Difference between revisions of "ANLY482 AY2016-17 T2 Group18"

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<div style="background: #F5FFFA; padding: 12px; font-family: Arimo; font-size: 18px; font-weight: bold; line-height: 1em; text-indent: 15px; border-left: #2E8B57 solid 32px;"><font color="##4682B4">Project Description</font></div>
 
<div style="background: #F5FFFA; padding: 12px; font-family: Arimo; font-size: 18px; font-weight: bold; line-height: 1em; text-indent: 15px; border-left: #2E8B57 solid 32px;"><font color="##4682B4">Project Description</font></div>
 
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Hospital X is a pioneer tertiary hospital that provides a comprehensive range of medical and rehabilitative services for children, adolescents, adults and the elderly. This project plans to make use of the dataset provided by our project sponsor to analyse if there is any relationship between the variables and to create a predictive model for likelihood of a patient in defaulting appointments.
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Hospital X is a pioneer tertiary hospital that provides a comprehensive range of medical and rehabilitative services for children, adolescents, adults and the elderly. Patients can be categorised according to their appointments with a doctor, a psychologist or even both. This project plans to make use of the dataset to analyse if there is any relationship between the variables and to create a predictive model for likelihood of a patient in defaulting appointments.
  
 
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Revision as of 16:22, 11 January 2017


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Project Description


Hospital X is a pioneer tertiary hospital that provides a comprehensive range of medical and rehabilitative services for children, adolescents, adults and the elderly. Patients can be categorised according to their appointments with a doctor, a psychologist or even both. This project plans to make use of the dataset to analyse if there is any relationship between the variables and to create a predictive model for likelihood of a patient in defaulting appointments.