Improving the user experience and conversion rate by means of personalization is of major importance for modern e-commerce applications. Several publications in the past have already dealt with the topic of adaptive search result ranking and appropriate ranking metrics. Newer approaches also took personalized ranking attributes of a connected Social Web platform into account to form so called Social Commerce Applications. However, these approaches were often limited to data silos of closed-platform data providers and none of the contributions discussed the benefits of Linked Data in building social-aware e-commerce applications so far. Therefore, we present a first formalization of a scoring model for a social-aware search approach that takes user interaction from multiple social networks into account. In contrast to other existing solutions, our approach focuses on a Linked Data information management in order to easily combine social data from different social networks. We analyze the possible influence of friend activities to the relevance of a person’s search intent and how it can be combined with other ranking factors in a formalized scoring model. As a result, we implement a first demonstrator built upon RDF data to show how an application can present the user an adaptive search result list depending on the users’ current social context.
[1]
Silviu Maniu,et al.
Network-aware search in social tagging applications: instance optimality versus efficiency
,
2013,
CIKM.
[2]
Ravi Kumar,et al.
Influence and correlation in social networks
,
2008,
KDD.
[3]
Tim Berners-Lee,et al.
A Demonstration of the Solid Platform for Social Web Applications
,
2016,
WWW.
[4]
Laks V. S. Lakshmanan,et al.
Learning influence probabilities in social networks
,
2010,
WSDM '10.
[5]
Jesse Weaver,et al.
Facebook Linked Data via the Graph API
,
2013,
Semantic Web.
[6]
Ido Guy,et al.
Personalized social search based on the user's social network
,
2009,
CIKM.
[7]
Wolfgang Nejdl,et al.
Semantically Rich Recommendations in Social Networks for Sharing, Exchanging and Ranking Semantic Context
,
2005,
International Semantic Web Conference.
[8]
Jianliang Xu,et al.
Social-Aware Top-k Spatial Keyword Search
,
2014,
2014 IEEE 15th International Conference on Mobile Data Management.
[9]
Ladislav Peska,et al.
Using Linked Open Data to Improve Recommending on E-Commerce
,
2013
.
[10]
Tim Berners-Lee,et al.
Linked Data - The Story So Far
,
2009,
Int. J. Semantic Web Inf. Syst..