Review of Domain Driven Data Mining
نویسنده
چکیده
This paper presents a review of three papers based on Domain Driven Data Mining. In the first paper [1], Domain Driven Data Mining is proposed as a methodology and a collection of techniques targeting domain driven actionable knowledge delivery to drive Knowledge Discovery from Data (i.e. KDD) toward enhanced problem-solving infrastructure and capabilities in real business state of affairs. The second paper [2] emphasizes the development of methodologies, techniques, and tools for actionable knowledge discovery and delivery by incorporating relevantly ubiquitous intelligence surrounding data-mining-based problem solving. In the third paper [3] an application for intelligent credit scoring has been discussed using domain driven data mining techniques.
منابع مشابه
Data-Driven Approaches to Improve the Quality of Clinical Processes: A Systematic Review
Background: Considering the emergence of electronic health records and their related technologies, an increasing attention is paid to data driven approaches like machine learning, data mining, and process mining. The aim of this paper was to identify and classify these approaches to enhance the quality of clinical processes. Methods: In order to determine the knowledge related to the research ...
متن کاملEnhancing Learning from Imbalanced Classes via Data Preprocessing: A Data-Driven Application in Metabolomics Data Mining
This paper presents a data mining application in metabolomics. It aims at building an enhanced machine learning classifier that can be used for diagnosing cachexia syndrome and identifying its involved biomarkers. To achieve this goal, a data-driven analysis is carried out using a public dataset consisting of 1H-NMR metabolite profile. This dataset suffers from the problem of imbalanced classes...
متن کاملA Review on the Role of Domain Driven Data Mining
Knowledge Discovery and Data Mining (KDD) refer to the overall process of discovering useful knowledge from data. It involves evaluation and possibly interpretation of the patterns to make decision of what qualifies as knowledge and gives choice of encoding schemes, preprocessing, sampling, and projections of data prior to data mining step. KDD applications in the real world can be as diverse a...
متن کاملDomain Driven Data Mining Challenges Prospects
The data driven mining technology was applied in the most of the existing behavior here we assume the strategy of domain driven data mining and utilize Real word business requirements and problems are and prospects. Data driven business world is heading—and what challenges and opportunities CEOs see in 80% place data mining and analysis as the second-most their organization's growth prospects. ...
متن کاملA comparison between knowledge-driven fuzzy and data-driven artificial neural network approaches for prospecting porphyry Cu mineralization; a case study of Shahr-e-Babak area, Kerman Province, SE Iran
The study area, located in the southern section of the Central Iranian volcano–sedimentary complex, contains a large number of mineral deposits and occurrences which is currently facing a shortage of resources. Therefore, the prospecting potential areas in the deeper and peripheral spaces has become a high priority in this region. Different direct and indirect methods try to predict promising a...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2013