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--- |
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tags: |
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- Transformers |
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- text-classification |
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- intent-classification |
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- multi-class-classification |
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- natural-language-understanding |
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languages: |
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- af-ZA |
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- am-ET |
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- ar-SA |
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- az-AZ |
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- bn-BD |
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- cy-GB |
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- da-DK |
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- de-DE |
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- el-GR |
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- en-US |
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- es-ES |
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- fa-IR |
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- fi-FI |
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- fr-FR |
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- he-IL |
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- hi-IN |
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- hu-HU |
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- hy-AM |
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- id-ID |
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- is-IS |
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- it-IT |
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- ja-JP |
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- jv-ID |
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- ka-GE |
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- km-KH |
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- kn-IN |
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- ko-KR |
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- lv-LV |
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- ml-IN |
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- mn-MN |
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- ms-MY |
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- my-MM |
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- nb-NO |
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- nl-NL |
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- pl-PL |
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- pt-PT |
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- ro-RO |
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- ru-RU |
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- sl-SL |
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- sq-AL |
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- sv-SE |
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- sw-KE |
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- ta-IN |
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- te-IN |
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- th-TH |
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- tl-PH |
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- tr-TR |
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- ur-PK |
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- vi-VN |
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- zh-CN |
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- zh-TW |
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multilinguality: |
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- af-ZA |
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- am-ET |
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- ar-SA |
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- az-AZ |
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- bn-BD |
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- cy-GB |
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- da-DK |
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- de-DE |
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- el-GR |
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- en-US |
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- es-ES |
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- fa-IR |
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- fi-FI |
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- fr-FR |
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- he-IL |
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- hi-IN |
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- hu-HU |
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- hy-AM |
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- id-ID |
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- is-IS |
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- it-IT |
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- ja-JP |
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- jv-ID |
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- ka-GE |
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- km-KH |
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- kn-IN |
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- ko-KR |
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- lv-LV |
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- ml-IN |
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- mn-MN |
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- ms-MY |
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- my-MM |
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- nb-NO |
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- nl-NL |
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- pl-PL |
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- pt-PT |
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- ro-RO |
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- ru-RU |
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- sl-SL |
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- sq-AL |
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- sv-SE |
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- sw-KE |
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- ta-IN |
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- te-IN |
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- th-TH |
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- tl-PH |
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- tr-TR |
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- ur-PK |
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- vi-VN |
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- zh-CN |
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- zh-TW |
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datasets: |
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- qanastek/MASSIVE |
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widget: |
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- text: "réveille-moi à neuf heures du matin le vendredi" |
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license: cc-by-4.0 |
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--- |
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**People Involved** |
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* [LABRAK Yanis](https://www.linkedin.com/in/yanis-labrak-8a7412145/) (1) |
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**Affiliations** |
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1. [LIA, NLP team](https://lia.univ-avignon.fr/), Avignon University, Avignon, France. |
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## Demo: How to use in HuggingFace Transformers |
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Requires [transformers](https://pypi.org/project/transformers/): ```pip install transformers``` |
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```python |
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from transformers import AutoTokenizer, AutoModelForSequenceClassification, TextClassificationPipeline |
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model_name = 'qanastek/XLMRoberta-Alexa-Intents-Classification' |
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tokenizer = AutoTokenizer.from_pretrained(model_name) |
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model = AutoModelForSequenceClassification.from_pretrained(model_name) |
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classifier = TextClassificationPipeline(model=model, tokenizer=tokenizer) |
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res = classifier("réveille-moi à neuf heures du matin le vendredi") |
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print(res) |
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``` |
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## Training data |
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[MASSIVE](https://huggingface.co/datasets/qanastek/MASSIVE) is a parallel dataset of > 1M utterances across 51 languages with annotations for the Natural Language Understanding tasks of intent prediction and slot annotation. Utterances span 60 intents and include 55 slot types. MASSIVE was created by localizing the SLURP dataset, composed of general Intelligent Voice Assistant single-shot interactions. |
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## Intents |
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```plain |
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audio_volume_other |
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play_music |
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iot_hue_lighton |
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general_greet |
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calendar_set |
