--- library_name: paddlenlp license: apache-2.0 language: - zh --- [![paddlenlp-banner](https://user-images.githubusercontent.com/1371212/175816733-8ec25eb0-9af3-4380-9218-27c154518258.png)](https://github.com/PaddlePaddle/PaddleNLP) # PaddlePaddle/uie-senta-nano Sentiment analysis is a research hotspot in recent years, aiming at analyzing, processing, summarizing and reasoning emotionally subjective texts. Sentiment analysis has a wide range of application scenarios and can be applied to consumer decision-making, public opinion analysis, personalized recommendation and so on. According to the analysis granularity, it can be roughly divided into three categories: document-level sentiment analysis, sentence-level sentiment analysis and aspect-level sentiment analysis. Among them, aspect-level sentiment analysis includes multiple subtasks, such as aspect term extraction, opinion term extraction, aspect-opinion-sentiment triplet extraction, etc. UIE-Senta is a type of Chinese sentiment analysis model, which uses UIE as backbone and further trained based on large amount of samples related to sentiment analysis. So it has a stronger ability to understand sentiment knowledge and handle the related samples. Currently, UIE-Senta supports most of basic sentiment analysis capabilities, including sentiment-level sentiment classification, aspect-term extraction, opinion-term extraction, aspect-sentiment pair extraction, aspect-opinion pair extraction, aspect-opinion-sentiment triple extraction. You could perform sentiment analysis with UIE-Senta to improve your business analysis capabilities.
## Available Models | Model Name | Model Config | | :---------------: | :-----------------------------: | | `uie-senta-base` | 12-layers, 768-hidden, 12-heads | | `uie-senta-medium` | 6-layers, 768-hidden, 12-heads | | `uie-senta-mini` | 6-layers, 384-hidden, 12-heads | | `uie-senta-micro` | 4-layers, 384-hidden, 12-heads | | `uie-senta-nano` | 4-layers, 312-hidden, 12-heads | ## Performance on Text Dataset We conducted experiments to compare the performance different Models based on a self-built test set, which containing samples from multiple fields, such as hotel, restaurant,clothes and so. The comparison results are as follows. | Model Name | Precision | Recall | F1 | | :----------------: | :--------: | :--------: | :--------: | | `uie-senta-base` | 0.93403 | 0.92795 | 0.93098 | | `uie-senta-medium` | 0.93146 | 0.92137 | 0.92639 | | `uie-senta-mini` | 0.91799 | 0.92028 | 0.91913 | | `uie-senta-micro` | 0.91542 | 0.90957 | 0.91248 | | `uie-senta-nano` | 0.90817 | 0.90878 | 0.90847 | > Detailed Info: https://github.com/1649759610/PaddleNLP/tree/develop/applications/sentiment_analysis/unified_sentiment_extraction