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1 mbiguity and variability of the terms in the dictionary.
2 esign and the inclusion of data from the HLA Dictionary.
3 based on a general word dictionary and an NE dictionary.
4  learning a string similarity measure from a dictionary.
5  for the construction of a biomedical symbol dictionary.
6 ictionary for Regulatory Activities (MedDRA) dictionary.
7  Linguistic Inquiry and Word Count (LIWC-22) dictionary.
8 f 99.64% for complete and 95.87% for reduced dictionary.
9 s meeting criteria for a minimum viable data dictionary.
10 y noisy images by comparing with a reference dictionary.
11  natural image processing based on a learned dictionary.
12 ise patch-based approach and an MRI-CT atlas dictionary.
13 eby adding these words to the brain's visual dictionary.
14 e parameters inferred with a high-resolution dictionary.
15  has good performance in recovering molecule dictionaries.
16 that is centered around and exploits the Bio-Dictionary, a collection of amino acid patterns that com
17   To address this gap, we created the Immune Dictionary, a compendium of single-cell transcriptomic p
18 e annotation method that is based on the Bio-Dictionary, a comprehensive collection of amino acid pat
19      To fill this gap, we developed a threat dictionary, a computationally derived linguistic tool th
20   We evaluated our algorithm using two large dictionaries: a human gene/protein name dictionary built
21 onality of BioFt by allowing the creation of dictionaries according to different criteria.
22                    Of the 135 n-grams in the dictionary, an earlier written instance was identified i
23  performed much better than English-language dictionary analysis (r = 0.20 to 0.30) at detecting psyc
24 ed as well as the XML representations of PDB dictionaries and data files.
25 ished between 1941 and 2019, and searches of dictionaries and grey literature, as well as hand-search
26         However, sparse availability of data dictionaries and lack of adherence to standard data elem
27 ents that complement current enzyme database dictionaries and provide bridgeheads for the annotation
28                                          The dictionaries and the annotation datasets associated with
29        Additional documentation, such as the dictionaries and the reference sets, are available at th
30 Speech (POS) tagging based on a general word dictionary and an NE dictionary.
31                      Using a predefined data dictionary and analysis plan, variables ranging from pat
32                               The expression dictionary and barcoding matrix described here are immed
33 rminologies are searched from the biological dictionary and biology websites.
34 pproach on average by 3.48% for the complete dictionary and by 5.82% for the reduced one.
35 al cytokine stimulation data from the Immune Dictionary and cell-level scores are computed using a mo
36 n grouping coding, which reduces the size of dictionary and enables lossless compression without disr
37 noTagger, a hybrid method that combines both dictionary and machine learning-based methods to recogni
38                                 Finally, the dictionary and machine learning-based prediction results
39 cently released versions of the PDB Exchange dictionary and the PDB archival data files in XML format
40          The correspondences between the PDB dictionary and the XML schema metadata are described as
41 ervices (EVS) provide controlled vocabulary, dictionary and thesaurus services.
42 DLINE document set, result in a high quality dictionary and toolset to disambiguate abbreviation symb
43 eport, 4 (6%) had incomplete or missing data dictionaries, and 20 (29%) were missing anonymization or
44 These laws are assembled into class-specific dictionaries, and new series are projected onto them to
45 ng BILA, a dataset including 1,574 bilingual dictionaries, and showing that it confirms 147 out of 16
46 atted files, parsing them into usable Python dictionary- and list-based data structures, making acces
47  novel system that combines a pre-processing dictionary- and rule-based filtering step with several s
48       NLProt is a novel system that combines dictionary- and rule-based filtering with several suppor
49      To validate this hypothesis, we built a dictionary- and rule-based system to mine Medline for re
50 inimum and maximum values stated in the data dictionary; and more.
51     Our work proves the applicability of the dictionary approach to understanding the structure of a
52            We have therefore taken a "domain dictionary" approach to characterize representatives for
53 putational cost discourages its use when the dictionaries are large or when real time processing is r
54 a large HMM that recognizes phrases from the dictionary, as well as variations of these phrases.
55 om various multimodal sources and constructs dictionaries at different learning levels, which enables
56 assified as "fairly accessible" and had data dictionaries available.
