We study here a way to approximate information retrieval metrics through a softmax-based approximation of the rank indicator function. Indeed, this latter function is a key component in the design of information retrieval metrics, as well as in the design of the ranking and sorting functions. Obtaining a good approximation for it thus opens the door to differentiable approximations of many evaluation measures that can in turn be used in neural end-to-end approaches. We first prove theoretically that the approximations proposed are of good quality, prior to validate them experimentally on both learning to rank and text-based information retrieval tasks
Abstract—Learning to rank from examples is an important task in modern Information Retrieval systems...
One shortfall of existing machine learning (ML) methods when ap-plied to information retrieval (IR) ...
Making recommendations by learning to rank is becoming an increasingly studied area. Approaches that...
Ranking is an essential component for a number of tasks, such as information retrieval and collabora...
Ranking is an essential component for a number of tasks, such as information retrieval and collabora...
The paper is concerned with learning to rank, which is to construct a model or a function for rankin...
Learning to Rank is the application of Machine Learning in order to create and optimize ranking func...
The goal in Learning to Rank (LETOR) is to learn to order a novel set of items, given training data ...
Information retrieval (IR) systems traditionally aim to maximize metrics built on rankings, such as ...
In this paper we address the issue of learning to rank for document retrieval. In the task, a model ...
Abstract. Learning a good ranking function plays a key role for many applications including the task...
Due to the fast growth of the Web and the difficulties in finding desired information, efficient and...
Learning to rank is an emerging learning task that opens up a diverse set of applications. However, ...
As information retrieval researchers, we not only develop algorithmic solutions to hard problems, bu...
The quality measures used in information retrieval are particularly difficult to op-timize directly,...
Abstract—Learning to rank from examples is an important task in modern Information Retrieval systems...
One shortfall of existing machine learning (ML) methods when ap-plied to information retrieval (IR) ...
Making recommendations by learning to rank is becoming an increasingly studied area. Approaches that...
Ranking is an essential component for a number of tasks, such as information retrieval and collabora...
Ranking is an essential component for a number of tasks, such as information retrieval and collabora...
The paper is concerned with learning to rank, which is to construct a model or a function for rankin...
Learning to Rank is the application of Machine Learning in order to create and optimize ranking func...
The goal in Learning to Rank (LETOR) is to learn to order a novel set of items, given training data ...
Information retrieval (IR) systems traditionally aim to maximize metrics built on rankings, such as ...
In this paper we address the issue of learning to rank for document retrieval. In the task, a model ...
Abstract. Learning a good ranking function plays a key role for many applications including the task...
Due to the fast growth of the Web and the difficulties in finding desired information, efficient and...
Learning to rank is an emerging learning task that opens up a diverse set of applications. However, ...
As information retrieval researchers, we not only develop algorithmic solutions to hard problems, bu...
The quality measures used in information retrieval are particularly difficult to op-timize directly,...
Abstract—Learning to rank from examples is an important task in modern Information Retrieval systems...
One shortfall of existing machine learning (ML) methods when ap-plied to information retrieval (IR) ...
Making recommendations by learning to rank is becoming an increasingly studied area. Approaches that...