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Published byMarybeth Pope Modified over 8 years ago
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1 Determining query types by analysing intonation
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2 Overview u Using prosodic features of utterances u Generating set of prosodic labels with which test utterances are annotated u Trying to determine which class the utterances belong to – action, problem, connect, who, info, other
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3 Contents u Motivation u Corpus u Prosody u System architecture – pitch extraction – segmentation – prosodic labelling – label sequences (n-grams) u Results u Conclusions
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4 Motivation u Linguists (Crystal, Searle) found relationship between – prosody and utterance type (question, command…) – prosody and attitude u Edinburgh maptask group (Taylor, Wright) found prosody help distinguish utterance types
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5 British Telecom corpus u Callers dial 100, requesting – alarm calls, collect calls – codes, numbers – connection problems – … u 8000 calls: first utterance only u Annotation – call types: by BT – prosody: by me
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6 Call types in BT corpus
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7 Prosody u má mà (lexical tone) u yés yès (word-level intonation) u Now is the time for | all good men to | come to the | aid of the | party
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8 Simplified architecture pitch extractor / octave error correction segmenter clustering centroid LM utterance classifier draw layers thingy!
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9 Pitch extraction “ Yes, Manchester please ”
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10 Octave error correction
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11 Simplified architecture pitch extractor / octave error correction segmenter clustering centroid LM utterance classifier draw layers thingy!
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12 Data points for one segment showing line of best fit duration penalty prevents very short segments also minimum and maximum segment lengths
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13 Varying the duration penalty
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14 Minimum segment length Yeah, could I book a wake- up call please
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15 Simplified architecture pitch extractor / octave error correction segmenter clustering centroid LM utterance classifier draw layers thingy!
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16 Assigning labels u Each segment in training corpus has features – duration – gradient – mid-point frequency u Clustering algorithm (K-means) places segments in feature space u Prosodic labels assigned to segments, based on cluster membership
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18 2-D data points arranged in 15 clusters
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19 Label trajectories on to clustering now: discretization
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20 More trajectory schemes no maximum with normalization 10 clusters 40 clusters
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21 70 clusters
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22 Simplified architecture pitch extractor / octave error correction segmenter clustering centroid LM utterance classifier draw layers thingy!
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23 Label sequences u N-gram collocation model used – 台中 vs 台 and 中 – label sequence e.g. [4;11;13;1] statistically more useful than individual labels u Association of label sequences with each class in training data computed u Then estimate test data classes using maximum likelihood model
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24 Results u Correct classification around 1/3 – correct classification by chance around 1/4 u But changing parameters does affect results u Some optimum parameters – 20 clusters (prosodic labels) – only label sequences seen 4 times used – sequences of 4 labels best, performance degrades with 5-grams
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25 Conclusions u Psycholinguistic experiment showed humans find same task difficult u Prosody cannot be used by itself to classify utterances u But, in combination with a lexical model, could be of use
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26 Introducing Linguistics u What do linguists do? u Grammar, and other aspects of language u Relationships between languages u How is linguistics used in the real world?
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27 What do linguists do? u They don’t necessarily “learn languages” – Linguist and 語言學 are confusing terms u They are often interested in the structure of languages. They might – specialize in one language, or a group of languages – compare different languages – study features shared by all languages
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28 Many linguists study grammar u Syntax – the way words are arranged to make sentences – John had lunch / *John lunch had u Morphology – the way words are modified to fit the circumstances – John had lunch / *John have lunch u Linguists study – what people actually say – not what they “should” say!
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29 The sort of things linguists look at in syntax u Syntax (the way words are arranged to make sentences) – John saw the girl with the telescope – 爸爸給小明買鹹蛋超人 – Me and Dad went to the toyshop – Dad bought an Ultraman for John and I
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30 And in morphology… u Affixation: hardly used in Chinese – My son has 73 Ultramen – 我 (? 的 ) 兒子有 73 只鹹蛋超人 (* 們 ) u Compounding – rare in English: greenhouse, blackbird – productive in Chinese »Verb-object compounds: 開車, 幫忙 »Resultative compounds: 來得及, 跑不掉 »Stump compounds: 交大
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31 Phonology: the sounds of a language u How good is ㄅㄆㄇㄈ at representing the sounds of Chinese? – 雄 is xiong in 韓愈拼音, vs ㄒㄩㄥ. – 嗯 and 恩 are the same in ㄅㄆㄇㄈ, n vs en in Pinyin u Has 台灣國語 lost the sounds ㄓㄔㄕ ? u Why do we sometimes hear 禮拜ㄕ ?
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32 Historical linguistics u How languages are related – Language families »Indo-European, Sino-Tibetan… – Areal linguistics »Greek, Bulgarian – Mostly borrowed words; also shared grammatical features »Chinese, Korean, Japanese u How language changes over time – sounds: poor vs paw, suit. – vocab: 咖啡, 颱風. Calque: 摩天大樓, skyscraper, gratte-ciel – grammar: Did you eat yet? Adversative passive 被
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33 Sociolinguistics u Diglossia: “high” and “low” prestige languages – The role of Mandarin and Taiwanese in a bilingual society – The changing role of English in Taiwan society: borrowing, or showing off? – case and size: code- switching, or lexicalized Chinese words? Ta-hsüeh-shih-ching
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34 Applications for linguistics u Speech disorders u Forensic linguistics – Accent detection – Style verification (eg police style) u Language teaching u Computational applications – Machine translation – Speech recognition and synthesis – Language identification
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