57 9% and recall = 70.5%) compared to a popular dictionary based approach (precision = 97.5% and recall
58                              MetaMap and the dictionary based approach are available through the What
59               We propose and develop a novel dictionary based motif finding algorithm, which we call
60  coloring are used to construct an emotional dictionary based on the movie domain; and the TF-IDF alg
61 y Definition Language (DDL) and an extensive dictionary based on this DDL for describing macromolecul
62 propose to go back to the basics and adopt a dictionary-based approach that enables both an immediate
63                               We developed a dictionary-based approach using a pre-built large collec
64                                      The Bio-Dictionary-based Gene Finder was used to reassess the co
65                                       We use dictionary-based information extraction to identify medi
66            The library provides an intuitive dictionary-based interface with which Python programs ca
67 us works that address the task typically use dictionary-based matching methods, which can achieve hig
68                             An over-complete dictionary-based model was learned for the image-specifi
69 xing performance by exploiting: (i) a set of dictionary-based models for object morphologies learned
70 erm ambiguity and variability are very high, dictionary-based Named Entity Recognition (NER) is not a
71 examples are provided in the applications of dictionary-based signal recovery, CT imaging, and arbitr
72                                        Three dictionary-based systems (MetaMap, NCBO Annotator, and C
73 Therefore, we developed ENVIRONMENTS, a fast dictionary-based tagger capable of identifying Environme
74 fitting methods (nonlinear-least-squares and dictionary-based) by leveraging fully connected neural n
75 Using hidden Markov models, we established a dictionary between activity patterns and actions.
76                       This approach yields a dictionary between logical states in the bulk and the cr
77                     The large and consistent dictionaries built this way increase the accuracy of Kal
78 arge dictionaries: a human gene/protein name dictionary built from BioThesaurus and a disease name di
79 y built from BioThesaurus and a disease name dictionary built from UMLS.
80 position technique based on an over-complete dictionary called matching pursuit (MP), and show that i
81 how that computational analyses of bilingual dictionaries can be used to test claims about lexical el
82   Detecting such comprehensive motor control dictionaries can improve our understanding of skilled mo
83 rial was performed using the data sets, data dictionary, case report file, and statistical analysis p
84                       The Chemical Component Dictionary (CCD) is a chemical reference data resource t
85 ATH and Dali) to generate a consensus domain dictionary (CDD).
86 dels were examined, differing in the type of dictionary components (word length, step, context) as we
87      The next stage focused on exploring the dictionary components and attempting to optimize it, emp
88 s a tool, dbGaPCheckup ensures that the data dictionary contains all fields required by dbGaP, and ad
89                      OREMPdb is the semantic dictionary created as a result, which is made of 7360 sp
90 op" records represented as individual Python dictionary data structures).
91                This realization led to a new Dictionary Definition Language (DDL) and an extensive di
92  folk psychology, it is useful to re-examine dictionary definitions of 'habit'.
93        ZFIN provides an anatomical atlas and dictionary, developmental staging criteria, research met
94 del generalizes by learning a compact set of dictionary elements for image distributions typically en
95                             To associate the dictionary elements with biological properties of the co
96  long-range interaction patterns (long-range dictionary elements).
97 mportantly, it enables the interpretation of dictionary elements, which serve as cluster representati
98 y encoded using neuron activities and stored dictionary elements.
99 UniSpec learned with a peptide fragmentation dictionary encompassing 7919 fragment peaks.
100 he folds in the testing set, suggesting that dictionary entries reflect general features of protein s
101              In simulation at SNR 60 dB, the dictionary estimate had a mean percent error of 0.4-1.0%
102 r bioinformatics studies mining these domain dictionaries for globular protein properties.
103        This approach develops a more refined dictionary for DNA sequences, utilizes it for BERT pre-t
104 alian Phenotype Ontology, and the Anatomical Dictionary for Mouse Development and the Adult Anatomy.
105 g resistance mutations, provides a reference dictionary for mutations that are sensitized to specific
106  recorded and coded according to the Medical Dictionary for Regulatory Activities (MedDRA) and risk f
107  and their normalization through the Medical Dictionary for Regulatory Activities (MedDRA) dictionary
108                                  The Medical Dictionary for Regulatory Activities (MedDRA) is a compr
109 g the retinal disorders Standardized Medical Dictionary for Regulatory Activities (MedDRA) Query, whi
110 onstructed based on the terms in the Medical Dictionary for Regulatory Activities (MedDRA) that appea
111        In this study, we applied the Medical Dictionary for Regulatory Activities (MedDRA) to drug la
112  safety assessments using a standard Medical Dictionary for Regulatory Activities basket.
113 were categorized with the use of the Medical Dictionary for Regulatory Activities classification.
114                       The use of the Medical Dictionary for Regulatory Activities nomenclature for AE
115 se outcomes, were directly mapped to Medical Dictionary for Regulatory Activities preferred terms in
116 ts' Collaboration were identified by Medical Dictionary for Regulatory Activities preferred terms.
