Thursday, June 20, 2019

Data Mining Essay Example | Topics and Well Written Essays - 1000 words

Data Mining - Essay ExampleData mining has different components, but the most significant is delimit the problem, evaluating the available selective information and developing predictive models. (b). Associations discovery for the commodities sold to consumers helps the retailer or otherwise business to capture the unique identifier of a given product. finished capturing this information, the seller is able to analyze the data, so that they can learn the purchasing behavior of their nodes. The information derived is used to gage business-related strategies and applications like inventory management, marketing promotions and node relations management. (c). Mining information on web usage is very important to the effective management of websites, planning the development of adaptive websites, administering business and support services, increasing personalization as well as analyzing the flow of network traffic. Further, fast business growth of businesses forces businesses and cu stomers to face a different situation, where competition plays a study role in determining the strategies adopted by businesses (Greene, 2012). On the other hand, the customer is exposed to more options to choose from, therefore, will need to follow the businesses that visualise more value. For example, through and through discovering that many customers of a given business come from teen customers, may help the company to adjust their targeting outlook, to ensure that it targets the focus gathering better. (d). Clustering analysis traces groups of data entities or objects that are similar in certain aspects. The members of the different groups are supposed to be more similar to other members, and different from the members of other clusters. The target of clustering is the discovery of high-quality groups, where inter-cluster similarity is lowest but intra-cluster similarity is highest. Through establishing the highest inter-cluster similarity, the characteristics of the members are used or viewed as the customer information that can be tracked or targeted to increase the impact of the business, among the given high-quality cluster. 2. The reliability of data mining algorithms can be done through the validation of data mining modes. The process involves the assessment of the performance of the mining models against real data. This is done through understanding the characteristics and the quality of the algorithms before deploying them into the production milieu (Chung, & Gray, 1999). To determine the reliability of data mining algorithms, the deployment of different statistical validity measures is checked, towards determining whether there are issues in the model or the data. The reliability of data mining algorithms is determined through the scalability of the clustering techniques. This is particularly true, in the flake of large data sets, where space and speed are high. For example in the case that the algorithm in the case of a database that conta ins millions of records, shows linear or close to linear time complexity, which demonstrates that the reliability of the algorithm is high. The reliability of the algorithm can be determined throug

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