

A Score Prediction Approach for Optional Course Recommendation via Cross-User-Domain Collaborative Filtering

TL;DR: A novel cross-user-domain collaborative filtering algorithm is designed to accurately predict the score of the optional course for each student by using the course score distribution of the most similar senior students.
References
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Journal ArticleDOI

The Strength of Weak Ties

TL;DR: In this paper, it is argued that the degree of overlap of two individuals' friendship networks varies directly with the strength of their tie to one another, and the impact of this principle on diffusion of influence and information, mobility opportunity, and community organization is explored.
Proceedings ArticleDOI

Item-based collaborative filtering recommendation algorithms

TL;DR: This paper analyzes item-based collaborative ltering techniques and suggests that item- based algorithms provide dramatically better performance than user-based algorithms, while at the same time providing better quality than the best available userbased algorithms.
Journal ArticleDOI

The Matthew effect in science. The reward and communication systems of science are considered.

TL;DR: The psychosocial conditions and mechanisms underlying the Matthew effect are examined and a correlation between the redundancy function of multiple discoveries and the focalizing function of eminent men of science is found—a function which is reinforced by the great value these men place upon finding basic problems and by their self-assurance.
Proceedings ArticleDOI

GroupLens: an open architecture for collaborative filtering of netnews

TL;DR: GroupLens is a system for collaborative filtering of netnews, to help people find articles they will like in the huge stream of available articles, and protect their privacy by entering ratings under pseudonyms, without reducing the effectiveness of the score prediction.
Journal Article

Industry Report: Amazon.com Recommendations: Item-to-Item Collaborative Filtering.

TL;DR: This work compares three common approaches to solving the recommendation problem: traditional collaborative filtering, cluster models, and search-based methods, and their algorithm, which is called item-to-item collaborative filtering.
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