117 ted, the event was categorized using Medical Dictionary for Regulatory Activities primary system orga
118                         Standardized Medical Dictionary for Regulatory Activities queries and extende
119  adverse event reports, Standardized Medical Dictionary for Regulatory Activities queries for events
120 ences of cardiac events overall (the Medical Dictionary for Regulatory Activities system organ class)
121 Reports were classified according to Medical Dictionary for Regulatory Activities terminology.
122 verse events, which were coded using Medical Dictionary for Regulatory Activities terminology.
123 of TKI adverse effects using uniform Medical Dictionary for Regulatory Activities terms and comprehen
124 tion-related adverse events from the Medical Dictionary for Regulatory Activities toxic/septic shock
125 With use of specified terms from the Medical Dictionary for Regulatory Activities we identified pneum
126 r fracture sites, defined by MedDRA (Medical Dictionary for Regulatory Activities).
127  and infestations (defined using the Medical Dictionary for Regulatory Activities, version 21.0), mos
128          We classified AEs using the Medical Dictionary for Regulatory Activities.
129  within VAERS using a combination of Medical Dictionary for Regulatory Activity queries and Preferred
130 events identified via a standardized Medical Dictionary for Regulatory Archives HF query.
131 t text was performed using the Valence Aware Dictionary for sEntiment Reasoning (VADER), a validated
132 hips have high accuracy and provide a simple dictionary for the quantitative conversion of experiment
133 rative query operations over a large indexed dictionary, for instance, from large genome collections
134                                 Reducing the dictionary from 1024 to 145 changed BACC to 96.49% and t
135 amework for building an English-Chinese term dictionary from discharge summaries in the two languages
136 nterest to chemists directly as it defines a dictionary from electronic structure to spin Hamiltonian
137 ovel methodology for the extraction of k-mer dictionaries, from multiple sets of biological sequences
138  An additional key development is the use of dictionary functions derived from noise-corrupted invers
139                                              Dictionaries generated using the training set had high c
140                                          Our dictionary generates new hypotheses for cytokine functio
141 s of biological sequences, in terms of k-mer dictionaries, has a well established role in genomic and
142                                              Dictionary HMMs are a technique in which a dictionary is
143 ding to the widely-used F-measure, while the dictionary HMMs performed the best at finding entities t
144                                              Dictionary HMMs were implemented in Java.
145  two new methods for this task: semiCRFs and dictionary HMMs.
146              A cell-type-centric view of the dictionary identified more than 66 cytokine-driven cellu
147 it existing and additional Named Entity (NE) dictionaries in statistical NER.
148 uristic rules, which enables us to look up a dictionary in a constant time regardless of its size.
149 overing a list of normalization rules from a dictionary in a fully automated manner.
150 ds (CRFs) that enables more effective use of dictionary information as features.
151                           Through the use of dictionary information, one can also associate the conta
152 ion of these XML files is driven by the data dictionary infrastructure in use at the PDB.
153                              The Dali Domain Dictionary is a numerical taxonomy of all known structur
154    In general, each data element in the data dictionary is associated with a third party controlled v
155                             We show that the dictionary is compact and descriptive, capable of descri
156   Dictionary HMMs are a technique in which a dictionary is converted to a large HMM that recognizes p
157                                          The dictionary is used for the resolution of abbreviations o
158         Presumably, addition of NEs to an NE dictionary leads to better performance.
159                            By reconstructing dictionaries learned at different levels, we integrate b
160                We call this method MOLecular Dictionary Learning ( MOLDL: ).
161                                              Dictionary learning (DL), implemented via matrix factori
162 el DL algorithm called online convex network dictionary learning (online cvxNDL).
163 ependent component analysis (ICA) and sparse dictionary learning (sDL).
164                                      Using a dictionary learning algorithm the first step estimates t
165 enhancement framework using a detailed-based dictionary learning and camera response model (CRM).
166                 Moreover, we demonstrate how dictionary learning can be combined with sketching techn
167                           Here, we present a dictionary learning method that deconvolves spectra of d
168  We formalize this hypothesis using a sparse dictionary learning method, which we use to extract moto
169                             Traditional deep dictionary learning methods for texture recognition ofte
170                              Unlike standard dictionary learning methods which assume Gaussian-distri
171 l method of scRNA-seq clustering, named deep dictionary learning using k-means clustering cost (DDLK)
172                                              Dictionary learning will effectively address several enh
173                                  It combines dictionary learning with edge-aware filter-based detail
174                    Recent advances in sparse dictionary learning, such as the sparse identification o
175 then refines the estimation via novel shared dictionary learning.
