Published September 20, 2020 | Version v1
Dataset Open

Towards Safety and Sustainability: Designing Local Recommendations for Post-pandemic World

  • 1. IIT Kharagpur
  • 2. MPI-SWS
  • 3. TU Munich

Description

Extended Version of The Paper:

Towards_Safety_and_Sustainability_Extended.pdf

Dataset Information:

List of files

Customer_Choice_Survey.csv
NYC_Google.csv
NYC_Yelp.csv
SF_Google.csv
SF_Yelp.csv

Field Details in Each File

  1. "Customer_Choice_Survey.csv": Local recommendations received on Google Local (Google Maps) for different customer locations in New York and San Francisco.
    Each respondent was first asked some basic details.
    Then 7 rounds of ranking questions were asked.
    In each round, they were given a list of 10 restaurants with random combinations of rating, distance and cuisine. They were asked to rank top 5 one-by-one out of those 10 provided. This becomes evident from the question titles provided the file.

     

  2. "NYC_Google.csv" and "SF_Google.csv": Local recommendations received on Yelp for different customer locations in New York and San Francisco.
    "customer_location": location of the customer where she gets recommendation
    "rank": rank of the restaurant in the recommended list
    "id": restaurant's id internal to google
    "latitude": latitude of restaurant's geographic coordinates
    "longitude": longitude of restaurant's geographic coordinates
    "name": name of the resturant
    "price_level": cheap/costly level
    "rating": average rating of the restaurant
    "rating_count": number of ratings collected for the restaurant
    "address": address of the restaurant

     

  3. "NYC_Yelp.csv" and "SF_Yelp.csv"
    "customer_location": location of the customer where she gets recommendation
    "rank": rank of the restaurant in the recommended list
    "id": restaurant's id internal to yelp
    "latitude": latitude of restaurant's geographic coordinates
    "longitude": longitude of restaurant's geographic coordinates
    "name": name of the resturant
    "rating": average rating of the restaurant
    "rating_count": number of ratings collected for the restaurant
    "address": address of the restaurant
    "url": link to the restaurant's yelp page

     

Link to Code Repository:
Pandemic-Aware Local Recommendation

Citation Information:
Please cite the following paper if you use this dataset.

"Towards Sustainability and Safety: Designing Local Recommendations for Post-pandemic World"
Gourab K Patro, Abhijnan Chakraborty, Ashmi Banerjee, Niloy Ganguly.
In proceedings of Fourteenth ACM Conference on Recommender Systems (RecSys-2020), Virtual Event, Brazil.

You can also use the following bibtex.

@inproceedings{10.1145/3383313.3412251,
author = {Patro, Gourab K and Chakraborty, Abhijnan and Banerjee, Ashmi and Ganguly, Niloy},
title = {Towards Safety and Sustainability: Designing Local Recommendations for Post-Pandemic World},
year = {2020},
isbn = {9781450375832},
publisher = {Association for Computing Machinery},
address = {New York, NY, USA},
url = {https://doi.org/10.1145/3383313.3412251},
doi = {10.1145/3383313.3412251},
booktitle = {Fourteenth ACM Conference on Recommender Systems},
pages = {358–367},
numpages = {10},
keywords = {COVID-19, Local Recommendation, Google Local, Yelp, Safety, Social Distancing, Sustainability, Bipartite Matching},
location = {Virtual Event, Brazil},
series = {RecSys '20}
}

 

Files

Customer_Choice_Survey.csv

Files (55.6 MB)

Name Size Download all
md5:325213ef566e3f43f180bf74819493df
271.6 kB Preview Download
md5:1c74aeda5b1e2ad5352b87c4bcc13190
10.9 MB Preview Download
md5:20e6cfa2dd178a29077e80b1133ceadf
17.0 MB Preview Download
md5:c20ab5feb6f6ea5cce6fb967984eefb6
9.2 MB Preview Download
md5:0503ff600e93b02580e573a7e4c43f2a
17.4 MB Preview Download
md5:bec1cf98fc0a1ac8be087018f831b3ca
902.0 kB Preview Download