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      <keyword>blokkbebyggelse</keyword>
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      <keyword>rekkehusbebyggelse</keyword>
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    <idPurp>Et av Bergens særtrekk er hvordan nye typer bebyggelse har kommet til og dannet nye årringer i byens arealmessige ekspansjon. Byantikvaren har klassifisert deler av bebyggelsesstrukturen i ensartede områder i Bergen i fem typer.</idPurp>
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