![TM-LDA: Efficient Online Modeling of the Latent Topic Transitions in](http://s1.studyres.com/store/data/007743880_1-01da09e218e49e9e2b6ad48fdb66edb9-300x300.png)
Fuzzy Decision Tree for Data Mining of Time Series Stock
... analyze every simple change, we have used powerful fuzzy reasoning method in our algorithm. The general data-mining method (such as FDT) can then be used directly on the information database to uncover the rules for predicting the length of sample (i.e., the turning point of a stock market quotation ...
... analyze every simple change, we have used powerful fuzzy reasoning method in our algorithm. The general data-mining method (such as FDT) can then be used directly on the information database to uncover the rules for predicting the length of sample (i.e., the turning point of a stock market quotation ...
IOSR Journal of Computer Engineering (IOSR-JCE) e-ISSN: 2278-0661,p-ISSN: 2278-8727 PP 13-17 www.iosrjournals.org
... Potential eligible papers were selected and reviewed. Information extracted from the article was extracted and represented in a tabular form. The table includes 1) research goals, 2) diabetes type,3) data sets,4) software and technologies used and 5) the outcomes. ...
... Potential eligible papers were selected and reviewed. Information extracted from the article was extracted and represented in a tabular form. The table includes 1) research goals, 2) diabetes type,3) data sets,4) software and technologies used and 5) the outcomes. ...
BOAI: Fast alternating decision tree induction based on bottom-up evaluation
... knowledge discovery tasks. Several techniques have been developed to tackle the efficiency problem. However, there still be a large space to improve. For very large data sets, several techniques have been developed, mainly based on traditional decision trees. SLIQ [6] and Sprint [7] use new data str ...
... knowledge discovery tasks. Several techniques have been developed to tackle the efficiency problem. However, there still be a large space to improve. For very large data sets, several techniques have been developed, mainly based on traditional decision trees. SLIQ [6] and Sprint [7] use new data str ...
Tan`s, Steinbach`s, and Kumar`s textbook slides
... If there are K ‘real’ clusters then the chance of selecting one centroid from each cluster is small. ...
... If there are K ‘real’ clusters then the chance of selecting one centroid from each cluster is small. ...
5th Workshop on Data Mining for Medicine and Healthcare
... Hospital readmissions have become one of the key measures of healthcare quality. Preventable readmissions have been identified as one of the primary targets for reducing costs and improving healthcare delivery. However, most data driven studies for understanding readmissions have produced black box ...
... Hospital readmissions have become one of the key measures of healthcare quality. Preventable readmissions have been identified as one of the primary targets for reducing costs and improving healthcare delivery. However, most data driven studies for understanding readmissions have produced black box ...
A Recent Overview: Rare Association Rule Mining
... parallel to the Apriori. For generating itemset, we uses the item which having support less than minimum support. Apriori-Inverse reverses the downward-closure property of Apriori. For allowing Apriori Inverse to find near prefect rare itemsets, Koh et al. also proposed several modifications. Troian ...
... parallel to the Apriori. For generating itemset, we uses the item which having support less than minimum support. Apriori-Inverse reverses the downward-closure property of Apriori. For allowing Apriori Inverse to find near prefect rare itemsets, Koh et al. also proposed several modifications. Troian ...
Application of Particle Swarm Optimization in Data
... recognizing only the known attacks as well as to detecting suspicious activity that may cause new, unknown attack. The fuzzy c-means algorithm is sensitive to initialization and is easily trapped in local optima. On the other hand the particle swarm algorithm is a global stochastic tool which could ...
... recognizing only the known attacks as well as to detecting suspicious activity that may cause new, unknown attack. The fuzzy c-means algorithm is sensitive to initialization and is easily trapped in local optima. On the other hand the particle swarm algorithm is a global stochastic tool which could ...
Efficient Classification from Multiple Heterogeneous
... The coverage, fan-out, and correlation of each link can be computed when searching for matching attributes between different databases. These properties can be roughly computed by sampling techniques in an efficient way. Based on the properties of links, we use regression techniques to predict their ...
