--- language: - pt license: cc-by-nc-nd-4.0 colorTo: blue tags: - text-summarization - abstractive-summarization - portuguese - administrative-documents - municipal-meetings - primera library_name: transformers base_model: - allenai/primera --- # Bart-Base-Summarization-Council-PT: Abstractive Summarization of Portuguese Municipal Meeting Minutes Discussion Subjects ## Model Description **Primera-Summarization-Council-PT** is an **abstractive text summarization model** based on **primera**, fine-tuned to produce concise and informative summaries of discussion subjects from **Portuguese municipal meeting minutes**. The model was trained on a curated and annotated corpus of official municipal meeting minutes covering a variety of administrative and political topics at the municipal level. **Try out the model**: [Hugging Face Space Demo](https://huggingface.co/spaces/anonymous12321/CitilinkSumm-PT) ### Key Features - 🧾 **Abstractive Summarization** – Generates natural, human-like summaries rather than extracts. - 🇵🇹 **European Portuguese** – Optimized for official and administrative Portuguese. - 🏛️ **Domain-Specific** – Trained on municipal meeting minutes and administrative discussions. - ⚙️ **Fine-tuned primera** – Built upon `allenai/primera` using supervised fine-tuning. - 🧠 **Fact-Aware Generation** – Produces short summaries that preserve factual content. --- ## Model Details - **Architecture:** `allenai/primera` - **Task:** Abstractive summarization (`text → summary`) - **Framework:** 🤗 Transformers (PyTorch) - **Tokenizer:** BART-base tokenizer (English vocabulary adapted for Portuguese text) - **Max Input Length:** 1024 tokens - **Max Summary Length:** 128 tokens - **Training Objective:** Conditional generation (cross-entropy loss) - **Dataset:** Portuguese municipal meeting minutes annotated with summaries --- ## How It Works The model receives a discussion subject of a municipal meeting and outputs a short, coherent summary highlighting: - The **main subject or topic** of discussion - Any **decisions, motions, or proposals** made - The **entities or departments** involved ### Example Usage ```python from transformers import AutoTokenizer, AutoModelForSeq2SeqLM model_name = "anonymous12321/CitilinkSumm-PT" tokenizer = AutoTokenizer.from_pretrained(model_name) model = AutoModelForSeq2SeqLM.from_pretrained(model_name) text = """ 17. PROCESSO DE OBRAS N.º ***** -- EDIFIC\nPelo Senhor Presidente foi presente a esta reunião a informação n.º ****** da Secção de Urbanismo e Fiscalização -- Serviço de Obras Particulares que se anexa à presente ata. \nPonderado e analisado o assunto o Executivo Municipal deliberou por unanimidade aprovar as especialidades relativas ao processo de obras n.º ***** -- EDIFIC. """ inputs = tokenizer(text, return_tensors="pt", max_length=1024, truncation=True) summary_ids = model.generate(**inputs, max_length=128, num_beams=4, early_stopping=True) print(tokenizer.decode(summary_ids[0], skip_special_tokens=True)) ``` # 🧾 Model Output **Output:** > "O Executivo Municipal aprovou, por unanimidade, as especialidades relativas a um processo de obras particulares." --- ## 📊 Evaluation Results ### Quantitative Metrics (on held-out test set) | Metric | Score | Description | |:-------|:------:|:------------| | **ROUGE-1** | ... | Unigram overlap between generated and reference summaries | | **ROUGE-2** | ... | Bigram overlap | | **ROUGE-L** | ... | Longest common subsequence overlap | | **BERTScore (F1)** | ... | Semantic similarity between summary and reference | --- ## ⚙️ Training Details - **Pretrained Model:** `facebook/bart-base` - **Optimizer:** AdamW (default in Hugging Face Trainer) - **Learning Rate:** 2e-5 - **Batch Size:** 4 - **Epochs:** 3 - **Scheduler:** Linear warmup - **Loss Function:** Cross-entropy - **Evaluation Metrics:** ROUGE (computed on validation set every 100 steps) - **Evaluation Strategy:** Step-based evaluation (`eval_steps=100`) - **Weight Decay:** 0.01 - **Mixed Precision (fp16):** Enabled when CUDA is available --- ## 📚 Dataset Description The model was trained on a specialized dataset of **Portuguese municipal meeting minutes**, consisting of: - Discussion Subjects from official municipal meeting minutes. - Decisions and deliberations across departments (urban planning, finance, education, etc.) - Expert-annotated summaries per discussion segment **Dataset sources include:** - Six Portuguese municipalities meeting minutes --- ## ⚠️ Limitations - **Language Restriction:** The model is optimized for Portuguese; performance may degrade in other languages. - **Domain Dependence:** Best suited for administrative and institutional texts; less effective on informal or creative writing. - **Length Sensitivity:** Very long transcripts (>1024 tokens) are truncated; chunking may be needed for full documents. - **Generalization:** While robust within-domain, it may underperform on unseen domains or vocabulary. --- ## ⚖️ Ethical Considerations The model is intended for **research and administrative document processing**. - Outputs should **not** be used for legal decision-making without human verification. - Potential bias may exist due to limited geographic and institutional diversity in training data. --- ## 📄 License This model is released under the **Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (CC BY-NC-ND 4.0).** ---