scispace - formally typeset
Journal ArticleDOI

E-Commerce Recommendation Applications

Reads0
Chats0
TLDR
An explanation of how recommender systems are related to some traditional database analysis techniques is presented, and a taxonomy ofRecommender systems is created, including the inputs required from the consumers, the additional knowledge required from a database, the ways the recommendations are presented to consumers,The technologies used to create the recommendations, and the level of personalization of the recommendations.
Abstract
i>Recommender systems are being used by an ever-increasing number of E-commerce sites to help consumers find products to purchase. What started as a novelty has turned into a serious business tool. Recommender systems use product knowledge—either hand-coded knowledge provided by experts or “mined” knowledge learned from the behavior of consumers—to guide consumers through the often-overwhelming task of locating products they will like. In this article we present an explanation of how recommender systems are related to some traditional database analysis techniques. We examine how recommender systems help E-commerce sites increase sales and analyze the recommender systems at six market-leading sites. Based on these examples, we create a taxonomy of recommender systems, including the inputs required from the consumers, the additional knowledge required from the database, the ways the recommendations are presented to consumers, the technologies used to create the recommendations, and the level of personalization of the recommendations. We identify five commonly used E-commerce recommender application models, describe several open research problems in the field of recommender systems, and examine privacy implications of recommender systems technology.

read more

Citations
More filters
Journal ArticleDOI

Building an expert travel agent as a software agent

TL;DR: An expert software agent that assists users in the tourism and travel domain that combines collaborative filtering with content-based recommendations and demographic information about customers to suggest package holidays and tours is presented.
Book ChapterDOI

Seven Contexts for Service System Design

TL;DR: This paper examines the characteristic concerns and methods for these seven different design contexts to propose a unifying view that spans them, especially when the service-system is “information-intensive.”
Journal ArticleDOI

Intelligent e‐government services with personalized recommendation techniques

TL;DR: A new approach to handle recommendation issues of one‐and‐only items in e‐government services is proposed, which integrates the techniques of semantic similarity and the traditional item‐based collaborative filtering.
Journal ArticleDOI

Cloud services recommendation

TL;DR: The results of the present review revealed that previous studies contributed scalability and accuracy to the recommender system, but the contribution of the trust and security improvement has not been considerable well.
Proceedings ArticleDOI

Experiments in dynamic critiquing

TL;DR: A novel approach to Critiquing is reviewed, dynamic critiquing, that allows users to modify multiple features simultaneously by choosing from a range of so-called compound critiques that are automatically proposed based on their current position within the product-space.
References
More filters
Proceedings ArticleDOI

Mining association rules between sets of items in large databases

TL;DR: An efficient algorithm is presented that generates all significant association rules between items in the database of customer transactions and incorporates buffer management and novel estimation and pruning techniques.
Journal Article

Zero defections: quality comes to services.

TL;DR: Defection rates are not just a measure of service quality; they are also a guide for achieving it; by listening to the reasons why customers defect, managers learn exactly where the company is falling short and where to direct their resources.
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.
Posted Content

Empirical Analysis of Predictive Algorithms for Collaborative Filtering

TL;DR: In this article, the authors compare the predictive accuracy of various methods in a set of representative problem domains, including correlation coefficients, vector-based similarity calculations, and statistical Bayesian methods.
Proceedings Article

Empirical analysis of predictive algorithms for collaborative filtering

TL;DR: Several algorithms designed for collaborative filtering or recommender systems are described, including techniques based on correlation coefficients, vector-based similarity calculations, and statistical Bayesian methods, to compare the predictive accuracy of the various methods in a set of representative problem domains.
Related Papers (5)