Extending the Multidimensional Data Model to Handle Complex Data
نویسندگان
چکیده
Data Warehousing and OLAP (On-Line Analytical Processing) have turned into the key technology for comprehensive data analysis. Originally developed for the needs of decision support in business, data warehouses have proven to be an adequate solution for a variety of non-business applications and domains, such as government, research, and medicine. Analytical power of the OLAP technology comes from its underlying multidimensional data model, which allows users to see data from different perspectives. However, this model displays a number of deficiencies when applied to non-conventional scenarios and analysis tasks. This paper presents an attempt to systematically summarize various extensions of the original multidimensional data model that have been proposed by researchers and practitioners in the recent years. Presented concepts are arranged into a formal classification consisting of fact types, factual and fact-dimensional relationships, and dimension types, supplied with explanatory examples from real-world usage scenarios. Both the static elements of the model, such as types of fact and dimension hierarchy schemes, and dynamic features, such as support for advanced operators and derived elements. We also propose a semantically rich graphical notation called X -DFM that extends the popular Dimensional Fact Model by refining and modifying the set of constructs as to make it coherent with the formal model. An evaluation of our framework against a set of common modeling requirements summarizes the contribution.
منابع مشابه
Simplification of Parameters in a Complex Catchment Model: a Daily Rainfal Data Generation Process
This paper describes the rainfall data generation processes, which were used to simplify the recharge model developed by Khazai and Spink. The principles of techniques used for single and two sites generation are discussed. The application of the techniques for extending the rainfall records at the existing stations and increasing arbitrarily the numbers of rain gauges within the catchment are ...
متن کاملA Probabilistic Multidimensional Data Model and Algebra for OLAP in Decision Support Systems
Although there are models defmed for multidimensional data, they lack a comprehensive way to handle uncertain data. Uncertainty is pervasive over the real world and any model to represent real world data that ignores uncertainty imposes unacceptable limitations on the decision support systems in which it is used. No methods were proposed so far to incorporate uncertainty into multidimensional d...
متن کاملBigCube: A Metamodel for Managing Multidimensional Data
New emerging scientific applications in geosciences, sensor and spatio-temporal domains require adaptive analysis frameworks that can handle large datasets with multiple dimensions. However, existing conceptual design strategies for multidimensional data using the data warehousing framework are not suitable for users, since they involve complex extensions of traditional database design framewor...
متن کاملOLAP Operators for Complex Object Data Cubes
Nowadays, multidimensional models are recognized to best reflect the decision makers’ analytical view of data. The classical multidimensional models were meant to analyze conventional data (numerical and categorical). However, they fail to handle data complexity, which is expressed by the multiplicity of data sources, the heterogeneity of formats, the diversity of structures, etc. To this end, ...
متن کاملExtending the E/R Model for the Multidimensional Paradigm
Multidimensional data modeling plays a key role in the design of a data warehouse. We argue that the Entity Relationship Model is not suited for multidimensional conceptual modeling because the semantics of the main characteristics of the paradigm cannot be adequately represented. Consequently, we present a specialization of the E/R model called Multidimensional Entity Relationship (ME/R) Model...
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:
- JCSE
دوره 1 شماره
صفحات -
تاریخ انتشار 2007