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E licited I mitation and Automated S peech Recognition as a Placement Test: Analysis Of JSL Learners’ Language Development Process And Differences Between Instructed And Self-Instructed Learners . NCOLTCL 2011 Brigham Young University Shinsuke Tsuchiya. Overview. Introduction
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Elicited Imitation and Automated Speech Recognition as a Placement Test:Analysis Of JSL Learners’ Language Development Process And Differences Between Instructed And Self-Instructed Learners NCOLTCL 2011 Brigham Young University Shinsuke Tsuchiya
Overview • Introduction • Purpose • Background • Research Questions • Test Design • Results • Analysis • Limitations • Implications • Future Research
Introduction Assessment and Testing using technology can be: • Quick • Reliable • Objective Brigham Young University • Problem: Placement test for incoming learners is all multiple-choice questions (near-native learners, instructed and uninstructed learners) “Can we use Elicited Imitation and Automated Speech Recognition as a speaking portion of the placement test?”
Background • Elicited Imitation • Automated Speech Recognition 1. Ohayoogozaimasu ‘Good morning.’ 2. _______________ “the more you know of a foreign language, the better you can imitate the sentences of the language.” (p. 247) Bley-Vroman& Chaudron (1994) A viable oral testing method (Erlam, 2006; Graham et al., 2008)
BackgroundEnglish EI BYU PSST Research Group http://psst.byu.edu (Pedagogical Software and Speech Technology) • 1659 tests were administered 1279 ESL subjects (Lonsdale & Weitze, 2009) • “overall comparisons between EI scores of ESL learners and their scores on other measures of oral language proficiency are promising” (Hansen, Graham, Brewer, Brewer, & Tieocharoen) • “EI scores can predict Oral Proficiency Interview (OPI) scores within two levels of a scale of ten. (Graham, 2006; Lonsdale, Graham, & Madsen, 2005).
BackgroundJapanese EI test using ASR Over 800 JSL learners have taken the EI. • the correlations between human grading and ASR grading was r=0.84 (p < 0.001) • the correlation between Japanese EI score and OPI scores was r=0.77 (p < 0.3) (Matsushita & LeGare, 2010) Sound recording ソノナカニナニハイッテンノ ‘sononakaninanihaitten no’ Student’s utterance ソノナカナニハイッテタショ ‘sononakaninanihaittetasyo’ Evaluation: C CCCD C CCCCCS SI Correct = 76.92% 10 ( 10) substitutions = 15.38% 2 ( 2) Deletions = 7.69% 1 ( 1) Insertions = 7.69% 1 ( 1) Errors = 30.77% 4 ( 4)
Research Questions Can elicited imitation and automated speech recognition grading system be used as a placement test? • RQ 1. Can they differentiate instructed beginning, intermediate, and advanced learners of Japanese? • If so, what EI items? • RQ 2. Can they differentiate instructed and uninstructed learners? • If so, what EI items?
Test Design • A total number of participants: 241 BYU JSL learners • EI was taken in the computer lab in Fall 2010 • 3-seconds pause before repeating back (Erlam, 2006) • 60 items (30 from textbooks, 30 from CSJ corpus) (15 min.) • Gender-neutral contents • no technical terms • Sentence length: 10-30 morae • Randomized order • Prompts (both male and female) • ASR graded mean scores for each level as well as individual items were compared (t-test) • Participants were divided into different groupsfor each research question
Test items • Beginning (20) Ex. 明日行きませんか。 ‘asitaikimasenka’ ‘won’t you go tomorrow?’ • Intermediate (20) Ex. 昨日は学生さんが手伝ってくれたんですよ。 ‘kinoowagakusee san gatetudattekureta n desuyo.’ ‘As for yesterday, a student helped (me) as a favor.’ • Advanced (20) Ex. 日本がどんな国なのか知りたがっている人がたくさんいます。 ‘nihongadonnnakunina no kasiritagatteiruhitogatakusanimasu. ‘There are many people who are eager to know what kind of country Japan is.’
Research Question 1 Can EI and ASR differentiate instructed beginning, intermediate, and advanced learners of Japanese? Instructed learners: • *1styear: beginning: 79 • 2nd year: intermediate: 34 • **3rdyear +: advanced: 21 *False beginners have been excluded **Native speakers and uninstructed learners who have been excluded.
Research Question 2 Can EI and ASR differentiate instructed and uninstructed learners? • *Advanced Instructed learners: 38 • **1st semester Uninstructed learners in 3rd year level: 40 *second half of 2nd year students were added to equalize number of participants. **uninstructed learners who had more than 2 semesters of instruction have been excluded.
Results (RQ 1) Beginning, intermediate, advanced learners’ mean scores were significantly different: Mean scores: • Beginning: 34.7 • Intermediate: 45.3 • Advanced: 58.8 p-values • Beginning vs. Intermediate: p=0.000 • Intermediate vs. Advanced: p=0.001 • Beginning vs. Advanced: p=0.000
Results (RQ 1)Significant itemsAccuracy rate All progressed: • Beginning-intermediate 40 items • Intermediate-advanced 25 items • Beginning-advanced 58 items
Results (RQ 2) Advanced instructed learners and 1st semester uninstructed learners in 3rd year level were also significantly different. Mean scores: instructed learners: 56.6 uninstructed learners: 63.4 p=0.034
Results (RQ 2)Significant itemsAccuracy Rate 17 significant items Uninstructed learners > instructed learners (16 items) Instructed learners > uninstructed learners (1 item)
Analysis (Summary) 1. EI and ASR used in this research can be used to differentiate: • beginning, intermediate, and advanced level learners. • Instructed and uninstructed learners. 2. JSL learners’ accuracy rate improved in each item in general: • beginning level items (beginning to intermediate) • advanced level items (intermediate to advanced) 3. Uninstructed learners outperformed instructed learners.
Limitations Test • Technological problem (background noise, mis-recording, data loss etc.) • Face validity • L2 interlanguage errors that are not recognized by the present ASR system • Discouragement Subjects • Lack of advanced level instructed learners
Implications EI and ASR could be used as a: • Placement test (listening/speaking portion) only if it is accompanied by other tests. • Computer Adaptive Test (efficient time & cost with reliable & consistent scores). • Program Review (inter/intraprogram assessment and evaluation) • Second Language Acquisition Research
Future Research Test improvement: • Prevent technological problems • Increase face validity (include comprehension tasks) • Improve ASR (dealing with L2 interlanguage) • Increase Motivation • More advanced level classroom students Second Language Acquisition Research: • Item analysis • Grammatical elements (i.e. case particles) • Sentence complexity and length • Vocabulary acquisition
Acknowledgement • Hitokazu Matsushita (Japanese EI/ASR creator) • Ray Graham, Ray Clifford, Dan Dewey (BYU Linguistics department) • Robert Russell, Paul Warnick and other BYU Japanese professors • BYU Japanese students • BYU JFSB Computer lab assistants
Thank you! Questions? Shinsuke Tsuchiya s.tsuchiya777@gmail.com