Complementary recommendation gains increasing attention in e-commerce since it expedites the process of finding frequently-bought-with products for users in their shopping journey. Therefore, learning the product representation that can reflect this complementary relationship plays a central role in modern recommender systems. In this work, we propose a logical reasoning network, LOGIREC, to effectively learn embeddings of products as well as various transformations (projection, intersection, negation) between them. LOGIREC is capable of capturing the asymmetric complementary relationship between products and seamlessly extending to high-order recommendations where more comprehensive and meaningful complementary relationship is learned for ...
In the age of information overload, customers are overwhelmed with the number of products available ...
AbstractIn this paper, we propose a new recommendation algorithm, which extends the idea of linkage ...
It is a truth universally acknowledged that e-commerce platform users in search of an item that best...
Embedding based product recommendations have gained popularity in recent years due to its ability to...
Related product recommendation (RPR) is pivotal to the success of any e-commerce service. In this pa...
A recommendation system assists users in finding items that are relevant to them. Existing recommend...
Understanding the relationships between items can improve the accuracy and interpretability of recom...
Collaborative Filtering (CF)-based recommendation methods suffer from (i) sparsity (have low user–it...
Retailers can take advantage of recommendation networks to drive product demand, write Zhijie Lin, K...
It has been conjectured that the peer-based recommendations associated with electronic commerce lead...
As much as the diverse and rich offer on e-commerce websites helps the users find what they need at ...
Here we describe a Description Logic (DL) based Inductive Logic Programming (ILP) algorithm for lear...
ABSTRACTAmong difficulties encountered by modern shopping recommenders is the long tail shape of sol...
A glut of sponsored information from the Internet makes consumers hard to make a purchase decision. ...
In Collaborative Filtering methods, tailored recommendations cannot be obtained when the user-item m...
In the age of information overload, customers are overwhelmed with the number of products available ...
AbstractIn this paper, we propose a new recommendation algorithm, which extends the idea of linkage ...
It is a truth universally acknowledged that e-commerce platform users in search of an item that best...
Embedding based product recommendations have gained popularity in recent years due to its ability to...
Related product recommendation (RPR) is pivotal to the success of any e-commerce service. In this pa...
A recommendation system assists users in finding items that are relevant to them. Existing recommend...
Understanding the relationships between items can improve the accuracy and interpretability of recom...
Collaborative Filtering (CF)-based recommendation methods suffer from (i) sparsity (have low user–it...
Retailers can take advantage of recommendation networks to drive product demand, write Zhijie Lin, K...
It has been conjectured that the peer-based recommendations associated with electronic commerce lead...
As much as the diverse and rich offer on e-commerce websites helps the users find what they need at ...
Here we describe a Description Logic (DL) based Inductive Logic Programming (ILP) algorithm for lear...
ABSTRACTAmong difficulties encountered by modern shopping recommenders is the long tail shape of sol...
A glut of sponsored information from the Internet makes consumers hard to make a purchase decision. ...
In Collaborative Filtering methods, tailored recommendations cannot be obtained when the user-item m...
In the age of information overload, customers are overwhelmed with the number of products available ...
AbstractIn this paper, we propose a new recommendation algorithm, which extends the idea of linkage ...
It is a truth universally acknowledged that e-commerce platform users in search of an item that best...