[PDF] Top 20 A Supervised Learning Approach to Automatic Synonym Identification Based on Distributional Features
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A Supervised Learning Approach to Automatic Synonym Identification Based on Distributional Features
... novel approach to synonym iden- tification based on supervised learning and distributional features, which correspond to the commonality of individual context types shared ... See full document
6
Supervised Learning of Automatic Pyramid for Optimization Based Multi Document Summarization
... oriented features could be developed, e.g., fea- tures based on propositions rather than sentences or n-grams, or word embedding features encoding a large amount of distributional semantic ... See full document
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Extending WordNet with Fine Grained Collocational Information via Supervised Distributional Learning
... an automatic enrichment of the WordNet lexical database with fine- grained collocational information, yielding a resource called ColWordNet ...Our approach is based on the intuition that there is a ... See full document
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Abbreviation Detection in Vietnamese Clinical Texts
... abbreviation identification task on clinical notes in a practical context where a few clinical notes have been labeled while so many clinical notes need to be ...semi-supervised learning ... See full document
17
A Supervised Machine Learning Approach for Event-Event Relation Identification
... propose supervised machine learning approaches to solve the problems of all the three tasks, ...relation identification is considered as a pair-wise classification problem, where each event/time, ... See full document
8
CogALex V Shared Task: HsH Supervised – Supervised similarity learning using entry wise product of context vectors
... novel approach which is learning an SVM model by taking the distributional features as an input, that were constructed by addition of the context vectors of both ...recently, ... See full document
5
A Combined Pattern-based and Distributional Approach for Automatic Hypernym Detection in Dutch.
... the identification of hyponymy relations in English ...pattern-based approach for English (Cederberg and Widdows, 2003; Pantel and Ravichandran, 2004; Riloff and Shepherd, 1997; Roark and Charniak, ... See full document
8
Automatic Risk Identification in Software Projects: an Approach based on Inductive Learning
... inductive learning algo- rithm needs to receive as input a set of examples of the concept that it should ...of learning is called supervised ...the learning algorithm can build a hypothesis ... See full document
5
Graph based Clustering of Synonym Senses for German Particle Verbs
... the automatic in- duction of synonym paraphrases for the empirically challenging class of German particle ...clustering approach for word sense discrimination into an existing para- phrase extraction ... See full document
6
Learning Thesaurus Relations from Distributional Features
... Nevertheless, supervised methods have not been very popular in this ...a supervised method for feature selec- ...The approach of Turney (2014) also is based on supervised ... See full document
5
Supervised Learning Approach for Flower Images using Color, Shape and Texture Features
... system based on digital image processing takes the input image which is flower image taken from ...system based on image processing techniques and ...was based on partial data that include all ... See full document
7
Structuring E Commerce Inventory
... and learning- based approaches. Rule-based systems (Castano and de Antonellis, 1999; Milo and Zohar, 1998; ...contrast learning based approaches learn a similar- ity metric based ... See full document
10
Selection of Time-Domain Features for Fall Detection Based on Supervised Learning
... There are two classes in this classification problem: fall events and non-fall actions. The non-fall actions include daily activities, such as standing, walking, ascending stairs, descending stairs, travelling in a car, ... See full document
6
<p>An automatic diagnostic system based on deep learning, to diagnose hyperlipidemia</p>
... deep learning model for timely and accurate diagnosis of each human physiological parameter ’ s ...expanding learning algorithm is to diagnose hyperlipidemia by using human hematology parameters and human ... See full document
9
ADAPTIVE COLOR FILTER ARRAY INTERPOLATION ALGORITHM BASED ON HUE TRANSITION AND EDGE DIRECTION
... mining approach to discover the useful decision rules automatically from the breast cancer ...GA based approach, the significant predictors with the corresponding equality/inequality and threshold ... See full document
7
Compound Embedding Features for Semi supervised Learning
... pound features on NER is that they made linear models better separate named entities (NEs) and non-NEs, which are more difficult to be linearly separated when embeddings are directly used as ...this. Based ... See full document
6
Semi automatic Annotation of Chinese Word Structure
... the E-step of the EM algorithm. Since the EM algorithm runs on GMM, from now on, POS fin- gerprint features represent the words instead. The following points may explain why it can improve the performance: (1) ... See full document
9
Retrieval Effectiveness of News Search Engines: A Theoretical Framework
... optimize through minimization of measure-specific loss, more specifically the mean average precision (MAP).The Coordinate Ascent suffer from getting stuck in local minimas, when searching for the global minima of the ... See full document
7
Finding Synonyms Using Automatic Word Alignment and Measures of Distributional Similarity
... their approach such as starting from a bilingual dictionary for acquiring the translational context versus using automatic word alignments from a large multilingual corpus ... See full document
8
A Prototype Multiview Approach for Reduction of False alarm rate in Network Intrusion Detection System
... 1. Disagreement-based semi-supervised learning. For our algorithm, each classifier h is first trained on the original labeled data. Ensembles H are then established by means of all classifiers except ... See full document
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