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Predicting Phrasing and Accent

Predicting Phrasing and Accent. Julia Hirschberg CS 4706. Why worry about accent and phrasing?.

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Predicting Phrasing and Accent

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  1. Predicting Phrasing and Accent Julia Hirschberg CS 4706

  2. Why worry about accent and phrasing? A car bomb attack on a police station in the northern Iraqi city of Kirkuk early Monday killed four civilians and wounded 10 others U.S. military officials said. A leading Shiite member of Iraq's Governing Council on Sunday demanded no more "stalling" on arranging for elections to rule this country once the U.S.-led occupation ends June 30. Abdel Aziz al-Hakim a Shiite cleric and Governing Council member said the U.S.-run coalition should have begun planning for elections months ago. -- Loquendo

  3. Why predict phrasing and accent? • TTS and CTS • Naturalness • Intelligibility • Recognition • Decrease perplexity • Modify durational predictions for words at phrase boundaries • Identify most ‘salient’ words • Summarization, information extraction

  4. How do we predict phrasing and accent? • Default prosodic assignment from simple text analysis The president went to Brussels to make up with Europe. • Doesn’t work all that well, e.g. particles • Hand-built rule-based systems hard to modify or adapt to new domains • Corpus-based approaches (Sproat et al ’92) • Train prosodic variation on large hand-labeled corpora using machine learning techniques

  5. Accent and phrasing decisions trained separately • E.g. Feat1, Feat2,…Acc • Associate prosodic labels with simple features of transcripts • distance from beginning or end of phrase • orthography: punctuation, paragraphing • part of speech, constituent information • Apply automatically learned rules when processing text

  6. Reminder: Prosodic Phrasing • 2 `levels’ of phrasing in ToBI • intermediate phrase: one or more pitch accents plus a phrase accent (H- or L- ) • intonational phrase: one or more intermediate phrases + boundary tone (H% or L% ) • ToBI break-index tier • 0 no word boundary • 1 word boundary • 2 strong juncture with no tonal markings • 3 intermediate phrase boundary • 4 intonational phrase boundary

  7. What are the indicators of phrasing in speech? • Timing • Pause • Lengthening • F0 changes • Vocal fry/glottalization

  8. What linguistic and contextual features are linked to phrasing? • Syntactic information • Abney ’91 chunking • Steedman ’90, Oehrle ’91 CCGs … • Which ‘chunks’ tend to stick together? • Which ‘chunks’ tend to be separated intonationally? • Largest constituent dominating w(i) but not w(j) [The man in the moon] |? [looks down on you] • Smallest constituent dominating w(i),w(j) The man [in |? moon] • Part-of-speech of words around potential boundary site • Sentence-level information • Length of sentence This is a very very very long sentence which thus might have a lot of phrase boundaries in it don’t you think?

  9. This isn’t. • Orthographic information • They live in Butte, Montana. • Word co-occurrence information Vampire bat, …powerful but… • Are words on each side accented or not? The cat in |? the • Where is the last phrase boundary? He asked for pills | but |? • What else?

  10. Statistical learning methods • Classification and regression trees (CART) • Rule induction (Ripper) • Support Vector Machines • HMMs, Neural Nets • All take vector of independent variables and one dependent (predicted) variable, e.g. ‘there’s a phrase boundary here’ or ‘there’s not’ • Input from hand labeled dependent variable and automatically extracted independent variables • Result can be integrated into TTS text processor

  11. How do we evaluate the result? • How to define a Gold Standard? • Natural speech corpus • Multi-speaker/same text • Subjective judgments • No simple mapping from text to prosody • Many variants can be acceptable The car was driven to the border last spring while its owner an elderly man was taking an extended vacation in the south of France.

  12. More Recent Results • Incremental improvements continue: • Adding higher-accuracy parsing (Koehn et al ‘00) • Collins ‘99 parser • Different learning algorithms (Schapire & Singer ‘00) • Different syntactic representations: relational? Tree-based? • Ranking vs. classification? • Rules always impoverished • Where to next?

  13. Predicting Pitch Accent • Accent: Which items are made intonationally prominent and how? • Accent type: • H* simple high (declarative) • L* simple low (ynq) • L*+H scooped, late rise (uncertainty/ incredulity) • L+H* early rise to stress (contrastive focus) • H+!H* fall onto stress (implied familiarity)

  14. What are the indicators of accent? • F0 excursion • Durational lengthening • Voice quality • Vowel quality • Loudness

  15. What phenomena are associated with accent? • Word class: content vs. function words • Information status: • Given/new He likes dogs and dogs like him. • Topic/Focus Dogs he likes. • Contrast He likes dogs but not cats. • Grammatical function • The dog ate his kibble. • Surface position in sentence: Today George is hungry.

  16. Association with focus: • John only introduced Mary to Sue. • Semantic parallelism • John likes beer but Mary prefers wine.

  17. How can we capture such information simply? • POS window • Position of candidate word in sentence • Location of prior phrase boundary • Pseudo-given/new • Location of word in complex nominal and stress prediction for that nominal City hall, parking lot, city hall parking lot • Word co-occurrence Blood vessel, blood orange

  18. Current Research • Concept-to-Speech (CTS) – Pan&McKeown99 • systems should be able to specify “better” prosody: the system knows what it wants to say and can specify how • New features • Newer machine learning methods: • Boosting and bagging (Sun02) • Combine text and acoustic cues for ASR • Co-training

  19. MAGIC • MM system for presenting cardiac patient data • Developed at Columbia by McKeown and colleagues in conjunction with Columbia Presbyterian Medical Center to automate post-operative status reporting for bypass patients • Uses mostly traditional NLG hand-developed components • Generate text, then annotate prosodically • Corpus-trained prosodic assignment component

  20. Corpus: written and oral patient reports • 50min multi-speaker, spontaneous + 11min single speaker, read • 1.24M word text corpus of discharge summaries • Transcribed, ToBI labeled • Generator features labeled/extracted: • syntactic function

  21. p.o.s. • semantic category • semantic ‘informativeness’ (rarity in corpus) • semantic constituent boundary location and length • salience • given/new • focus • theme/ rheme • ‘importance’ • ‘unexpectedness’

  22. Very hard to label features • Results: new features to specify TTS prosody • Of CTS-specific features only semantic informativeness (likeliness of occurring in a corpus) useful so far • Looking at context, word collocation for accent placement helps predict accent • RED CELL (less predictable) vs. BLOOD cell (more) Most predictable words are accented less frequently (40-46%) and least predictable more (73-80%) Unigram+bigram model predicts accent status w/77% (+/-.51) accuracy

  23. Future Intonation Prediction: Beyond Phrasing and Accent • Assigning affect (emotion) • Personalizing TTS • Conveying personality, charisma?

  24. Next Class • Look at another phenomena we’d like to capture in TTS systems: • Information status • Homework 3a is due on March 1!

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