LEarning TO Rank (LETOR) is a research area in the field of Information Retrieval (IR) where machine learning models are employed to rank a set of items. In the past few years, neural LETOR approaches have become a competitive alternative to traditional ones like LambdaMART. However, neural architectures performance grew proportionally to their complexity and size. This can be an obstacle for their adoption in large-scale search systems where a model size impacts latency and update time. For this reason, we propose an architecture-agnostic approach based on a neural LETOR model to reduce the size of its input by up to 60% without affecting the system performance. This approach also allows to reduce a LETOR model complexity and, therefore, i...
Abstract — In this paper we use the maximization of Onicescu’s informational energy as a criteria fo...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
Relevance ranking consists in sorting a set of objects with respect to a given criterion. However, i...
The availability of massive data and computing power allowing for effective data driven neural appro...
As information retrieval researchers, we not only develop algorithmic solutions to hard problems, bu...
An emerging research area named Learning-to-Rank (LtR) has shown that effective solutions to the ran...
Neural ranking models use shallow or deep neural networks to rank search results in response to a qu...
The recent availability of increasingly powerful hardware has caused a shift from traditional inform...
Neural approaches that use pre-trained language models are effective at various ranking tasks, such ...
Due to the growing amount of available information, learning to rank has become an important researc...
Despite the impressive improvements achieved by unsupervised deep neural networks in computer vision...
Industrial search and recommendation systems mostly follow the classic multi-stage information retri...
Complex machine learning models are now an integral part of modern, large-scale retrieval systems. H...
Ranking is an essential part of information retrieval(IR) tasks such as Web search. Nowadays there a...
Perhaps the applied nature of information retrieval research goes some way to explain the community'...
Abstract — In this paper we use the maximization of Onicescu’s informational energy as a criteria fo...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
Relevance ranking consists in sorting a set of objects with respect to a given criterion. However, i...
The availability of massive data and computing power allowing for effective data driven neural appro...
As information retrieval researchers, we not only develop algorithmic solutions to hard problems, bu...
An emerging research area named Learning-to-Rank (LtR) has shown that effective solutions to the ran...
Neural ranking models use shallow or deep neural networks to rank search results in response to a qu...
The recent availability of increasingly powerful hardware has caused a shift from traditional inform...
Neural approaches that use pre-trained language models are effective at various ranking tasks, such ...
Due to the growing amount of available information, learning to rank has become an important researc...
Despite the impressive improvements achieved by unsupervised deep neural networks in computer vision...
Industrial search and recommendation systems mostly follow the classic multi-stage information retri...
Complex machine learning models are now an integral part of modern, large-scale retrieval systems. H...
Ranking is an essential part of information retrieval(IR) tasks such as Web search. Nowadays there a...
Perhaps the applied nature of information retrieval research goes some way to explain the community'...
Abstract — In this paper we use the maximization of Onicescu’s informational energy as a criteria fo...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
Relevance ranking consists in sorting a set of objects with respect to a given criterion. However, i...