The Relationship Between Gender And Reading Comprehension At College Level

2017 ◽  
pp. 426
Author(s):  
Ala' Hussain Oda ◽  
Mohsen R. Abdul-Kadhim
2019 ◽  
Author(s):  
Amanda Goodwin ◽  
Yaacov Petscher ◽  
Jamie Tock

Various models have highlighted the complexity of language. Building on foundational ideas regarding three key aspects of language, our study contributes to the literature by 1) exploring broader conceptions of morphology, vocabulary, and syntax, 2) operationalizing this theoretical model into a gamified, standardized, computer-adaptive assessment of language for fifth to eighth grade students entitled Monster, PI, and 3) uncovering further evidence regarding the relationship between language and standardized reading comprehension via this assessment. Multiple-group item response theory (IRT) across grades show that morphology was best fit by a bifactor model of task specific factors along with a global factor related to each skill. Vocabulary was best fit by a bifactor model that identifies performance overall and on specific words. Syntax, though, was best fit by a unidimensional model. Next, Monster, PI produced reliable scores suggesting language can be assessed efficiently and precisely for students via this model. Lastly, performance on Monster, PI explained more than 50% of variance in standardized reading, suggesting operationalizing language via Monster, PI can provide meaningful understandings of the relationship between language and reading comprehension. Specifically, considering just a subset of a construct, like identification of units of meaning, explained significantly less variance in reading comprehension. This highlights the importance of considering these broader constructs. Implications indicate that future work should consider a model of language where component areas are considered broadly and contributions to reading comprehension are explored via general performance on components as well as skill level performance.


Author(s):  
Muhammad Waleed Shehzad ◽  
Ishtiaq Hussain ◽  
Amer Akhtar ◽  
Saadia Fatima

Abstract The intended aim of this research was to identify the connection of Self-Efficacy Sources (SES) and Metacognitive Reading Strategies (MCRS) with Reading Comprehension (RC) by deploying reading Self-Efficacy Beliefs (SEB) as a mediating construct. A correlational design was utilized. Proportionate stratified random sampling was deployed to select a sample of 383 Saudi EFL university learners. Questionnaires and a reading comprehension test were employed to gather the data. Structural equation modelling was used to test the relationships. Results indicated that SES were substantially associated with SEB except physiological state. Moreover, all the three MCRS showed significant and positive association with SEB. Also, SEB were substantially associated with RC. Regarding mediation, it was discovered that SEB mediated the relationship among SES and RC except one source, i.e., physiological state. Moreover, SEB mediated the association between all the three MCRS and RC. This study provides several implications for learners, teachers, and policymakers. Keywords: Metacognitive Reading Strategies, Self-efficacy Sources, Reading Self-efficacy Beliefs, Reading Comprehension, Saudi EFL Learners


1983 ◽  
Vol 15 (1) ◽  
pp. 3-18 ◽  
Author(s):  
Margaret G. McKeown ◽  
Isabel L. Beck ◽  
Richard C. Omanson ◽  
Charles A. Perfetti

A study that investigated the relationship between vocabulary instruction and reading comprehension was replicated and extended. The original study showed substantial gains in accuracy of word knowledge and speed of lexical access, but only marginal gains in comprehension. This latter result was attributable to methodological problems, and thus the comprehension measure was revised. In the present study, fourth graders were taught 104 words over a five-month period. Following instruction, these children and a group of uninstructed children matched on pre-instruction vocabulary and comprehension ability performed tasks to measure accuracy of word knowledge, speed of lexical access, and comprehension of stories containing taught words. Instructed children showed substantial advantage in all tasks. Reasons for these results, in contrast to studies that have failed to improve comprehension through vocabulary instruction, are discussed.


2016 ◽  
Vol 110 (6) ◽  
pp. 665-674 ◽  
Author(s):  
Yuliya Ardasheva ◽  
Sarah N. Newcomer ◽  
Jonah B. Firestone ◽  
Richard L. Lamb

Author(s):  
Yuanxing Zhang ◽  
Yangbin Zhang ◽  
Kaigui Bian ◽  
Xiaoming Li

Machine reading comprehension has gained attention from both industry and academia. It is a very challenging task that involves various domains such as language comprehension, knowledge inference, summarization, etc. Previous studies mainly focus on reading comprehension on short paragraphs, and these approaches fail to perform well on the documents. In this paper, we propose a hierarchical match attention model to instruct the machine to extract answers from a specific short span of passages for the long document reading comprehension (LDRC) task. The model takes advantages from hierarchical-LSTM to learn the paragraph-level representation, and implements the match mechanism (i.e., quantifying the relationship between two contexts) to find the most appropriate paragraph that includes the hint of answers. Then the task can be decoupled into reading comprehension task for short paragraph, such that the answer can be produced. Experiments on the modified SQuAD dataset show that our proposed model outperforms existing reading comprehension models by at least 20% regarding exact match (EM), F1 and the proportion of identified paragraphs which are exactly the short paragraphs where the original answers locate.


2016 ◽  
Vol 1 (2) ◽  
pp. 50
Author(s):  
Yusring Sanusi Baso ◽  
Faridah Rahman ◽  
Haeruddin Haeruddin ◽  
Najmuddin Abd Safa

This research studied the relationship between vocabulary mastery and the level of comprehension in reading Arabic authentic text. This research investigated students’ lexical threshold to measure the level of comprehension on Arabic authentic text. The data were collected from 47 participants at Arabic literature department of Hasanuddin University. Three test instruments were given, they are Reading Comprehension Test (RCT) that students were asked to sign unknown word meaning in Arabic texts, answer the questions from texts given, and work on Lexical Coverage Test (LCT) to get accurate word list of unknown vocabularies. The result was obtained through applying regression and it showed that the level of reading comprehension was affected 68% by vocabulary mastery. Also, there were 32% of the students depend on the topic or variables out of the variable of vocabulary that was not measured in this research.


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