As virtual personal assistants have now penetrated the consumer market, with products such as Siri and Alexa, the research community has produced several works on task-oriented dialogue tasks such as hotel booking, restaurant booking, and movie recommendation. Assisting users to cook is one of these tasks that are expected to be solved by intelligent assistants, where ingredients and their corresponding attributes, such as name, unit, and quantity, should be provided to users precisely and promptly. However, existing ingredient information scraped from the cooking website is in the unstructured form with huge variation in the lexical structure, for example, '1 garlic clove, crushed', and '1 (8 ounce) package cream cheese, softened', making it difficult to extract information exactly. To provide an engaged and successful conversational service to users for cooking tasks, we propose a new ingredient parsing model that can parse an ingredient phrase of recipes into the structure form with its corresponding attributes with over 0.93 F1-score. Experimental results show that our model achieves state-of-the-art performance on AllRecipes and Food.com datasets.
翻译:由于虚拟个人助理现已进入消费者市场,例如Siri和Alexa等产品,研究界已就旅馆预订、餐厅预订和电影建议等面向任务的对话任务制作了若干作品。协助用户烹饪是预期由智能助理解决的任务之一,其中原料及其相应属性,如名称、单位和数量,应准确和及时地提供给用户。然而,从烹饪网站提取的现有成份信息处于未结构化的形式,在词汇结构上存在巨大差异,例如“1大蒜、粉碎”和“1(8盎司)包装奶油奶酪,软化”等,难以准确提取信息。为用户提供参与和成功的烹饪任务谈话服务,我们提议一个新的成份分类模型,能够将配方的成品短语分析成结构形式,其相应属性超过0.93个F1核心。实验结果显示,我们的模型在全Recipes和Food中取得了最先进的性能。