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I.I. I.I. I.I. I.I. Vocab and Topic Knowledge. Oral Lang. Comp. (Syntax). The Dam (decodable word list). Map. Irregular Word list. Acoustically similar Spanish Phonemes. English Phoneme. J ose / h ow z ey/. I.I. Think. I.I. K/1 High Frequency Word List. Written Lang.
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I.I. I.I. I.I. I.I. Vocab and Topic Knowledge Oral Lang. Comp. (Syntax) The Dam (decodable word list) Map Irregular Word list Acoustically similar Spanish Phonemes English Phoneme • Jose /h ow z ey/ I.I. Think I.I. K/1High Frequency Word List Written Lang. Comp. (Syntax) The Dam (decodable word list) BPST Vocab and Topic Knowledge • Joint /jh oy n t/ Rapid Naming Letter Sound Comp. Listen Phonemic Awareness I.I. I.I. Produce I.I. I.I. /h oy n t/ Automating Early Assessment of Academic Standards for Very YoungNative and Non-Native Speakers of American Englishbetter known asThe TBALL Project(Technology Based Assessment of Language and Literacy) • NSF-IERI award REC 0326214 Abeer Alwan (UCLA),Shrikanth Narayanan (USC), and David Pearson (UCB) IV. Reporting: What teachers see Speech Recognition Approach Recorded 300 children from 6 elementary schools; more than 80% of them are bilingual. Data used to train the ASR system. System has a 93% verification accuracy and correlates well with teacher scoring. ASR Approaches: Pronunciation modeling Speaker adaptation techniques Noise robust (front end and/or back end) Background Report of National Reading Panel (2000) advocates use of classroom-based assessments Many classroom assessments are not psychometrically sound Investment of time limits widespread use Distinguishing Features - Study the speech of native English and of Bilingual (Hispanic origin) K-2 students - Longitudinal and cross-sectional studies - Balance pedagogy and technology: strong interdisciplinary interactions between EE, CS, Education, Psychology and Linguistics - Correlation of measures with later performance - Validation of system, children’s performance, and teachers’ practices Spanish-accented English Field Testing Four schools in Los Angeles and one in Oakland with ELL populations; Two schools in Los Angeles, two in Oakland with native English speakers (total of 240 K-2 students) Very positive feedback from teachers in terms of students’ enthusiasm, ease of use of, and efficiency in conducting the tests • I. Assessment Framework • Many different aspects of reading skills • Phonemic Awareness; Alphabet Identification; Letter-sound knowledge, Blending, Spelling, Segmenting. Word Recognition (Rate and Accuracy). Picture naming. Syntax, Comprehension • Framework is hierarchical rather than a uniform approach to assessment • All students take benchmark assessments • Some students take 'drill down' assessments • Teachers have guidance on what to assess TBALL Specific Aims Report of National Reading Panel (2000) advocates use of classroom-based assessments Many classroom assessments are not psychometrically sound Investment of time limits widespread use • Acoustic phonetic knowledge transfer • /v/ /f/ (very) • /dh/ /d/ Orthographical knowledge transfer • /j/ /h/ (word initially) III. HCI and Database Design • Reading in Context • Several children found it easier to read words in context than to identify them in a word list. • Typical mispronunciations: Him/heem, as/us will/weell, read/reet, with/whit, by/be • However, when the words were embedded in a sentence, the children had correct pronunciations. For example, the child that said ‘reet’ for ‘read’ had the proper pronunciation when he read : ‘I can read my book’ • Syntax also plays a role. One child didn’t distinguish between ‘Came’ and ‘Come’. However, when he was presented the sentence: ‘I came to play but my friend said “ I will not play with you”, he read ‘came’ correctly. TBALL Team • Displaying data for different groups and needs (including age-appropriate HCI design) Narrative Listening Comp. • Schools: • 5 LAUSD schools • UES • 2 Bay Area schools Narrative Oral Reading NarrativeReading Comp San Diego High Frequency Word List • EE • GSEIS • CS • EE • Linguistics • Psychology • Education 11 graduates & 7 undergraduate students, 6 teachers • Query-based Datamining • Database design allocates a place to put the collected data and its context, e.g., • Demographic info from parent, date, TIME, test • Content material from test • Later the data can used for computations, e.g., • Words in isolation correct: 21/51 = 41% • Words in connected text: 20/36 = 55% • Teacher or administer can easily access the data through queries, e.g., • How did non-native speakers do relative to native speakers on task x? • Did a child’s performance change from K to G1? Components • II. Automatic Speech Recognition • Challenges: • Children have shorter vocal tract lengths (hence, higher resonances) and higher pitch • Significant intra- and inter-speaker variability • Significant variability in pronunciations due to different linguistic backgrounds, misarticulations, and signal to noise ratio of the recording environment • How to distinguish reading errors from pronunciation differences Looking to the Future • Beta version of the system, fall 2006; Alpha version, fall 2007 • Assess other skills (mathematical and scientific reasoning) • Extend the current system to other grade levels and language pairs • Refine assessment tasks, materials, and automated techniques based on feedback from teachers and children • Address validity, utility, and impact for native and non-native speakers • Train teachers to use the system, deploy in more classrooms • Please visit us at: http://diana.icsl.ucla.edu/TBALL/ Present auditory, text, graphical stimuli Measure decoding, comprehension skills Score, analyze, and adapt to responses Query-based datamining: monitor progress, compare, experiment Displays and summary screens for teachers to combine data to help make decisions Instructional guidance for teacher development