Stoke-on-Trent North: Seat, Ward and Prediction Details

Stoke-on-Trent North: Overview

 Prediction: CON hold 

MP at 2019: Jonathan Gullis  (CON)
County/Area: Staffordshire (West Midlands)
Electorate: 84,357
Turnout: 47.6%
2019
Votes
2019
Share
Predicted
Votes
CON20,97452.3%51.0%
LAB14,68836.6%39.5%
Brexit2,3745.9%3.8%
LIB1,2683.2%1.8%
Green5081.3%1.8%
OTH3220.8%2.1%
CON Majority6,28615.7%Pred Maj 11.5%
Chance of
winning
CON
74%
LAB
26%
Brexit
0%
LIB
0%
Green
0%
OTH
0%

Stoke-on-Trent North : Political and Demographic indicators

The table below shows some political and demographic numerical indicators for the Stoke-on-Trent North constituency, the 'West Midlands' area and nation.

The political measures include the three axes: Economic (Left/Right), National (Global/National) and Social (Liberal/Conservative). (what does this mean).

The demographic measures are from the 2011 Census and include categories relating to national identity, economic activity, health and education. These categories are those which have the most relevance to political attitudes.

Indicator Seat West MidlandsAll GB
Party Winner 2019CONCONCON
Party Winner 2017LABCONCON
Party Winner 2015LABCONCON
Economic Position4° Left3° Right
National Position16° Nat7° Nat
Social Position10° Con6° Con
TribeSomewheres
EU Leave %73%59%52%
British Identity24%29%29%
Good Health42%45%48%
UK Born93%89%87%
Good Education25%36%39%
Good Job36%48%51%
High SEC33%46%51%
Average Age48.448.648.3
ABC1 Class35%49%54%

Stoke-on-Trent North ranks #7 for "Leave", #408 for "Right", #24 for "National" and #22 for "Social" out of 650 seats.

Indicators: Legend and Descriptions

Indicators : Legend and Descriptions

The colour scheme used in the table above is explained in the legend table below. The eight census indicators (British Identity, Good Health, UK Born, Good Education, Good Job, High SEC, Average Age and AB1 Class) all use the same 'Census' colour scheme indicating whether the area's level is above or below the national average.

TopicCat 1Cat 2Cat 3Cat 4Cat 5
Economic PositionVery LeftLeftCentristRightVery Right
National PositionVery GlobalGlobalCentristNationalVery Nat
Social PositionVery LibLiberalModerateConservativeVery Cons
EU Leave %Very RemainRemainBalancedLeaveVery Leave
CensusVery LowLowMediumHighVery High

Indicator definitions are given in terms of political data definitions or census categories:

IndicatorCensus
Question
Definition / Included Census Categories
Party WinnerArea party winner : actual election result or projected by Electoral Calculus
Economic PositionEconomic position between 100° Left and 100° Right, estimated by Electoral Calculus from political and demographic data.
National PositionNational position between 100° Global and 100° National, estimated by Electoral Calculus from political and demographic data.
Social PositionSocial position between 100° Liberal and 100° Conservative, estimated by Electoral Calculus from political and demographic data.
TribeTribe group dominant in the area. Can be: Strong Left, Traditionalists, Progressives, Centrists, Somewheres, Kind Young Capitalists, or Strong Right. See details.
EU Leave %EU Referendum vote share for 'Leave' : actual result or estimate
British IdentityNational Identity (KS202)Those answering British, British-Other, or Scottish-British
Good HealthHealth (KS301)Those answering 'Very Good Health'
UK BornCountry of Birth (QS203)Those answering England, Northern Ireland, Scotland, Wales, GB Other, or UK Other
Good EducationHighest level of Qualification (QS501)Level 3 (A-level equivalent) or Level 4+ (degree equivalent)
Good JobOccupation (QS606)Occupation codes 1xx to 4xx (Managers, Professionals, Associates, and office workers)
High SECNS-SeC of Household Reference Person (QS609)National Statistics Socio-economic Classification from 1 to 4 (higher managers and professionals, lower managers and professionals, intermediate occupations, small employers and self-employed).
Average AgeAge (QS103)Average age of adults (18 years and above)
ABC1 ClassApproximated Social Grade (QS611)Approximated social grades A, B and C1

Stoke-on-Trent North: Map

Boundary Lines courtesy of Ordnance Survey OpenData © Crown copyright 2020, Map © OpenStreetMap contributors

Predicted ward-by-ward votes for Stoke-on-Trent North

This table shows the predicted future general election result broken down over each ward in the seat of Stoke-on-Trent North.

Stoke-on-Trent NorthActualPredicted Results
DistrictWardElectorate
2019
GE19
Winner
Pred
Winner
CON
Votes
LAB
Votes
LIB
Votes
Brexit
Votes
Green
Votes
MIN
Votes
OTH
Votes
Total
Votes
Newcastle-under-LymeKidsgrove and Ravenscliffe7,187CONCON2,3181,42977227800904,221
Newcastle-under-LymeNewchapel and Mow Cop1,884CONCON6693351938210251,107
Newcastle-under-LymeTalke and Butt Lane7,032CONLAB1,8481,89880141710934,131
Stoke-on-TrentAbbey Hulton and Townsend15CONCON44000008
Stoke-on-TrentBaddeley, Milton and Norton9,262CONCON3,4281,5091061969701065,442
Stoke-on-TrentBirches Head and Central Forest Park36CONCON1191100022
Stoke-on-TrentBradeley and Chell Heath3,673CONCON1,0379422972310482,159
Stoke-on-TrentBurslem Central3,932LABLAB9871,1413270390402,309
Stoke-on-TrentBurslem Park3,787CONCON1,0169794978450582,225
Stoke-on-TrentEtruria and Hanley1,180LABLAB261380101813010692
Stoke-on-TrentFord Green and Smallthorne4,207CONCON1,1911,0615083420472,474
Stoke-on-TrentGoldenhill and Sandyford4,291CONCON1,5307804285380462,521
Stoke-on-TrentGreat Chell and Packmoor7,687CONCON2,5141,532931859301004,517
Stoke-on-TrentLittle Chell and Stanfield4,054CONLAB9991,07339169460562,382
Stoke-on-TrentMoorcroft3,642LABLAB8841,0912855340492,141
Stoke-on-TrentSneyd Green2,867CONCON8476603463340461,684
Stoke-on-TrentTunstall3,561LABLAB9121,0093863320392,093
 Total68,297CONCON20,45615,8327271,544716085340,128

Please note that general election results and electorates are not officially made available ward-by-ward. The numbers shown are our best estimates for these figures, but are not official. The wards used are those of 2020.


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