176                   In addition, we found that dictionary look-up already provides competitive results
177  outperforms existing similarity measures in dictionary look-up tasks.
178 ed it to MMTx, MGrep, Concept Mapper, cTAKES Dictionary Lookup Annotator, and cTAKES Fast Dictionary
179 Dictionary Lookup Annotator, and cTAKES Fast Dictionary Lookup Annotator.
180  for unsupervised representation learning by dictionary lookup.
181                                     In vivo, dictionary matching and curve fitting showed no statisti
182 study establishes the feasibility of using a dictionary matching approach as a new and faster way of
183                                      Here, a dictionary matching approach is proposed as an alternati
184                            Curve fitting and dictionary matching were applied to simulated data using
185                               As such their "dictionary" may not follow Zipf's law (a power law) whic
186                                 In vivo, the dictionary method performed over 140-fold faster than cu
187  faster than the nonlinear least squares and dictionary methods, respectively.
188                             On one hand, the dictionary model specifies a probability for the entire
189 er uses both regular expression patterns and dictionaries of gene symbols and names compiled from mul
190 ors have successfully been parsed into small dictionaries of stereotyped behavioral modes, studies of
191                                   We curated dictionaries of terms, collected articles of interest, a
192 onal language was measured using a validated dictionary of 139 science-specific terms.
193 so, we extracted time series for a validated dictionary of 19 absolutist words, from which the ATI wa
194  abstracts and linguistic methods to build a dictionary of abbreviation/sense pairs.
195 arsimonious governing equations from a large dictionary of basis functions.
196 ed on the Gellus corpus and supported with a dictionary of cell line names.
197 cell abundance by integrating a gene pattern dictionary of copy number alterations and expression cha
198          In this paper, we show that using a dictionary of diverse kernels with complex shapes learne
199                          It builds a dynamic dictionary of encoded representation keys with a queue a
200                                   The Oxford Dictionary of English defines habit as "a settled or reg
201 anguage for gene regulation and to compile a dictionary of enhancers which form its words.
202   These results expand our conception of the dictionary of features encoded in the cortex, and the ap
203                   Our approach is based on a dictionary of haplotypes that is used to efficiently dis
204  sparse representation of the DNA pools in a dictionary of haplotypes.
205         We also report an update of the CATH Dictionary of homologous structures (CATH-DHS) which now
206 ies has been made available through the CATH Dictionary of Homologous Structures (DHS).
207                                  An improved Dictionary of Homologous superfamilies (DHS) containing
208                                     The CATH Dictionary of Homologous Superfamilies (DHS), which cont
209 ion resources (PDBsum, CATH database and the Dictionary of Homologous Superfamilies).
210                               The associated Dictionary of Homologous Superfamilies, which provides m
211 LST method to learn directly from the data a dictionary of local, or small-scale, geophysical feature
212 s the objective of creating an interpretable dictionary of long-range interaction patterns that accur
213  as specified in the National Health Service dictionary of medicines and devices.
214 gical Interest (ChEBI) is a freely available dictionary of molecular entities focused on 'small' chem
215  and a statistical model which consists of a dictionary of motifs and a grammar specifying their usag
216  set of DNA sequences into the most probable dictionary of motifs or words.
217                                We compiled a dictionary of pathogen genetic variation, including sero
218  a useful adjunct to the widely used PROSITE dictionary of patterns.
219 ars will see the compilation of a definitive dictionary of protein families and their related functio
220 S) no longer serves the community, while the Dictionary of Protein Secondary Structure (DSSP) annotat
221 navigating larval zebrafish, BASS extracts a dictionary of remarkably long, non-Markovian sequences c
222 t this representation can be used to build a dictionary of repetitive behavioral motifs in an unbiase
223           The results also indicate that the dictionary of secondary structure of proteins (DSSP) alg
224 -supporting reads and reads matching a large dictionary of sequence motifs.
225 nostic resource that complements the PROSITE dictionary of sites and patterns.
226 omated methods to systematically construct a dictionary of supersecondary structures that can be used
227 ng and comparing 2 NER models using a custom dictionary of terms, including lesion type, location, si
228 )F-paraGEST data set, we generated a de novo dictionary of ~2500 combinations of Ln(3+) mixtures, res
229                                Moreover, the dictionary offers predictive insights on US society's sh
230 regression algorithm that utilizes a learned dictionary optimized for sparse inference on a D-Wave qu
231  high-order correlations between them into a dictionary optimized for sparse reconstruction.
