Kniha Automatic Generation of MCQs Using Information Extraction Naveed Afzal

Automatic Generation of MCQs Using Information Extraction

Autor: Naveed Afzal
Jazyk: Angličtina
Väzba: Brožovaná
Dostupnosť: Skladom u dodávateľa
Odosielame za 5-8 dní
64.63
Multiple Choice Tests (MCTs) are a popular form of assessment and are quite frequently used by many...

Informácie o knihe

Autor
Jazyk
Angličtina
Väzba
Kniha - Brožovaná
Vydalo
2016
Stránok
272
EAN
9783659901638
Enbook ID
13510934
Hmotnosť
421
Rozmery
150 x 220 x 16

Kompletný popis

Multiple Choice Tests (MCTs) are a popular form of assessment and are quite frequently used by many e-Learning applications as they are well adapted to assessing factual, conceptual and procedural information. In this research work, we present an alternative to the lengthy and time-consuming activity of developing MCTs by proposing a Natural Language Processing (NLP) based approach that relies on semantic relations extracted using Information Extraction to automatically generate MCTs. Information Extraction (IE) is an NLP field used to recognise the most important entities present in a text, and the relations between those concepts, regardless of their surface realisations. In IE, text is processed at a semantic level that allows the partial representation of the meaning of a sentence to be produced. In this work, we present two unsupervised RE approaches (surface-based and dependency-based). The aim of both approaches is to identify the most important semantic relations in a document without assigning explicit labels to them in order to ensure broad coverage, unrestricted to predefined types of relations.

Mohlo by vás zaujímať

12.94
35.79

Virtually Forever

Anthony Eames
21.96
9.50
144.56
7.84

Lead The Future

Grant Dever
15.29

Sugar Syndrome

Luckstar Enterprises
16.08
32.65

AWS for Solutions Architects

Alberto Artasanchez
57.47
14.31
17.74
14.31
99.84

Zákazníci, ktorí si kúpili túto knihu, kúpili tiež

High Protein Fast Food

@Vegan_High_Protein
14.80
21.08
65.41

Maa Chettu Needa, Asalem Jarigindi

Sudheer Reddy Pamireddy
11.66
31.08
21.96
27.36

Barn & Andlighet

Agneta Strandberg
20.10

El senor del Cero

MARIA ISABEL MOLINA
12.54