Recent developments in neural information retrieval models have been promising, but a problem remains: human relevance judgments are expensive to produce, while neural models require a considerable amount of training data. In an attempt to fill this gap, we present an approach that---given a weak training set of pseudo-queries, documents, relevance information---filters the data to produce effective positive and negative query-document pairs. This allows large corpora to be used as neural IR model training data, while eliminating training examples that do not transfer well to relevance scoring. The filters include unsupervised ranking heuristics and a novel measure of interaction similarity. We evaluate our approach using a news corpus with...
Deep neural models revolutionized the research landscape in the Information Retrieval (IR) domain. N...
Traditional retrieval models such as BM25 or language models have been engineered based on search he...
After surpassing human performance in the fields of Computer Vision, Speech Recognition and NLP, dee...
Recent developments in neural information retrieval models have been promising, but a problem remain...
Recent developments of machine learning models, and in particular deep neural networks, have yielded...
Despite the impressive improvements achieved by unsupervised deep neural networks in computer vision...
An information retrieval (IR) system assists people in consuming huge amount of data, where the eval...
One challenge with neural ranking is the need for a large amount of manually-labeled relevance judgm...
Neural ranking models use shallow or deep neural networks to rank search results in response to a qu...
Neural networks with deep architectures have demonstrated significant performance improvements in co...
Neural ranking methods based on large transformer models have recently gained significant attention ...
The availability of massive data and computing power allowing for effective data driven neural appro...
In order to adopt deep learning for information retrieval, models are needed that can capture all re...
Most neural Information Retrieval (Neu-IR) models derive query-to-document ranking scores based on t...
A recent "third wave'' of neural network (NN) approaches now delivers state-of-the-art performance i...
Deep neural models revolutionized the research landscape in the Information Retrieval (IR) domain. N...
Traditional retrieval models such as BM25 or language models have been engineered based on search he...
After surpassing human performance in the fields of Computer Vision, Speech Recognition and NLP, dee...
Recent developments in neural information retrieval models have been promising, but a problem remain...
Recent developments of machine learning models, and in particular deep neural networks, have yielded...
Despite the impressive improvements achieved by unsupervised deep neural networks in computer vision...
An information retrieval (IR) system assists people in consuming huge amount of data, where the eval...
One challenge with neural ranking is the need for a large amount of manually-labeled relevance judgm...
Neural ranking models use shallow or deep neural networks to rank search results in response to a qu...
Neural networks with deep architectures have demonstrated significant performance improvements in co...
Neural ranking methods based on large transformer models have recently gained significant attention ...
The availability of massive data and computing power allowing for effective data driven neural appro...
In order to adopt deep learning for information retrieval, models are needed that can capture all re...
Most neural Information Retrieval (Neu-IR) models derive query-to-document ranking scores based on t...
A recent "third wave'' of neural network (NN) approaches now delivers state-of-the-art performance i...
Deep neural models revolutionized the research landscape in the Information Retrieval (IR) domain. N...
Traditional retrieval models such as BM25 or language models have been engineered based on search he...
After surpassing human performance in the fields of Computer Vision, Speech Recognition and NLP, dee...