Visible to the public Cross Domain Regularization for Neural Ranking Models Using Adversarial Learning

TitleCross Domain Regularization for Neural Ranking Models Using Adversarial Learning
Publication TypeConference Paper
Year of Publication2018
AuthorsCohen, Daniel, Mitra, Bhaskar, Hofmann, Katja, Croft, W. Bruce
Conference NameThe 41st International ACM SIGIR Conference on Research & Development in Information Retrieval
PublisherACM
ISBN Number978-1-4503-5657-2
Keywordsadversarial learning, Deep Learning, Generative Adversarial Learning, information retrieval, Metrics, pubcrawl, Resiliency, Scalability
Abstract

Unlike traditional learning to rank models that depend on hand-crafted features, neural representation learning models learn higher level features for the ranking task by training on large datasets. Their ability to learn new features directly from the data, however, may come at a price. Without any special supervision, these models learn relationships that may hold only in the domain from which the training data is sampled, and generalize poorly to domains not observed during training. We study the effectiveness of adversarial learning as a cross domain regularizer in the context of the ranking task. We use an adversarial discriminator and train our neural ranking model on a small set of domains. The discriminator provides a negative feedback signal to discourage the model from learning domain specific representations. Our experiments show consistently better performance on held out domains in the presence of the adversarial discriminator--sometimes up to 30% on precision\$@1\$.

URLhttps://dl.acm.org/citation.cfm?doid=3209978.3210141
DOI10.1145/3209978.3210141
Citation Keycohen_cross_2018