Search Results for author: Eric Ringger

Found 13 papers, 1 papers with code

Out-Of-Bag Anomaly Detection

no code implementations20 Sep 2020 Egor Klevak, Sangdi Lin, Andy Martin, Ondrej Linda, Eric Ringger

Data anomalies are ubiquitous in real world datasets, and can have an adverse impact on machine learning (ML) systems, such as automated home valuation.

Anomaly Detection

Match-Tensor: a Deep Relevance Model for Search

1 code implementation26 Jan 2017 Aaron Jaech, Hetunandan Kamisetty, Eric Ringger, Charlie Clarke

The architecture of the Match-Tensor model simultaneously accounts for both local relevance matching and global topicality signals allowing for a rich interplay between them when computing the relevance of a document to a query.

Feature Engineering Learning-To-Rank

Semantic Annotation Aggregation with Conditional Crowdsourcing Models and Word Embeddings

no code implementations COLING 2016 Paul Felt, Eric Ringger, Kevin Seppi

In modern text annotation projects, crowdsourced annotations are often aggregated using item response models or by majority vote.

text annotation Word Embeddings

Using Transfer Learning to Assist Exploratory Corpus Annotation

no code implementations LREC 2014 Paul Felt, Eric Ringger, Kevin Seppi, Kristian Heal

We describe an under-studied problem in language resource management: that of providing automatic assistance to annotators working in exploratory settings.

Management Part-Of-Speech Tagging +1

Evaluating Lemmatization Models for Machine-Assisted Corpus-Dictionary Linkage

no code implementations LREC 2014 Kevin Black, Eric Ringger, Paul Felt, Kevin Seppi, Kristian Heal, Deryle Lonsdale

The task of corpus-dictionary linkage (CDL) is to annotate each word in a corpus with a link to an appropriate dictionary entry that documents the sense and usage of the word.

Lemmatization Morphological Analysis +2

Momresp: A Bayesian Model for Multi-Annotator Document Labeling

no code implementations LREC 2014 Paul Felt, Robbie Haertel, Eric Ringger, Kevin Seppi

We introduce MomResp, a model that incorporates information from both natural data clusters as well as annotations from multiple annotators to infer ground-truth labels and annotator reliability for the document classification task.

Document Classification

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