Smart Healthcare System Design. Группа авторов
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Название: Smart Healthcare System Design

Автор: Группа авторов

Издательство: John Wiley & Sons Limited

Жанр: Программы

Серия:

isbn: 9781119792239

isbn:

СКАЧАТЬ How does a medical data make accuracy from unstructured data?

       • How does a business influence unique varieties of data like social media data, sentiment data, multimedia, etc.?

      1.1.4 Behavioral Analysis

      Behavioral analysis deals with how a business influences complicated data to develop advanced models for

       • Motivating results

       • Making a medical budget

       • Motivating revolution in medical approach

       • Cultivating long-term consumer fulfilment.

      1.1.5 Data Interpretation

      The probable questions in data interpretation are

       • What new analyses can be done from the available data?

       • Which data should be analyzed for new product innovation?

      1.1.6 Classification

      Data classification is the task of applying computer vision and machine learning algorithms to extract meaning from a medical data. This could be as simple as assigning a label to the contents of an image, or data it could be as advanced as interpreting the contents of a data and returning a human-readable sentence [18]. Image and signal classification, at the very core, is the task of assigning a label to a data from a pre-defined set of categories. In practice, this means that given an input image, the task is to analyze the image and return a label that categorizes the image. This label is (almost always) from a pre-defined set. Open-ended classification problems are rarely seen when the list of labels is infinite [2].

State Epileptic state
1 Postictal state
2 Interictal state
3 Preictal state
4 Ictal state

      Since the postictal and interictal states have signal characteristics that are similar (both represent nonictal states), it was necessary to place the states next to each other (i.e. States 1 and 2). This way, if State 2 is misclassified as State 1, or vice versa, then the average of several classifications will also be in the range of States 1 and 2. If these states were defined as States 1 and 4, the average of several classifications would result in increased misclassifications of these states as States 2 or 3, which is incorrect [20].

      The reminder of paper is organized as follows. Section 1.2, big data medical dataset prediction and its related work, Section 1.3 discussed about Hybrid Hierarchical clustering feature subsets classifier algorithm, Section 1.4 presents proposed system and existing systems experimental results comparison. Finally, Section 1.5 provides the concluding remarks and future scope of the work.

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