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Bronkema, Ryan – College Teaching, 2018
As educators, we've all probably experienced presenting in new places and/or audiences, and having some sort of mishap. Therefore, as part of their professional preparation, we should prepare our students with realistic presentation practice, mishaps and all! Within this paper, I will outline a pedagogical tool that randomizes potential…
Descriptors: Public Speaking, Student Projects, Skill Development, Teaching Methods
Lawley, Jim – Computer Assisted Language Learning, 2016
Research has shown that any assumption that L2 learners of English do well to rely on the feedback provided by generic spell checkers (for example, the MS Word spell checker) is misplaced. Efforts to develop spell checkers specifically for L2 learners have focused on training software to offer more appropriate suggestion lists for replacing…
Descriptors: English (Second Language), Second Language Learning, Feedback (Response), Spelling
Lawley, Jim – Language Learning & Technology, 2015
This paper describes the development of web-based software at a university in Spain to help students of EFL self-correct their free-form writing. The software makes use of an eighty-million-word corpus of English known to be correct as a normative corpus for error correction purposes. It was discovered that bigrams (two-word combinations of words)…
Descriptors: Computer Software, Second Language Learning, English (Second Language), Error Correction
Kwon, Oh-Woog; Lee, Kiyoung; Kim, Young-Kil; Lee, Yunkeun – Research-publishing.net, 2015
This paper introduces a Dialog-Based Computer-Assisted second-Language Learning (DB-CALL) system using semantic and grammar correctness evaluations and the results of its experiment. While the system dialogues with English learners about a given topic, it automatically evaluates the grammar and content properness of their English utterances, then…
Descriptors: Computer Assisted Instruction, Semantics, Grammar, Teaching Methods
Coppola, Brian P.; Pontrello, Jason K. – Journal of Chemical Education, 2014
Using errors as a method of learning has been made explicit through a two-staged peer review and discussion. During organic chemistry discussion sessions, quizzes are followed by a structured peer review designed to help students identify and discuss student errors. After the face-to-face discussion, a second stage of review involves analyzing and…
Descriptors: Peer Evaluation, Tests, Organic Chemistry, Discussion (Teaching Technique)
Cooper, James L.; Robinson, Pamela – Journal on Excellence in College Teaching, 2014
The authors describe several types of classroom assessment techniques (CATs) and cognitive scaffolding procedures that they have developed over the years. They then bring the procedures together in a sample lecture/group learning class presentation.
Descriptors: Student Evaluation, Evaluation Methods, Scaffolding (Teaching Technique), Lecture Method
Al-Jarf, Reima – Online Submission, 2011
Many EFL teachers spend a lot of time marking students' written assignments and correcting their spelling, grammatical, punctuation, organization and idea generation errors in detail. The more students make mistakes, the more meticulously they mark and correct mistakes. Despite meticulous error correction, students continue to make the same…
Descriptors: Error Correction, Writing Instruction, Writing Assignments, Feedback (Response)
Weerasinghe, Amali; Mitrovic, Antonija; Martin, Brent – International Journal of Artificial Intelligence in Education, 2009
One of the critical factors contributing to the effectiveness of human tutoring is the conversational aspect of the instruction. Our goal is to develop a general model for supporting dialogues with menu-based input that could be used in both well- and ill-defined instructional tasks. We have previously studied how human tutors provide additional…
Descriptors: Intelligent Tutoring Systems, Dialogs (Language), Databases, Design
Al-Jarf, Reima – Online Submission, 2010
Spelling error corpora can be collected from students' written essays, homework, dictations, translations, tests and lecture notes. Spelling errors can be classified into whole word errors, faulty graphemes and faulty phonemes in which graphemes are deleted, added, reversed or substituted. They can be used for identifying phonological and…
Descriptors: Second Language Learning, English (Second Language), Spelling, Error Patterns
Futagi, Yoko; Deane, Paul; Chodorow, Martin; Tetreault, Joel – Computer Assisted Language Learning, 2008
This paper describes the first prototype of an automated tool for detecting collocation errors in texts written by non-native speakers of English. Candidate strings are extracted by pattern matching over POS-tagged text. Since learner texts often contain spelling and morphological errors, the tool attempts to automatically correct them in order to…
Descriptors: Native Speakers, English (Second Language), Limited English Speaking, Computational Linguistics
O'Shea, J. – International Journal of Mathematical Education in Science & Technology, 2006
This paper is a report on an attempt to teach students in their first and second year of university how to write mathematics. The problems faced by these students are outlined and the system devised to emphasize the importance of communicating mathematics is explained.
Descriptors: Mathematics Instruction, College Mathematics, College Students, Homework
The Ghost in the Machine: Generating Error Messages in Computer Assisted Language Learning Programs.

Allen, John Robin – CALICO Journal, 1996
Discusses how computer-assisted language learning programs can generate error messages to help students in different ways. The article points out that an easier solution is to program a computer to recognize several different kinds of generic errors not related to any particular question but applicable to many situations, in order to generate…
Descriptors: College Students, Computer Assisted Instruction, Error Analysis (Language), Error Correction

Burston, Jack – CALICO Journal, 2001
Describes theoretical and practical considerations related to the provision of feedback in the written compositions of advanced foreign language learners of French. Discusses the approach taken to teaching and assessing writing skills of students and considers how using a computer-based composition annotation program can contribute to reduction of…
Descriptors: Advanced Students, College Students, Computer Assisted Instruction, Error Correction

Magilow, Daniel H. – Unterrichtspraxis/Teaching German, 1999
This action research case study examined how to handle error correction. Based on an action research cycle that incorporated related second language acquisition studies into the planning stage, the project focused on teacher behaviors and motivations in corrective feedback, including how feedback was given and perceived. Results indicate how…
Descriptors: Action Research, Case Studies, College Students, Error Correction
Advanced Technology, Inc., Reston, VA. – 1987
Stage Two of the Title IV Quality Control Study evaluated quality in the Department of Education's major student financial assistance programs, by identifying, measuring, and analyzing the causes of inaccurate awarding of student aid funds. This volume recommends and evaluates four major levels of corrective actions to reduce error: (1) reducing…
Descriptors: College Students, Educational Change, Error Correction, Higher Education
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