DE eng

Search in the Catalogues and Directories

Page: 1 2
Hits 1 – 20 of 22

1
Filtering Tweets for Social Unrest ...
Mishler, Alan; Wonus, Kevin; Chambers, Wendy. - : Digital Repository at the University of Maryland, 2017
BASE
Show details
2
Filtering Tweets for Social Unrest
BASE
Show details
3
Data Cleaning for XML Electronic Dictionaries via Statistical Anomaly Detection ...
Bloodgood, Michael; Strauss, Benjamin. - : Digital Repository at the University of Maryland, 2016
BASE
Show details
4
Data Cleaning for XML Electronic Dictionaries via Statistical Anomaly Detection
BASE
Show details
5
Translation memory retrieval methods
Bloodgood, Michael; Strauss, Benjamin. - : Association for Computational Linguistics, 2014
Abstract: Translation Memory (TM) systems are one of the most widely used translation technologies. An important part of TM systems is the matching algorithm that determines what translations get retrieved from the bank of available translations to assist the human translator. Although detailed accounts of the matching algorithms used in commercial systems can’t be found in the literature, it is widely believed that edit distance algorithms are used. This paper investigates and evaluates the use of several matching algorithms, including the edit distance algorithm that is believed to be at the heart of most modern commercial TM systems. This paper presents results showing how well various matching algorithms correlate with human judgments of helpfulness (collected via crowdsourcing with Amazon’s Mechanical Turk). A new algorithm based on weighted n-gram precision that can be adjusted for translator length preferences consistently returns translations judged to be most helpful by translators for multiple domains and language pairs.
Keyword: Amazon Mechanical Turk; CAT tools; computational linguistics; computer science; computer-aided translation; computer-assisted translation; edit distance; fuzzy match; fuzzy match algorithms; fuzzy match score; fuzzy match score threshold; fuzzy match threshold; human language technology; information retrieval; match length preferences; matching algorithms; modified weighted n-gram precision; n-gram precision; natural language processing; percent match; statistical methods; translation match length preferences; translation match score threshold; translation memory retrieval methods; translation memory systems; translation technology; weighted n-gram precision; weighted percent match
URL: http://hdl.handle.net/1903/15528
BASE
Hide details
6
Analysis of Stopping Active Learning based on Stabilizing Predictions
Bloodgood, Michael; Grothendieck, John. - : Association for Computational Linguistics, 2013
BASE
Show details
7
Statistical Modality Tagging from Rule-based Annotations and Crowdsourcing
Prabhakaran, Vinodkumar; Bloodgood, Michael; Diab, Mona. - : Association for Computational Linguistics, 2012
BASE
Show details
8
Use of Modality and Negation in Semantically-Informed Syntactic MT
BASE
Show details
9
Detecting Structural Irregularity in Electronic Dictionaries Using Language Modeling ...
Rodrigues, Paul; Zajic, David; Doermann, David. - : Digital Repository at the University of Maryland, 2011
BASE
Show details
10
Detecting Structural Irregularity in Electronic Dictionaries Using Language Modeling
Bloodgood, Michael; Ye, Peng; Rodrigues, Paul. - : Trojina Institute for Applied Slovene Studies, 2011
BASE
Show details
11
Semantically-Informed Syntactic Machine Translation: A Tree-Grafting Approach ...
Baker, Kathryn; Bloodgood, Michael; Callison-Burch, Chris. - : Digital Repository at the University of Maryland, 2010
BASE
Show details
12
Semantically-Informed Syntactic Machine Translation: A Tree-Grafting Approach
BASE
Show details
13
Using Mechanical Turk to Build Machine Translation Evaluation Sets
Bloodgood, Michael; Callison-Burch, Chris. - : Association for Computational Linguistics, 2010
BASE
Show details
14
Bucking the Trend: Large-Scale Cost-Focused Active Learning for Statistical Machine Translation
Bloodgood, Michael; Callison-Burch, Chris. - : Association for Computational Linguistics, 2010
BASE
Show details
15
A Method for Stopping Active Learning Based on Stabilizing Predictions and the Need for User-Adjustable Stopping ...
Bloodgood, Michael; Vijay-Shanker, K. - : Digital Repository at the University of Maryland, 2009
BASE
Show details
16
Taking into Account the Differences between Actively and Passively Acquired Data: The Case of Active Learning with Support Vector Machines for Imbalanced Datasets ...
Bloodgood, Michael; Vijay-Shanker, K. - : Digital Repository at the University of Maryland, 2009
BASE
Show details
17
A Method for Stopping Active Learning Based on Stabilizing Predictions and the Need for User-Adjustable Stopping
Bloodgood, Michael; Vijay-Shanker, K. - : Association for Computational Linguistics, 2009
BASE
Show details
18
Taking into Account the Differences between Actively and Passively Acquired Data: The Case of Active Learning with Support Vector Machines for Imbalanced Datasets
Bloodgood, Michael; Vijay-Shanker, K. - : Association for Computational Linguistics, 2009
BASE
Show details
19
An Approach to Reducing Annotation Costs for BioNLP ...
Bloodgood, Michael; Vijay-Shanker, K. - : Digital Repository at the University of Maryland, 2008
BASE
Show details
20
An Approach to Reducing Annotation Costs for BioNLP
Bloodgood, Michael; Vijay-Shanker, K. - : Association for Computational Linguistics, 2008
BASE
Show details

Page: 1 2

Catalogues
0
0
0
0
0
0
0
Bibliographies
0
0
0
0
0
0
0
0
0
Linked Open Data catalogues
0
Online resources
0
0
0
0
Open access documents
22
0
0
0
0
© 2013 - 2024 Lin|gu|is|tik | Imprint | Privacy Policy | Datenschutzeinstellungen ändern