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Week 11
Week 11

... • Be able to understand and apply the concept of a Data Warehouse to database environments. • Be able to describe the concept of On Line Analytical Processing (OLAP) and show how it might be used. • Understand the seminaries and differences between DDS, OLAP, and Data Mining ...
Modeling Dyadic Data with Binary Latent Factors
Modeling Dyadic Data with Binary Latent Factors

... automatically adjusted during inference and depends on the amount of data and how many features it supports. Remarkably, we can do MCMC sampling using such infinite priors with essentially no computational penalty over the finite case. To derive these updates (e.g. for row i of the matrix ), it is u ...
An Intelligent Interface to the SAS® System for Use by Product Development Engineers
An Intelligent Interface to the SAS® System for Use by Product Development Engineers

... An intelligent interface to the SAS System for a limited set of data analysis needs is being developed at Sandia National Laboratories for use in a VAX/VMS environment. An existing data retrieval and analysis system has recently been updated and made interactive, with the intent that non-statisticia ...
No Slide Title
No Slide Title

... • Passive—embedded chips, smart toilets, • Active—self reporting ...
Discovery Informatics: AI Opportunities in Scientific Discovery
Discovery Informatics: AI Opportunities in Scientific Discovery

... The volume, variety, and velocity of data is surpassing our ability to interpret and understand observations and derive comprehensive models that lead to new discoveries. The availability of unprecedented amounts of data, sometimes referred to as “big data,” will require new approaches to tackle the ...
Generating Better Radial Basis Function Network for Large
Generating Better Radial Basis Function Network for Large

... Artificial neural networks have been very successful in the field of machine learning after a pioneering book ‘Parallel Distributed Processing’ [11]. There are two kinds of neural networks based on how the networks are interconnected – feed-forward neural networks and recurrent neural networks [12]. ...
IOSR Journal of Electronics and Communication Engineering (IOSR-JECE)
IOSR Journal of Electronics and Communication Engineering (IOSR-JECE)

... and judgmental process. Diagnostic decisions made by physicians are highly variable ( It may change from one physician to other ) . It is not based only on medical knowledge derived from books and literatures and data obtained from various pathological tests, but also depend largely on experience, j ...
Using Artificial Intelligence to Build Next Generation Solutions
Using Artificial Intelligence to Build Next Generation Solutions

... It may seem like stating the obvious, but different problems demand different solutions. At Blue Yonder, we follow a strictly scientific approach to problem solving. In order to make accurate forecasts of future events, we extract knowledge from data and combine this with some a priori knowledge, to ...
GA-Correlation Based Rule Generation for Expert Systems
GA-Correlation Based Rule Generation for Expert Systems

... membership matrix is allowed to have elements with values between 0 and 1. The summation of degrees of belongingness of a data point to all clusters is always equal to unity [10]. C. Mountain Clustering The mountain clustering approach is an uncomplicated technique to locate cluster centres. It is b ...
an Integrated Rule-Based Data Mining System
an Integrated Rule-Based Data Mining System

... pre-processing and typical data mining tasks such as classifying, clustering, and association rule mining. However, no inference engines for using the generated rules are provided. Because it is implemented in java, it is easy to embed WEKA’s tools in java applications. The capability to support emb ...
Visual-Interactive Segmentation of Multivariate Time Series
Visual-Interactive Segmentation of Multivariate Time Series

... provide an automated method for coloring segments of any result in a meaningful way. In this regard, we require similar segments to have similar colors while dissimilar segments should contain different colors. By that, the visual representation of labels can be used for analytical reasoning without ...
Business Intelligence using Software Agents
Business Intelligence using Software Agents

... Business intelligence applications are not a new trend any more, but they have become a must during the last decade as a basic tool used by the modern management. Business intelligence is the result of the natural evolution in time of decision support systems and expert systems, systems that aimed a ...
Novel Class Detection and Feature via a Tiered Ensemble Approach for Stream Mining
Novel Class Detection and Feature via a Tiered Ensemble Approach for Stream Mining

... learners for continuous data. While we could map continuous data into a discrete form to use with Naive Bayes exclusively, it requires deeper distribution analysis in order to perform such mapping without introducing undue error. It is easier to treat continuous data separately. The continuous data ...
Full Text PDF
Full Text PDF

... often predicted by Tenfold cross-validation. In the process, the whole data set is split into ten parts, nine parts of the data set is used for learning and one for testing. This procedure is repeated ten times. Here eight classification algorithms were experimented using WEKA Tool [13].The accuracy ...
Title Embedding intelligent decision making within complex dynamic
Title Embedding intelligent decision making within complex dynamic

