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Wordify answers for dance
Wordify answers for dance













  1. Wordify answers for dance manual#
  2. Wordify answers for dance professional#

It is a microframework designed to get started quickly and easily, with the ability to scale up to complex applications. It provides you with tools, libraries, and technologies that allow you to build a web service. The Flask app: Flask is a simple, lightweight WSGI* web application framework. This web-app is composed by 3 core components: But the good news is we can tools that take care of them. One will have to carry out the following tasks: (i) handle static files if present, (ii) handle https connections, (iii) recover from crashes, (iv) make sure your application can scale up to serve multiple requests. Imagine hosting or deploying multiple web applications in production. We will discuss in detail issues pertaining to three different problems, namely, document representation, classifier construction, and classifier evaluation.This will spawn a container, start serving the flask app at localhost:8787. This survey discusses the main approaches to text categorization that fall within the machine learning paradigm.

Wordify answers for dance manual#

The advantages of this approach over the knowledge engineering approach (consisting in the manual definition of a classifier by domain experts) are a very good effectiveness, considerable savings in terms of expert labor power, and straightforward portability to different domains. In the research community the dominant approach to this problem is based on machine learning techniques: a general inductive process automatically builds a classifier by learning, from a set of preclassified documents, the characteristics of the categories. We found that enhanced GloVe outperformed GloVe with a relative improvement of 25% in the F-score.read more read lessĪbstract: The automated categorization (or classification) of texts into predefined categories has witnessed a booming interest in the last 10 years, due to the increased availability of documents in digital form and the ensuing need to organize them. Given a seed term selected from a concept in the ontology, we measured our algorithms' ability to automatically extract synonyms for those terms that appeared in the ground truth concept. We used the WordNet ontology to expand the healthcare corpus by including synonyms, hyponyms, and hypernyms for each layman term occurrence in the corpus. Our approach was evaluated used healthcare text downloaded from, a healthcare social media platform using two standard laymen vocabularies, OAC CHV, and MedlinePlus. Furthermore, the enhanced GloVe showed a statistical significance over the two ground truth datasets with P Conclusions This paper presents an automatic approach to enrich consumer health vocabularies using the GloVe word embeddings and an auxiliary lexical source, WordNet. Furthermore, our enhanced GloVe approach outperformed basic GloVe with an average F-score of 61%, a relative improvement of 25%. Results The results show that GloVe was able to find new laymen terms with an F-score of 48.44%. The basic GloVe and our novel algorithms incorporating WordNet were evaluated using two laymen datasets from the National Library of Medicine (NLM), Open-Access Consumer Health Vocabulary (OAC CHV) and MedlinePlus Healthcare Vocabulary.

wordify answers for dance

Our approach further improves the consumer health vocabularies by incorporating synonyms and hyponyms from the WordNet ontology. Methods Our entirely automatic approach uses machine learning, specifically Global Vectors for Word Embeddings (GloVe), on a corpus collected from a social media healthcare platform to extend and enhance consumer health vocabularies. In this paper, we present an automatic method to enrich laymen's vocabularies that has the benefit of being able to be applied to vocabularies in any domain. Objective Many of the presented vocabularies are built manually or semi-automatically requiring large investments of time and human effort and consequently the slow growth of these vocabularies.

wordify answers for dance

Wordify answers for dance professional#

To bridge this gap, several professional vocabularies and ontologies have been created to map laymen medical terms to professional medical terms and vice versa. In healthcare, it is rare to find a layman knowledgeable in medical terminology which can lead to poor understanding of their condition and/or treatment. A layman may have difficulty communicating with a professional due to not understanding the specialized terms common to the domain. Abstract: Background Clear language makes communication easier between any two parties.















Wordify answers for dance