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    evaluatedMark: 0.6632645768745475 },
  { url: 'http://www.annonce.cz/inzerat/audi-tt-rs-coupe-2-5-24757814-wmpxgj.html',
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    evaluatedMark: 0.5098675238319851 },
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Avarage error: 0.2017385607514776