... stream based computing with collaborative reasoning as realized through multi-agent system techniques. Often such a decision-making apparatus is embedded within the environment and hosted upon a distributed network of ambient devices. This approach is illustrated and exercised through an environment ...
Presentation - Laboratory for Systemic Modeling LAMS
Presentation - Laboratory for Systemic Modeling LAMS

... management. Three types of models:  Type 1: Categorization of business objects  Type 2: Description of relationships among business objects  Type 3: Description of business tasks ...
Times Series Discretization Using Evolutionary Programming
Times Series Discretization Using Evolutionary Programming

... Many real-world applications related with information processing generate temporal data [12]. Most of the cases, this kind of data requires huge data storage. Therefore, it is desirable to compress this information maintaining the most important features. Many approaches are mainly focused in data c ...
HG067-2.8_Lean Six Sigma - Session 4
HG067-2.8_Lean Six Sigma - Session 4

... • Defines a Common Language that is icon based and simple to understand by all employees. • Creates a Visual Connection between materials & information flows that impact company performance from the customer viewpoint. • Promotes a Common Mission among employees along the entire Value Stream. • Crea ...
powerpoint - University of York
powerpoint - University of York

... Requires individual web pages to be coded once for each paradigm rather than a single time, hence increasing costs. (However, by automating this, costs are made manageable) Current NLP capabilities are limited to problems of restricted scope. Instead of general-purpose NLP programs, they are better ...
WSN 21 (2015)
WSN 21 (2015)

... product or service. Market segmentation is thought to give a response to partitioning customers to groups of individuals with similar needs and buying patterns. With proper market segmentation, companies can target goals or field service to customers and thus improve productivity through marketing s ...
x - Amazon Web Services
x - Amazon Web Services

... * Fine print: if your kernel doesn’t satisfy certain technical requirements, lots of proofs break. E.g. convergence, mistake bounds. In practice, illegal kernels sometimes work (but not always). ...
Self Organizing Neural Networks perform different from statistical k
Self Organizing Neural Networks perform different from statistical k

... clusters as a parameter to the k-means algorithm. Seeds for new clusters are chosen by splitting on the variable with the largest distance. K-means splits a data set into the selected number of clusters by maximizing between -relative to within - cluster variation [Jain/Dubes 88]. K-means is an iter ...
Initialization of Big Data Clustering
Initialization of Big Data Clustering

... Fig. 3: Initialization and search phases wall times for parallellized Algorithm 1. gorithm 1 occasionally gives smaller errors than the repeated, full K-means++, especially for the smaller values of k. A strong variation of the SSE difference for the dataset S1 is most likely a consequence of higher ...
INTCare: A Knowledge Discovery based Intelligent Decision
INTCare: A Knowledge Discovery based Intelligent Decision

... paradigms, as a way to solve complex and dynamic problems, is not new (Fayyad et al., 1996; Weiss 1999; Santos 1999). However, a great part of these concepts (and architectures) need to be corroborated by real-world applications, in order to obtain a valuable feedback of its effective use. The inten ...
Big Data Analysis Using Computational Intelligence and Hadoop: A
Big Data Analysis Using Computational Intelligence and Hadoop: A

... Variability and Variety of Big Data. On the other hand, the other two V’s, Volume and Velocity may create serious challenges to existing CI techniques. The next two V’s that is Value ad Veracity are equally important and yet challenging in dealing with big data. Consequently, new CI techniques need ...
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Data (Star Trek)

Lieutenant Commander Data (/ˈdeɪtə/ DAY-tə) is a character in the fictional Star Trek universe portrayed by actor Brent Spiner. He appears in the television series Star Trek: The Next Generation and the feature films Star Trek Generations, Star Trek: First Contact, Star Trek: Insurrection and Star Trek: Nemesis.An artificial intelligence and synthetic life form designed and built by Doctor Noonien Soong, Data is a self-aware, sapient, sentient, and anatomically fully functional android who serves as the second officer and chief operations officer aboard the Federation starships USS Enterprise-D and USS Enterprise-E. His positronic brain allows him impressive computational capabilities. Data experienced ongoing difficulties during the early years of his life with understanding various aspects of human behavior and was unable to feel emotion or understand certain human idiosyncrasies, inspiring him to strive for his own humanity. This goal eventually led to the addition of an ""emotion chip"", also created by Soong, to Data's positronic net. Although Data's endeavor to increase his humanity and desire for human emotional experience is a significant plot point (and source of humor) throughout the series, he consistently shows a nuanced sense of wisdom, sensitivity, and curiosity, garnering immense respect from his peers and colleagues.Data is in many ways a successor to the original Star Trek‍ '​s Spock (Leonard Nimoy), in that the character offers an ""outsider's"" perspective on humanity, even briefly working with Spock in the two-part Next Generation episode, Unification.
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