Michael Kalu Mba, Olutope Olufunso Olorunfemi, Adeyemi Adebayo Adeboye, Valli Asabe Takaya, Mohammed Gana Mohammed, Amechi Henry Igweze, Lailah Sanusi Gumbi, Ogochukwu Gina Onumonu
{"title":"尼日利亚住宅房地产价格指数:数据挖掘方法","authors":"Michael Kalu Mba, Olutope Olufunso Olorunfemi, Adeyemi Adebayo Adeboye, Valli Asabe Takaya, Mohammed Gana Mohammed, Amechi Henry Igweze, Lailah Sanusi Gumbi, Ogochukwu Gina Onumonu","doi":"10.11648/j.ijber.20231201.14","DOIUrl":null,"url":null,"abstract":": We employ the web-scraping technique and IMF residential property prices index methodology outlined in the latest RPPI practical compilation guide to compute the Nigeria’s Real Estate property Price Index (RPPI). The data was scraped from one of the largest real estate website in Nigeria hosting the largest real estate ads online. A total of 35,957 residential property sales ads comprising of 30,693 house and 5,264 flat/apartment listing from October 2021 to October 2022 was used for the study. A web scraping code was implemented in R-statistics to get the data. The asking price and other related information gotten from the website was used to compute the overall RPPI and its sub indices (for house and flats/apartments). The findings present the RPP national (total) index and sub-indices for the residential building (house) and residential flat/apartment. While the various data sources used in generating data for the RPPI computation have their advantages and disadvantages, the web scraping method provides a very timely approach, as data can be scraped almost immediately. This ensures timely policy decisions and implementation and also reduce the cost of survey tremendously if not totally. The study recommends the use of the web scraping technique in the generation of RPPI data to ensure timely policy decisions and internationally acceptable standard of RPPI compilation. With the web scraping approach to data collection, high frequency RPPI like monthly or weekly may be computed for the country.","PeriodicalId":38095,"journal":{"name":"International Journal of Economics and Business Research","volume":"80 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-02-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Residential Property Price Index in Nigeria: A Data Mining Approach\",\"authors\":\"Michael Kalu Mba, Olutope Olufunso Olorunfemi, Adeyemi Adebayo Adeboye, Valli Asabe Takaya, Mohammed Gana Mohammed, Amechi Henry Igweze, Lailah Sanusi Gumbi, Ogochukwu Gina Onumonu\",\"doi\":\"10.11648/j.ijber.20231201.14\",\"DOIUrl\":null,\"url\":null,\"abstract\":\": We employ the web-scraping technique and IMF residential property prices index methodology outlined in the latest RPPI practical compilation guide to compute the Nigeria’s Real Estate property Price Index (RPPI). The data was scraped from one of the largest real estate website in Nigeria hosting the largest real estate ads online. A total of 35,957 residential property sales ads comprising of 30,693 house and 5,264 flat/apartment listing from October 2021 to October 2022 was used for the study. A web scraping code was implemented in R-statistics to get the data. The asking price and other related information gotten from the website was used to compute the overall RPPI and its sub indices (for house and flats/apartments). The findings present the RPP national (total) index and sub-indices for the residential building (house) and residential flat/apartment. While the various data sources used in generating data for the RPPI computation have their advantages and disadvantages, the web scraping method provides a very timely approach, as data can be scraped almost immediately. This ensures timely policy decisions and implementation and also reduce the cost of survey tremendously if not totally. The study recommends the use of the web scraping technique in the generation of RPPI data to ensure timely policy decisions and internationally acceptable standard of RPPI compilation. 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Residential Property Price Index in Nigeria: A Data Mining Approach
: We employ the web-scraping technique and IMF residential property prices index methodology outlined in the latest RPPI practical compilation guide to compute the Nigeria’s Real Estate property Price Index (RPPI). The data was scraped from one of the largest real estate website in Nigeria hosting the largest real estate ads online. A total of 35,957 residential property sales ads comprising of 30,693 house and 5,264 flat/apartment listing from October 2021 to October 2022 was used for the study. A web scraping code was implemented in R-statistics to get the data. The asking price and other related information gotten from the website was used to compute the overall RPPI and its sub indices (for house and flats/apartments). The findings present the RPP national (total) index and sub-indices for the residential building (house) and residential flat/apartment. While the various data sources used in generating data for the RPPI computation have their advantages and disadvantages, the web scraping method provides a very timely approach, as data can be scraped almost immediately. This ensures timely policy decisions and implementation and also reduce the cost of survey tremendously if not totally. The study recommends the use of the web scraping technique in the generation of RPPI data to ensure timely policy decisions and internationally acceptable standard of RPPI compilation. With the web scraping approach to data collection, high frequency RPPI like monthly or weekly may be computed for the country.
期刊介绍:
IJEBR addresses economics/business issues that are clearly applicable to private profit-making entities and/or to public policy institutions. It considers all aspects of economics and business, including those combining business and economics with other fields of inquiry. IJEBR, unlike its sister title, Global Business and Economics Review, does not require that authors write papers about the impact/implications of, "globalisation". Instead, it publishes papers with local, national, regional and international implications. IJEBR is sponsored by the Business and Economics Society International.