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Bodhisattwa Prasad Majumder; Shuyang Li; Jianmo Ni; Julian McAuley

Abstract
Existing approaches to recipe generation are unable to create recipes for users with culinary preferences but incomplete knowledge of ingredients in specific dishes. We propose a new task of personalized recipe generation to help these users: expanding a name and incomplete ingredient details into complete natural-text instructions aligned with the user's historical preferences. We attend on technique- and recipe-level representations of a user's previously consumed recipes, fusing these 'user-aware' representations in an attention fusion layer to control recipe text generation. Experiments on a new dataset of 180K recipes and 700K interactions show our model's ability to generate plausible and personalized recipes compared to non-personalized baselines.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| recipe-generation-on-foodcom | Prior Name | BLEU-1: 28.046 BLEU-4: 3.211 BPE Perplexity: 9.516 D-1: 0.233 D-2: 2.08 Rouge-L: 24.794 |
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