--- title: AnalogyArcade emoji: 🏆 colorFrom: blue colorTo: yellow sdk: gradio sdk_version: 4.8.0 app_file: app.py pinned: false --- Check out the configuration reference at https://huggingface.co/docs/hub/spaces-config-reference ## Model Types ### Baseline For my dataset, I made use of relbert/analogy_questions on huggingface, which has all data in the format of: ``` "stem": ["raphael", "painter"], "answer": 2, "choice": [["andersen", "plato"], ["reading", "berkshire"], ["marx", "philosopher"], ["tolstoi", "edison"]] ``` For a baseline, if I were to do a random selection for answer to train the system on (so the stem analogy is compared to a random choice among the answers), then there would only be a 25% baseline for correct categorization and comparison. ### Bag-of-Words Model For comparison, I made use of my previously trained bag-of-words model from [our previous project](https://github.com/smhavens/NLPHW03). ### Fine-Tuning #### Dataset [analogy questions dataset](https://huggingface.co/datasets/relbert/analogy_questions) This database uses a text with label format, with each label being an integer between 0 and 3, relating to the 4 main categories of the news: World (0), Sports (1), Business (2), Sci/Tech (3). I chose this one because of the larger variety of categories compared to sentiment databases, with the themes/categories theoretically being more closely related to analogies. I also chose ag_news because, as a news source, it should avoid slang and other potential hiccups that databases using tweets or general reviews will have. #### Pre-trained model [sentence-transformers/all-MiniLM-L6-v2](https://huggingface.co/sentence-transformers/all-MiniLM-L6-v2) Because my focus is on using embeddings to evaluate analogies for the AnalogyArcade, I focused my model search for those in the sentence-transformers category, as they are readily made for embedding usage. I chose all-MiniLM-L6-v2 because of its high usage and good reviews: it is a well trained model but smaller and more efficient than its previous version. ### In-Context ## User Guide ### Introduction ### Usage ### Documentation ### Experiments ### Limitations