63 research outputs found
Clustering Menggunakan Algoritma DBSCAN (Density-Based Spatial Clustering of Applications with Noise) untuk Data Hasil Produksi Potensi Pertanian Studi kasus : Kabupaten Gresik
DBSCAN(Density-Based Spatial Clustering of Aplication with Noise) Algprthm is a clustering algorithm which is developed by density-based. This algorthm make clusters area where they have their own high density, and find those clusters in arbitrary shape in spatial database with noise. On this method, noise is used to present area which they have low density. That noise is used to be apart area where they have different cluster, on object in data spatial. To find a cluster, DBSCAN is used to a set maximum density point connected by Eps and MinPts parameter. Eps parameter is used to determine radius of set points of different cluster and MinPts parameter used to give constraint of points number which to be part of cluster in Eps radius
ESTIMASI RELIABILITAS MENGGUNAKAN ESTIMATOR MAKSIMUM LIKELIHOOD YANG DIMODIFIKASI DARI DISTRIBUSI EKSPONENSIAL
The estimation of reliability is an estimation that describes
an assessment of reliability of particular component, in which and are
independent random variables where represents the strength and represents
the stress. The most important element in this estimation is the existence of
parameters from distribution random variables and . In this thesis, we
discussed the estimation of reliability of two parameters
exponential distribution where and had common location parameter but
different scale parameter. Scale parameters were estimated using a modified
maximum likelihood estimator, while location parameter was estimated using
consistent alternative estimator. In the data simulation, we calculate the
confidence interval of using asymptotic distribution of . The result of the
present study shows that for , , and samples with
, and , in observation interval with 95%
confidence interval
PENERAPAN PENDEKATAN BARU METODE FUZZY-WAVELET DALAM ANALISIS DATA RUNTUN WAKTU A NEW APPROACH OF FUZZY-WAVELET METHOD�S IMPLEMENTATION IN TIME SERIES ANALYSIS
Recently, many soft computing methods have been used and implemented in
time series analysis. One of the methods is fuzzy hybrid model which has been
designed and developed to improve the accuracy of time series prediction.
Popoola has developed a fuzzy hybrid model which using wavelet
transformation as a pre-processing tool, and commonly known as fuzzy-wavelet
method. In this thesis, a new approach of fuzzy-wavelet method has been
introduced. If in Popoola�s fuzzy-wavelet, a fuzzy inference system is built for
each decomposition data, then on the new approach only two fuzzy inference
systems will be needed. By that way, the computation needed in time series
analysis can be pressed.
The research is continued by making new software that can be used to
analyze any given time series data based on the forecasting method applied. As a
comparison there are three forecasting methods implemented on the software,
i.e. fuzzy conventional method, Popoola�s fuzzy-wavelet, and the new approach
of fuzzy-wavelet method. The software can be used in short-term forecasting
(single-step forecast) and long-term forecasting. There are some limitation to the
software, i.e. maximum data can be predicted is 300, maximum interval can be
built is 7, and maximum transformation level can be used is 10. Furthermore, the
accuracy and robustness of the proposed method will be compared to the other
forecasting methods, so that can give us a brief description about the accuracy
and robustness of the proposed method
PENENTUAN KUALITAS AIR MINUM KEMASAN MENGGUNAKAN JARINGAN SYARAF TIRUAN (STUDI KASUS : AIR KEMASAN GALON �QANNAT� YOGYAKARTA)
Artificial neural network (ANN) is a clone of the human brain way of
thinking. Neural network is implemented by using a computer program that can
solve a number of calculations during the learning process. One of the kinds of
neural networks is a single-layer perceptron feedfoward.
The quality of bottled water is determined by the elements contained in
the water with a predetermined standard. By using a single-layer perceptron
neural network feedfoward, quality drinking water to be packaged can be
determined, so that bottled water is consumable.
This research tries to build an artificial neural network system which can
identify that bottled water is not feasible or appropriate to be packed with the
input data elements contained in water. Every element of water is then normalized
through the process of training and testing.
The process of training and testing conducted by the various values α
and θ. All of the training and testing process, produce average of network
performance with 87,269% accuracy, so that a single-layer perceptron feedfoward
method can be used to determine the quality of bottled water that suitable with
drinking water quality standard
Uji Distribusi Normal Multivariat dengan Kendala Mean Terurut
In this thesis, the test ordered means of multivariate normal distribution
against all alternatives for case when the covariance matrices are known. Use the
likelihood ratio method and isotonic application, we obtain the test statistic and
study its null distribution. to propose the critical values and simulation study for
compute power of test and p-value from bivariate normal distribution
ANALISIS KLUSTER UNTUK PEMETAAN MUTU PENDIDIKAN DI ACEH
Cluster analysis is a multivariate technique that purpose for grouping object
(or items) based on their characteristics. The object in a cluster has homogeny
characteristic than the other cluster.
The main steps in cluster analysis is to obtain clustering methods and
distance measures. The problems examined in this study is how to classify the
regencies in Aceh based on the National Examination�s result at junior high school
in 2010 used Mahalanobis distance to measure similarity and hierarchical clustering
use average linkage.
The results of data processing using Matlab showed that based on the
results of National Examination at the junior high school in 2010, the regencies can
be classified into two groups. The first group consist of twenty regencies with good
quality in education and a second group consist of three regencies that are still lack
in education quality
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