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Impressive performance for its size, however due to the small size, the model is highly specialised and lacks generalisation which in turn requires more dataset diversity. In this case, the model extracts data very well for single-sentence prompts, and is able to formulate the item currency based on the price. However, the model still extracts item_name as "Rayman fist" even when the item isnt even mentioned as is suppoed to be "na", because the dataset doesnt contain sentences that do not contain dirty data i.e. sentences not mentioning "Rayman fist". Model is also incapable of extracting price of "Rayman fist" if a user sentence is buying/selling multiple items with its individual prices, so im going to have to improve the model reasoning and increase the dataset for this sentence type. |