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--- |
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inference: false |
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pipeline_tag: sentence-similarity |
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tags: |
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- sentence-transformers |
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- feature-extraction |
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- sentence-similarity |
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- transformers |
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--- |
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<div style="clear: both;"> |
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<h1><strong>FinISH (Finance-Identifying Sroberta for Hypernyms)</strong></h1> |
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<div> |
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<h2><img src="https://pbs.twimg.com/profile_images/1333760924914753538/fQL4zLUw_400x400.png" alt="" width="25" height="25"></h2> |
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</div> |
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</div> |
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We present FinISH, a [SRoBERTa](https://huggingface.co./sentence-transformers/nli-roberta-base-v2) base model fine-tuned on the [FIBO ontology](https://spec.edmcouncil.org/fibo/) dataset for domain-specific representation learning on the [**Semantic Search**](https://www.sbert.net/examples/applications/semantic-search/README.html) downstream task. |
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## SRoBERTa Model Architecture |
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Sentence-RoBERTa (SRoBERTa) is a modification of the pretrained RoBERTa network that uses siamese and triplet network structures to derive semantically meaningful sentence embeddings that can be compared using cosine-similarity. This reduces the effort for finding the most similar pair from 65 hours with RoBERTa to about 5 seconds with SRoBERTa, while maintaining the accuracy from RoBERTa. SRoBERTa has been evaluated on common STS tasks and transfer learning tasks, where it outperforms other state-of-the-art sentence embeddings methods. |
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Paper: [Sentence-BERT: Sentence Embeddings using Siamese BERT-Networks](https://arxiv.org/pdf/1908.10084.pdf). |
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Authors: *Nils Reimers and Iryna Gurevych*. |
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## Details on the downstream task (Semantic Search for Text Classification) |
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The objective of this task is to correctly classify a given term in the financial domain according to its prototypical hypernym in a list of available hypernyms: |
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* Bonds |
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* Forward |
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* Funds |
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* Future |
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* MMIs (Money Market Instruments) |
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* Option |
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* Stocks |
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* Swap |
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* Equity Index |
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* Credit Index |
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* Securities restrictions |
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* Parametric schedules |
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* Debt pricing and yields |
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* Credit Events |
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* Stock Corporation |
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* Central Securities Depository |
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* Regulatory Agency |
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This kind-based approach relies on identifying the closest hypernym semantically to the given term (even if they possess common properties with other hypernyms). |
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#### Data Description |
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The data is a scraped list of term definitions from the FIBO ontology website where each definition has been mapped to its closest hypernym from the proposed labels. |
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For multi-sentence definitions, we applied sentence-splitting by punctuation delimiters. We also applied lowercase transformation on all input data. |
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#### Data Instances |
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The dataset contains a label representing the hypernym of the given definition. |
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```json |
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{ |
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'label': 'bonds', |
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'definition': 'callable convertible bond is a kind of callable bond, convertible bond.' |
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} |
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``` |
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#### Data Fields |
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**label**: Can be one of the 17 predefined hypernyms. |
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**definition**: Financial term definition relating to a concept or object in the financial domain. |
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#### Data Splits |
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The data contains training data with **317101** entries. |
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#### Test set metrics |
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The representational learning model is evaluated on a representative test set with 20% of the entries. The test set is scored based on the following metrics: |
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* Average Accuracy |
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* Mean Rank (position of the correct label in a set of 5 model predictions) |
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We evaluate FinISH according to these metrics, where it outperforms other state-of-the-art sentence embeddings methods in this task. |
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* Average Accuracy: **0.73** |
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* Mean Rank: **1.61** |
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## Usage (Sentence-Transformers) |
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Using this model becomes easy when you have [sentence-transformers](https://www.SBERT.net) installed: |
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``` |
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git clone https://github.com/huggingface/transformers.git |
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pip install -q ./transformers |
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pip install -U sentence-transformers |
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``` |
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Then you can use the model like this: |
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```python |
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from sentence_transformers import SentenceTransformer, util |
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import torch |
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model = SentenceTransformer('yseop/roberta-base-finance-hypernym-identification') |
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# Our corpus containing the list of hypernym labels |
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hypernyms = ['Bonds', |
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\t\t\t'Forward', |
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\t\t\t'Funds', |
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\t\t\t'Future', |
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\t\t\t'MMIs', |
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\t\t\t'Option', |
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\t\t\t'Stocks', |
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\t\t\t'Swap', |
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\t\t\t'Equity Index', |
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\t\t\t'Credit Index', |
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\t\t\t'Securities restrictions', |
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\t\t\t'Parametric schedules', |
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\t\t\t'Debt pricing and yields', |
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\t\t\t'Credit Events', |
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\t\t\t'Stock Corporation', |
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\t\t\t'Central Securities Depository', |
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\t\t\t'Regulatory Agency'] |
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hypernym_embeddings = model.encode(hypernyms, convert_to_tensor=True) |
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# Query sentences are financial terms to match to the predefined labels |
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queries = ['Convertible bond', 'weighted average coupon', 'Restriction 144-A'] |
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# Find the closest 5 hypernyms of the corpus for each query sentence based on cosine similarity |
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top_k = min(5, len(hypernyms)) |
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for query in queries: |
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query_embedding = model.encode(query, convert_to_tensor=True) |
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# We use cosine-similarity and torch.topk to find the highest 5 scores |
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cos_scores = util.pytorch_cos_sim(query_embedding, hypernym_embeddings)[0] |
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top_results = torch.topk(cos_scores, k=top_k) |
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print("\ |
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\ |
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======================\ |
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\ |
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") |
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print("Query:", query) |
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print("\ |
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Top 5 most similar hypernyms:") |
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for score, idx in zip(top_results[0], top_results[1]): |
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print(hypernyms[idx], "(Score: {:.4f})".format(score)) |
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``` |
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## Usage (HuggingFace Transformers) |
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Without [sentence-transformers](https://www.SBERT.net), you can use the model like this: First, you pass your input through the transformer model, then you have to apply the right pooling-operation on-top of the contextualized word embeddings. |
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```python |
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from transformers import AutoTokenizer, AutoModel |
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import torch |
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#Mean Pooling - Take attention mask into account for correct averaging |
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def mean_pooling(model_output, attention_mask): |
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token_embeddings = model_output[0] #First element of model_output contains all token embeddings |
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input_mask_expanded = attention_mask.unsqueeze(-1).expand(token_embeddings.size()).float() |
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return torch.sum(token_embeddings * input_mask_expanded, 1) / torch.clamp(input_mask_expanded.sum(1), min=1e-9) |
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# Query sentences are financial terms to match to the predefined labels |
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queries = ['Convertible bond', 'weighted average coupon', 'Restriction 144-A'] |
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# Load model from HuggingFace Hub |
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tokenizer = AutoTokenizer.from_pretrained('yseop/roberta-base-finance-hypernym-identification') |
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model = AutoModel.from_pretrained('yseop/roberta-base-finance-hypernym-identification') |
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# Tokenize sentences |
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encoded_input = tokenizer(queries, padding=True, truncation=True, return_tensors='pt') |
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# Compute token embeddings |
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with torch.no_grad(): |
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model_output = model(**encoded_input) |
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# Perform pooling |
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query_embeddings = mean_pooling(model_output, encoded_input['attention_mask']) |
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print("Query embeddings:") |
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print(query_embeddings) |
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``` |
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**Created by:** [Yseop](https://www.yseop.com/) | Pioneer in Natural Language Generation (NLG) technology. Scaling human expertise through Natural Language Generation. |