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draft [2009/07/15 13:45]
147.228.47.142
draft [2009/07/15 14:12]
ptacek
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 ====== Progress Report ====== ====== Progress Report ======
  
- +[[Progress Report]] dal jsem to na zvlastni strankuabysme si nelezli do zeli
-Hi Marc, +
- +
-... +
- +
-Re: progress: there is progress in the following: +
- +
-evaluation of the ASR performance using the WoZ data (WP5.1) +
-- language model re-training for the collected dialogue data (using also data sources external to COMPANIONS) (WP5.1) +
-- implementation of the real-time speaker adaptation (WP5.1) +
-- additional dialogue transription for ASR is ongoing (WP52.? T5.2.1) +
-- DM has been transferred from USFD to Prague (WP5.3) +
- being extensively tested +
-- DAF editor transfer is complete (WP5.3) +
-- Sample dialogues (specifically aimed at the demo) +
- are ready - issues are being resolved between CU/ZCU +
-- DAFs are being prepared for the SC-CZ scenario AND +
- the sample dialogues +
-- DA set is being preparedalso based on the sample dialogues (WP5.2) +
-- preliminary DA tagger (on std DAMSL-SWBD tagset) working (~35% error rate) (WP5.2) +
--  +
-- integration work is ongoing (CU/ZCU, internally at CU) +
- but no functioning full demo yet (beyond what we've presented in Madrid) +
- +
-I hope this is OK for the progress report. Pavel (I.) might add more specifics regarding the ASR and especially TTS progress. +
- +
-Best, +
- +
--- Jan +
  
  
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-===== Speech Reconstruction =====+ 
 +===== Speech Reconstruction (WP 5.1 ???) =====
 features: omit filler phrases, irrelevant speech events, false starts, repetitions, corrections, syntax smoothing (WO,  features: omit filler phrases, irrelevant speech events, false starts, repetitions, corrections, syntax smoothing (WO, 
 imlementation(zahrnout tuhle info?): moses natrenovany na korpusu imlementation(zahrnout tuhle info?): moses natrenovany na korpusu
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 XXX Mirek XXX Mirek
  
-===== Morphology Analyzer and POS tagging =====+===== Morphology Analyzer and POS tagging (WP 5.2) =====
 features: XXX Mirek/Johanka features: XXX Mirek/Johanka
 performance indicator: accuracy performance indicator: accuracy
  
-===== Syntactic Parsing =====+===== Syntactic Parsing (WP 5.2) =====
 features: induce dependencies and labels features: induce dependencies and labels
 performance indicator: f-measure performance indicator: f-measure
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-===== Semantic Parsing =====+===== Semantic Parsing (WP 5.2) =====
 features: meaning representation with semantic roles (69 roles), coordinations, argument structure, partial ellipsis resolution, pronominal anaphora resolution, features: meaning representation with semantic roles (69 roles), coordinations, argument structure, partial ellipsis resolution, pronominal anaphora resolution,
 performance indicator: f-measure performance indicator: f-measure
  
-===== Information Extraction =====+===== Information Extraction (WP 5.2) =====
 features: template based identification of predicates features: template based identification of predicates
 covering predicates from  before-mentioned set of DAFs. covering predicates from  before-mentioned set of DAFs.
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-===== Named Entities Recognition =====+===== Named Entities Recognition (WP 5.2) =====
 features: detect person names, geographical locations (organizations myslim nepotrebne) features: detect person names, geographical locations (organizations myslim nepotrebne)
 performance indicator: f-measure performance indicator: f-measure
  
-===== Dialog Act Tagging =====+===== Dialog Act Tagging (WP 5.2) =====
 features: tagset derived from DAMSL-SWBD, DA is a key feature driving the decision, what to say next. features: tagset derived from DAMSL-SWBD, DA is a key feature driving the decision, what to say next.
 performance indicator: accuracy performance indicator: accuracy
  
  
-===== Sentiment Analysis =====+===== Sentiment Analysis (WP 5.2) =====
 features: za tohle bych vydaval klasifikator, co rozhoduje ,jestli se rekne 'To je smutné/veselé'. Tem adjektivum rucne priradim negative/positive sentiment. features: za tohle bych vydaval klasifikator, co rozhoduje ,jestli se rekne 'To je smutné/veselé'. Tem adjektivum rucne priradim negative/positive sentiment.
 performance indicator: f-measure performance indicator: f-measure
 +
 +
 +
  
  
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 ===== Complete System Evaluation ===== ===== Complete System Evaluation =====
 T5.2.7 tohle zminuje, nick webb to pro nas asi neudela T5.2.7 tohle zminuje, nick webb to pro nas asi neudela
-performance indicator: pocet slov ve vypovedich uzivateledotazniky+performance indicator: number of tokens in user reply utterancespost-session questionare
  
  
  
  
-===== Dialog Manager =====+===== Dialog Manager (WP 5.3) =====
 features: reply types, using (language independed) predicates (prakticky to znamena, ze pojmenuju testy na prechodech v dafech anglicky) features: reply types, using (language independed) predicates (prakticky to znamena, ze pojmenuju testy na prechodech v dafech anglicky)
 performance indicator: rucni hodnoceni prijatelnosti vybrane akce performance indicator: rucni hodnoceni prijatelnosti vybrane akce
  
-===== Natural Language Generation =====+===== Natural Language Generation (WP 5.4) =====
 features: variations, underspecified input (dott format), emotional markup (natvrdo v dafech a templatech u hodnoticich vet) features: variations, underspecified input (dott format), emotional markup (natvrdo v dafech a templatech u hodnoticich vet)
 performance indicator: BLEU score performance indicator: BLEU score

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