Address Spine – UK address level property information
收藏Snowflake2022-04-12 更新2024-05-01 收录
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资源简介:
CACI’s Address Spine is made up of key property level variables linked to an address or UDPRN that come from a range of sources, combined and deduplicated by CACI’s team of data scientists to create a single core residential property file.
The file of over 29m residential addresses includes variables such as property type, number of rooms, tenure, estimated current house price, energy consumption, geo-location and many more.
In addition to the ‘real’ data, CACI have imputed variables such as the type of property or current house price value using geospatial modelling techniques combined with known data on the same street or in the same postcode to increase the volume of data available.
The variables can be coded against your address data using a UDPRN or can be queried based on geographical identifiers.
Tables Included:
- Current UK PAF UDPRN with variables appended
Fields Included:
CACI’s Address Spine is made up of key property level variables linked to an address or UDPRN that come from a range of sources, combined and deduplicated by CACI’s team of data scientists to create a single core residential property file.
The file of over 29m residential addresses includes variables such as property type, number of rooms, tenure, estimated current house price, energy consumption, geo-location and many more.
In addition to the ‘real’ data, CACI have imputed variables such as the type of property or current house price value using geospatial modelling techniques combined with known data on the same street or in the same postcode to increase the volume of data available.
The variables can be coded against your address data using a UDPRN or can be queried based on geographical identifiers.
Tables Included:
- Current UK PAF UDPRN with variables appended
Fields Included:
Category Variable Label
Address Unique Delivery Point Reference Number
Address Address line 1
Address Address line 2
Address Address line 3
Address Address line 4
Address Address line 5
Address Address line 6
Address Address line 7
Address Address line 8
Address postcode
Geolocation Latitude
Geolocation Longitude
Geolocation Northing
Geolocation Easting
Geographical admin codes lsoa11
Geographical admin codes msoa11
Geographical admin codes region11
Geographical admin codes ualad11
Geographical admin codes ctyua11
Geographical admin codes region code
Home Multi residency flag
Home PAF household count
Home Residential flag
Home Housing tenure
Dwelling Total dwelling footprint in square metres
Dwelling No of PAF households per dwelling
Dwelling Dwelling footprint per household in square metres
Property EPC inspection date
Property Property age band (For E&W only)
Property Flag to indicate origin of property age
Property No of extensions
Property No of habitable rooms
Property Property type
Property Flag to indicate origin of house type
Property Roof type
Property Wall type
Property Glazing type
Property - Price Last sold price
Property - Price Date last sold
Property - Price Current estimated price
Property - Price Estimated price per square metre
Property - Floors Floor level
Property - Floors Top floor flag
Property - Floors Mid floor flag
Property - Floors Flat story count
Property - Floors Flag to indicate origin of flat storey count
Property - Floors Total Floor areas in square metres
Property - Environment Environmental impact
Property - Environment Wind turbine count
Property - Environment Solar water heating
Property - Environment Current energy rating/efficiency
Property - Environment Potential energy rating/efficiency
Property - Energy Main heat radiator
Property - Energy Mainheat energy efficiiency
Property - Energy Mains gas
Property - Energy Energy tariff
Property - Energy Energy consumption current
Property - Energy Energy consumption potential
Postcode - Broadband speed Ultrafast
Example Use Case:
1) Join the property attributes to your customer data using UDPRN to inform decisions on the type of products your customers may be interested in eg promote first time buyer mortgages to those in privately rented accommodation.
2) Understand information about a particular region such as average house price.
提供机构:
CACI Ltd
创建时间:
2022-04-12
搜集汇总
数据集介绍

背景与挑战
背景概述
CACI的Address Spine是一个整合多源数据的英国住宅房产核心文件,涵盖超过2900万个地址的房产类型、房间数、产权、房价估计和能耗等变量,并利用地理空间建模技术补充估算数据。该数据集支持通过UDPRN或地理标识进行查询,适用于客户数据分析或区域洞察等应用场景。
以上内容由遇见数据集搜集并总结生成



