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1757 lines (1756 loc) · 121 KB
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<?xml version='1.0' encoding='utf-8' ?>
<!-- build 9200.16.0204.1543 -->
<workbook source-platform='win' version='9.2' xmlns:user='http://www.tableausoftware.com/xml/user'>
<preferences>
<preference name='ui.encoding.shelf.height' value='24' />
<preference name='ui.shelf.height' value='26' />
</preferences>
<datasources>
<datasource caption='MortgageDefaulters (MortgageDefaulters)' inline='true' name='excel-direct.1hmmeam1lz2f6c1cfqyx7036rkob' version='9.2'>
<connection class='excel-direct' cleaning='no' compat='no' dataRefreshTime='' filename='C:\Users\avinita\Desktop\Data Science\MidTerm\MortgageDefaulters.xlsx' interpretationMode='0' password='' server='' username='' validate='no'>
<relation name='MortgageDefaulters' table='[MortgageDefaulters$]' type='table'>
<columns gridOrigin='A1:R10001:no:A1:R10001:0' header='yes' outcome='6'>
<column datatype='integer' name='Bo_Age' ordinal='0' />
<column datatype='real' name='Ln_Orig' ordinal='1' />
<column datatype='integer' name='Orig_LTV_Ratio_Pct' ordinal='2' />
<column datatype='integer' name='Credit_score' ordinal='3' />
<column datatype='string' name='First_home' ordinal='4' />
<column datatype='integer' name='Tot_mthly_debt_exp' ordinal='5' />
<column datatype='integer' name='Tot_mthly_incm' ordinal='6' />
<column datatype='integer' name='orig_apprd_val_amt' ordinal='7' />
<column datatype='integer' name='pur_prc_amt' ordinal='8' />
<column datatype='real' name='DTI Ratio' ordinal='9' />
<column datatype='string' name='Status' ordinal='10' />
<column datatype='string' name='OUTCOME' ordinal='11' />
<column datatype='string' name='State' ordinal='12' />
<column datatype='integer' name='Median_state_inc' ordinal='13' />
<column datatype='integer' name='UPB>Appraisal' ordinal='14' />
<column datatype='real' name='F16' ordinal='15' />
<column datatype='real' name='F17' ordinal='16' />
<column datatype='integer' name='F18' ordinal='17' />
</columns>
</relation>
<metadata-records>
<metadata-record class='column'>
<remote-name>Bo_Age</remote-name>
<remote-type>20</remote-type>
<local-name>[Bo_Age]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>Bo_Age</remote-alias>
<ordinal>0</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>Ln_Orig</remote-name>
<remote-type>5</remote-type>
<local-name>[Ln_Orig]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>Ln_Orig</remote-alias>
<ordinal>1</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<precision>15</precision>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"R8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>Orig_LTV_Ratio_Pct</remote-name>
<remote-type>20</remote-type>
<local-name>[Orig_LTV_Ratio_Pct]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>Orig_LTV_Ratio_Pct</remote-alias>
<ordinal>2</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>Credit_score</remote-name>
<remote-type>20</remote-type>
<local-name>[Credit_score]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>Credit_score</remote-alias>
<ordinal>3</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>First_home</remote-name>
<remote-type>130</remote-type>
<local-name>[First_home]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>First_home</remote-alias>
<ordinal>4</ordinal>
<local-type>string</local-type>
<aggregation>Count</aggregation>
<contains-null>true</contains-null>
<collation flag='1' name='LEN_RUS_S2' />
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"WSTR"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>Tot_mthly_debt_exp</remote-name>
<remote-type>20</remote-type>
<local-name>[Tot_mthly_debt_exp]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>Tot_mthly_debt_exp</remote-alias>
<ordinal>5</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>Tot_mthly_incm</remote-name>
<remote-type>20</remote-type>
<local-name>[Tot_mthly_incm]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>Tot_mthly_incm</remote-alias>
<ordinal>6</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>orig_apprd_val_amt</remote-name>
<remote-type>20</remote-type>
<local-name>[orig_apprd_val_amt]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>orig_apprd_val_amt</remote-alias>
<ordinal>7</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>pur_prc_amt</remote-name>
<remote-type>20</remote-type>
<local-name>[pur_prc_amt]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>pur_prc_amt</remote-alias>
<ordinal>8</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>DTI Ratio</remote-name>
<remote-type>5</remote-type>
<local-name>[DTI Ratio]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>DTI Ratio</remote-alias>
<ordinal>9</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<precision>15</precision>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"R8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>Status</remote-name>
<remote-type>130</remote-type>
<local-name>[Status]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>Status</remote-alias>
<ordinal>10</ordinal>
<local-type>string</local-type>
<aggregation>Count</aggregation>
<contains-null>true</contains-null>
<collation flag='1' name='LEN_RUS_S2' />
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"WSTR"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>OUTCOME</remote-name>
<remote-type>130</remote-type>