232 e been influenced by the compensatory use of dictionaries or thesauri, let alone by later editorial i
233 ults from our study indicate that the visual dictionary, or visual image pattern, obtained from unsup
234 defined by their relations to other words in dictionaries, our understanding of word meaning presumab
235 ng for large sequence files, JSON and Python dictionary output, and built-in sequence filtering.
236                                         This dictionary overcomes important limitations of previous e
237 o select potential phases for Hough-based or dictionary pattern matching and is not well suited for p
238 rd of the year in 2016 by the Oxford English Dictionary, "post-truth" refers to "relating to or denot
239 base and its new supplement, the Dali Domain Dictionary, present a continuously updated classificatio
240 g of the subject phenotype data set and data dictionary prior to dbGaP submission.
241 ropose a paradigmatic formalization of k-mer dictionaries, providing two different and complementary
242          To address this issue, we propose a dictionary-reconstruction-based deep learning approach b
243               A cytokine-centric view of the dictionary revealed that most cytokines induce highly ce
244             Existing approaches are based on dictionaries, rules and machine-learning.
245              Traditional NER methods rely on dictionaries, rules, or curated corpora, which may not a
246           The Simple and Robust Abbreviation Dictionary (SaRAD) provides an easy to implement, high p
247  tooling and fully leveraging available data dictionary schemas.
248 cent versions of three common protein domain dictionaries (SCOP, CATH and Dali) to generate a consens
249                 In this study, Valence Aware Dictionary sEntiment Reasoner (VADER) and word frequency
250                                Valence Aware Dictionary sEntiment Reasoner produced Negative, Neutral
251 on/sense pairs, previously extracted for the dictionary set-up.
252                                    Different dictionary sets can be trained and stored in the same sy
253  using several large-scale gene/protein name dictionaries showed that the logistic regression-based s
254      We describe the first implementation of dictionary-style models to the study of transcription fa
255 approaches utilize knowledge sources such as dictionaries, taxonomies, and semantic networks, and inc
256                      Details of the DDL, the dictionaries that have been developed, and software for
257 tration Database (TargetDB), organizing data dictionaries that will define the specification for the
258 set of standard relational tables and a data dictionary that form an initial ontology for proteomic p
259 ere released publicly after we built the Bio-Dictionary that is used in our experiments.
260 ancements to ZFIN include: (i) an anatomical dictionary that provides a controlled vocabulary of anat
261 ly characterised in the over-complete detail dictionary that was learned from many training detail pa
262 n Avro and encapsulates a data model, a data dictionary, the data itself, and pointers to third party
263 finding entities that actually appear in the dictionary-the measure of most interest in our intended
264 ariables match between the data set and data dictionary; there are no duplicated variable names or de
265 ample learning, to train these reconstructed dictionaries, thereby improving feature learning and tra
266 ipeline utilizing the LungMAP CellCards as a dictionary to consolidate single-cell transcriptomic dat
267 unction to reorder the variables in the data dictionary to match the order listed in the data set).
268 r, we propose a novel concept, the "K-string dictionary", to solve this high-dimensional problem.
269    Using three language analysis techniques (dictionary, topic, and word embeddings), we found that t
270 is validated using data from both the Immune Dictionary via stratified cross-validation and external
271                                          The dictionary was constructed by aligning representative st
272                                         This dictionary was later used for computational pattern reco
273                                  The curated dictionaries we leverage to detect these trends were for
274 ual's behavior and the elements in the motif dictionary, we create a fingerprint that can be used to
275                                Based on this dictionary, we developed companion software, Immune Resp
276 ltiomic dataset constitutes an element in a 'dictionary', which is used to reconstruct unimodal datas
277 , NLP relied on hard-coded grammar rules and dictionaries, which were labor-intensive and lacked flex
278         Scupa leverages data from the Immune Dictionary, which characterizes cytokine-driven polariza
279 in result is a quantitative statics-dynamics dictionary, which could allow the experimental explorati
280  concepts and synonyms in HPO to construct a dictionary, which is then used to automatically build a
281                              We have built a dictionary with 1,200 words for the 6, 000 upstream regu
282 creased to 78.72 after enriching the tagging dictionary with test set protein names.
283 aring in the training data to the POS tagger dictionary without any model retraining.
284 e the NER performance by adding NEs to an NE dictionary without retraining.
285 utomatic methods such as FSSP or Dali Domain Dictionary, yield divergent classifications, for reasons

 
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