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audio_volume_down |
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social_query |
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audio_volume_mute |
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iot_wemo_on |
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iot_hue_lightup |
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audio_volume_up |
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iot_coffee |
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takeaway_query |
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qa_maths |
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play_game |
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cooking_query |
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iot_hue_lightdim |
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iot_wemo_off |
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music_settings |
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weather_query |
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news_query |
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alarm_remove |
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social_post |
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recommendation_events |
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transport_taxi |
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takeaway_order |
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music_query |
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calendar_query |
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lists_query |
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qa_currency |
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recommendation_movies |
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general_joke |
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recommendation_locations |
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email_querycontact |
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lists_remove |
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play_audiobook |
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email_addcontact |
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lists_createoradd |
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play_radio |
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qa_stock |
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alarm_query |
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email_sendemail |
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general_quirky |
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music_likeness |
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cooking_recipe |
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email_query |
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datetime_query |
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transport_traffic |
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play_podcasts |
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iot_hue_lightchange |
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calendar_remove |
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transport_query |
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transport_ticket |
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qa_factoid |
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iot_cleaning |
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alarm_set |
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datetime_convert |
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iot_hue_lightoff |
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qa_definition |
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music_dislikeness |
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``` |
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## Evaluation results |
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```plain |
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precision recall f1-score support |
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alarm_query 0.9661 0.9037 0.9338 1734 |
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alarm_remove 0.9484 0.9608 0.9545 1071 |
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alarm_set 0.8611 0.9254 0.8921 2091 |
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audio_volume_down 0.8657 0.9537 0.9075 561 |
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audio_volume_mute 0.8608 0.9130 0.8861 1632 |
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audio_volume_other 0.8684 0.5392 0.6653 306 |
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audio_volume_up 0.7198 0.8446 0.7772 663 |
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calendar_query 0.7555 0.8229 0.7878 6426 |
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calendar_remove 0.8688 0.9441 0.9049 3417 |
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calendar_set 0.9092 0.9014 0.9053 10659 |
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cooking_query 0.0000 0.0000 0.0000 0 |
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cooking_recipe 0.9282 0.8592 0.8924 3672 |
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datetime_convert 0.8144 0.7686 0.7909 765 |
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datetime_query 0.9152 0.9305 0.9228 4488 |
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email_addcontact 0.6482 0.8431 0.7330 612 |
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email_query 0.9629 0.9319 0.9472 6069 |
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email_querycontact 0.6853 0.8032 0.7396 1326 |
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email_sendemail 0.9530 0.9381 0.9455 5814 |
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general_greet 0.1026 0.3922 0.1626 51 |
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general_joke 0.9305 0.9123 0.9213 969 |
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general_quirky 0.6984 0.5417 0.6102 8619 |
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iot_cleaning 0.9590 0.9359 0.9473 1326 |
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iot_coffee 0.9304 0.9749 0.9521 1836 |
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iot_hue_lightchange 0.8794 0.9374 0.9075 1836 |
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iot_hue_lightdim 0.8695 0.8711 0.8703 1071 |
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iot_hue_lightoff 0.9440 0.9229 0.9334 2193 |
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iot_hue_lighton 0.4545 0.5882 0.5128 153 |
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iot_hue_lightup 0.9271 0.8315 0.8767 1377 |
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iot_wemo_off 0.9615 0.8715 0.9143 918 |
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iot_wemo_on 0.8455 0.7941 0.8190 510 |
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lists_createoradd 0.8437 0.8356 0.8396 1989 |
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lists_query 0.8918 0.8335 0.8617 2601 |
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lists_remove 0.9536 0.8601 0.9044 2652 |
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music_dislikeness 0.7725 0.7157 0.7430 204 |
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music_likeness 0.8570 0.8159 0.8359 1836 |
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music_query 0.8667 0.8050 0.8347 1785 |
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music_settings 0.4024 0.3301 0.3627 306 |
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news_query 0.8343 0.8657 0.8498 6324 |
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play_audiobook 0.8172 0.8125 0.8149 2091 |
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play_game 0.8666 0.8403 0.8532 1785 |
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play_music 0.8683 0.8845 0.8763 8976 |
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play_podcasts 0.8925 0.9125 0.9024 3213 |
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play_radio 0.8260 0.8935 0.8585 3672 |
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qa_currency 0.9459 0.9578 0.9518 1989 |
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qa_definition 0.8638 0.8552 0.8595 2907 |
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qa_factoid 0.7959 0.8178 0.8067 7191 |
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qa_maths 0.8937 0.9302 0.9116 1275 |
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qa_stock 0.7995 0.9412 0.8646 1326 |
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recommendation_events 0.7646 0.7702 0.7674 2193 |
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recommendation_locations 0.7489 0.8830 0.8104 1581 |
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recommendation_movies 0.6907 0.7706 0.7285 1020 |
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social_post 0.9623 0.9080 0.9344 4131 |
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social_query 0.8104 0.7914 0.8008 1275 |
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takeaway_order 0.7697 0.8458 0.8059 1122 |
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takeaway_query 0.9059 0.8571 0.8808 1785 |
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transport_query 0.8141 0.7559 0.7839 2601 |
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transport_taxi 0.9222 0.9403 0.9312 1173 |
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transport_ticket 0.9259 0.9384 0.9321 1785 |
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transport_traffic 0.6919 0.9660 0.8063 765 |
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weather_query 0.9387 0.9492 0.9439 7956 |
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accuracy 0.8617 151674 |
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macro avg 0.8162 0.8273 0.8178 151674 |
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weighted avg 0.8639 0.8617 0.8613 151674 |
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``` |
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