<local-name>[OUTCOME]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>OUTCOME</remote-alias>
<ordinal>11</ordinal>
<local-type>string</local-type>
<aggregation>Count</aggregation>
<contains-null>true</contains-null>
<collation flag='1' name='LEN_RUS_S2' />
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"WSTR"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>State</remote-name>
<remote-type>130</remote-type>
<local-name>[State]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>State</remote-alias>
<ordinal>12</ordinal>
<local-type>string</local-type>
<aggregation>Count</aggregation>
<contains-null>true</contains-null>
<collation flag='1' name='LEN_RUS_S2' />
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"WSTR"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>Median_state_inc</remote-name>
<remote-type>20</remote-type>
<local-name>[Median_state_inc]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>Median_state_inc</remote-alias>
<ordinal>13</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>UPB>Appraisal</remote-name>
<remote-type>20</remote-type>
<local-name>[UPB>Appraisal]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>UPB>Appraisal</remote-alias>
<ordinal>14</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>F16</remote-name>
<remote-type>5</remote-type>
<local-name>[F16]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>F16</remote-alias>
<ordinal>15</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"R8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>F17</remote-name>
<remote-type>5</remote-type>
<local-name>[F17]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>F17</remote-alias>
<ordinal>16</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<precision>15</precision>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"R8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='column'>
<remote-name>F18</remote-name>
<remote-type>20</remote-type>
<local-name>[F18]</local-name>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias>F18</remote-alias>
<ordinal>17</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='string' name='DebugRemoteType'>"I8"</attribute>
</attributes>
</metadata-record>
<metadata-record class='capability'>
<remote-name />
<remote-type>0</remote-type>
<parent-name>[MortgageDefaulters]</parent-name>
<remote-alias />
<aggregation>Count</aggregation>
<contains-null>true</contains-null>
<attributes>
<attribute datatype='integer' name='context'>0</attribute>
<attribute datatype='string' name='gridOrigin'>"A1:R10001:no:A1:R10001:0"</attribute>
<attribute datatype='boolean' name='header'>true</attribute>
<attribute datatype='integer' name='outcome'>6</attribute>
</attributes>
</metadata-record>
</metadata-records>
</connection>
<aliases enabled='yes' />
<column caption='Bo Age' datatype='integer' name='[Bo_Age]' role='measure' type='quantitative' />
<column caption='Credit score' datatype='integer' name='[Credit_score]' role='measure' type='quantitative' />
<column caption='First home' datatype='string' name='[First_home]' role='dimension' type='nominal' />
<column caption='Ln Orig' datatype='real' name='[Ln_Orig]' role='measure' type='quantitative' />
<column caption='Median state inc' datatype='integer' name='[Median_state_inc]' role='measure' type='quantitative' />
<column datatype='integer' name='[Number of Records]' role='measure' type='quantitative' user:auto-column='numrec'>
<calculation class='tableau' formula='1' />
</column>
<column caption='Outcome' datatype='string' name='[OUTCOME]' role='dimension' type='nominal' />
<column caption='Orig LTV Ratio Pct' datatype='integer' name='[Orig_LTV_Ratio_Pct]' role='measure' type='quantitative' />
<column datatype='string' name='[State]' role='dimension' semantic-role='[State].[Name]' type='nominal' />
<column caption='Tot mthly debt exp' datatype='integer' name='[Tot_mthly_debt_exp]' role='measure' type='quantitative' />
<column caption='Tot mthly incm' datatype='integer' name='[Tot_mthly_incm]' role='measure' type='quantitative' />
<column caption='Orig Apprd Val Amt' datatype='integer' name='[orig_apprd_val_amt]' role='measure' type='quantitative' />
<column caption='Pur Prc Amt' datatype='integer' name='[pur_prc_amt]' role='measure' type='quantitative' />
<layout dim-ordering='alphabetic' dim-percentage='0.284314' measure-ordering='alphabetic' measure-percentage='0.715686' show-structure='true' />
<semantic-values>
<semantic-value key='[Country].[Name]' value='"United States"' />
</semantic-values>
</datasource>
</datasources>
<worksheets>
<worksheet name='Sheet 1'>
<table>
<view>
<datasources>
<datasource caption='MortgageDefaulters (MortgageDefaulters)' name='excel-direct.1hmmeam1lz2f6c1cfqyx7036rkob' />
</datasources>
<datasource-dependencies datasource='excel-direct.1hmmeam1lz2f6c1cfqyx7036rkob'>
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<column caption='Tot mthly debt exp' datatype='integer' name='[Tot_mthly_debt_exp]' role='measure' type='quantitative' />
<column caption='Tot mthly incm' datatype='integer' name='[Tot_mthly_incm]' role='measure' type='quantitative' />
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<column-instance column='[Tot_mthly_debt_exp]' derivation='None' name='[none:Tot_mthly_debt_exp:qk]' pivot='key' type='quantitative' />
<column-instance column='[Tot_mthly_incm]' derivation='None' name='[none:Tot_mthly_incm:qk]' pivot='key' type='quantitative' />
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