... The coverage, fan-out, and correlation of each link can be computed when searching for matching attributes between different databases. These properties can be roughly computed by sampling techniques in an efficient way. Based on the properties of links, we use regression techniques to predict their ...
Algorithms for Mining Sequential Patterns
... with the second kind of rules, business organizations can make more accurate and useful prediction and consequently make more sound decisions. A database consists of sequences of values or events that change with time is called a time-series database [Han and Kamber 2000], a time-series database rec ...
... with the second kind of rules, business organizations can make more accurate and useful prediction and consequently make more sound decisions. A database consists of sequences of values or events that change with time is called a time-series database [Han and Kamber 2000], a time-series database rec ...
SPATIAL DATA MINING TECHNIQUES M.Tech
... Neighborhood graphs will in general contain many paths which are irrelevant if not “mislead ing” for spatial data mining algorithms. For finding significant spatial patterns, we have to consider only certain classes of paths which are “leading away” from the starting object in some straightforward s ...
... Neighborhood graphs will in general contain many paths which are irrelevant if not “mislead ing” for spatial data mining algorithms. For finding significant spatial patterns, we have to consider only certain classes of paths which are “leading away” from the starting object in some straightforward s ...
On Efficient and Effective Association Rule Mining from XML Data
... efficient. This efficiency is very significant when the number of AR mining tasks to be performed is large. If the WHERE statement involve multiple concepts, then the query results of multiple database will be joined to generate the final result of this step. (a) Data Selection in IX-tree Recall tha ...
... efficient. This efficiency is very significant when the number of AR mining tasks to be performed is large. If the WHERE statement involve multiple concepts, then the query results of multiple database will be joined to generate the final result of this step. (a) Data Selection in IX-tree Recall tha ...
Data Mining Classification: Alternative Techniques Lecture Notes for
... with Euclidean measure: – High dimensional data u curse ...
... with Euclidean measure: – High dimensional data u curse ...
Introduction to Spatial Data Mining
... Patterns usually have to be defined in the spatial attribute subspace and not in the complete attribute space Longitude and latitude (or other coordinate systems) are the glue that link different data collections together People are used to maps in GIS; therefore, data mining results have to be summ ...
... Patterns usually have to be defined in the spatial attribute subspace and not in the complete attribute space Longitude and latitude (or other coordinate systems) are the glue that link different data collections together People are used to maps in GIS; therefore, data mining results have to be summ ...
Mining Associations Rules in Large Database
... •Lets take another example of {I2, I3, I5}which shows how the pruning is performed. The 2-item subsets are {I2, I3}, {I2, I5} & {I3,I5}. •BUT, {I3, I5} is not a member of L2 and hence it is not frequent violating Apriori Property. Thus We will have to remove {I2, I3, I5} ...
... •Lets take another example of {I2, I3, I5}which shows how the pruning is performed. The 2-item subsets are {I2, I3}, {I2, I5} & {I3,I5}. •BUT, {I3, I5} is not a member of L2 and hence it is not frequent violating Apriori Property. Thus We will have to remove {I2, I3, I5} ...
Nonlinear dimensionality reduction
![](https://commons.wikimedia.org/wiki/Special:FilePath/Lle_hlle_swissroll.png?width=300)
High-dimensional data, meaning data that requires more than two or three dimensions to represent, can be difficult to interpret. One approach to simplification is to assume that the data of interest lie on an embedded non-linear manifold within the higher-dimensional space. If the manifold is of low enough dimension, the data can be visualised in the low-dimensional space.Below is a summary of some of the important algorithms from the history of manifold learning and nonlinear dimensionality reduction (NLDR). Many of these non-linear dimensionality reduction methods are related to the linear methods listed below. Non-linear methods can be broadly classified into two groups: those that provide a mapping (either from the high-dimensional space to the low-dimensional embedding or vice versa), and those that just give a visualisation. In the context of machine learning, mapping methods may be viewed as a preliminary feature extraction step, after which pattern recognition algorithms are applied. Typically those that just give a visualisation are based on proximity data – that is, distance measurements.