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2024 | OriginalPaper | Buchkapitel

INDoRI: Indian Dataset of Recipes and Ingredients and Its Ingredient Network

verfasst von : Sandeep Khanna, Chiranjoy Chattopadhyay, Suman Kundu

Erschienen in: Complex Networks & Their Applications XII

Verlag: Springer Nature Switzerland

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Abstract

Exploring and comprehending the culinary heritage of a nation holds a captivating allure. It offers insights into the structure and qualities of its cuisine. The endeavor becomes more accessible with the availability of a well-organized dataset. In this paper, we present the introduction of INDoRI (Indian Dataset of Recipes and Ingredients), a compilation drawn from seven distinct online platforms, representing 18 regions within the Indian subcontinent. This comprehensive geographical span ensures a portrayal of the rich variety within culinary practices. Furthermore, we introduce a unique collection of stop words, referred to as ISW (Ingredient Stop Words), manually tuned for the culinary domain. We assess the validity of ISW in the context of global cuisines beyond Indian culinary tradition. Subsequently, an ingredient network (InN) is constructed, highlighting interconnections among ingredients sourced from different recipes. We delve into both the defining attributes of INDoRI and the communal dimensions of InN. Additionally, we outline the potential applications that can be developed leveraging this dataset. Addressing one of the applications, we demonstrated a research problem on InN with a simple weighted community detection algorithm. Furthermore, we provide a comparative analysis of the results obtained with this algorithm against those generated by two baselines.

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Fußnoten
1
Link to the supplementary material: https://​shorturl.​at/​gwzFN.
 
2
Link to the supplementary material: https://​shorturl.​at/​gwzFN.
 
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Metadaten
Titel
INDoRI: Indian Dataset of Recipes and Ingredients and Its Ingredient Network
verfasst von
Sandeep Khanna
Chiranjoy Chattopadhyay
Suman Kundu
Copyright-Jahr
2024
DOI
https://doi.org/10.1007/978-3-031-53472-0_20

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