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Dhore, M. L.
- Updating Solving Set Algorithm of Outlier Detection to Reduce the Iterations for Large Data Sets and its Application to Fault Diagnosis
Authors
1 Vishwakarma Institute of Technology, Pune, Maharashtra, IN
2 Department of Computer Engineering, Vishwakarma Institute of Technology, Pune, Maharashtra, IN
Source
Data Mining and Knowledge Engineering, Vol 2, No 8 (2010), Pagination: 201-207Abstract
In this paper original solving set algorithm for detection of possible outliers is updated to have less iterations and thus there by less time. Original algorithm selects initial solving set randomly, but if we select this set carefully using standard deviation of each pattern with respect to each other. The proposed modification requires less time and iterations than the original one. Our experimentation says that this modification requires around half to two third of the patterns in the initial solving set having maximum standard deviation. We have compared original and updated algorithms using synthetic 2-dimensional data set, as described in section II, as well as a fault diagnosis data set from NASA. We observed that the time required to detect outliers for updated algorithm is less than the original one and it exhibit better outlier detection rate than the original one along with better cluster entropy. Better outlier detection rate, less time required and better cluster entropy are the key features of this modification that makes it suitable for outlier detection from large data sets.Keywords
Data Mining, Distance-Based Outlier, Fault Diagnosis, Outlier Detection.- Modified K-Nearest Neighbor Classifier Using Group Prototypes and its Application to Fault Diagnosis
Authors
1 Vishwakarma Institute of Technology, Pune, Maharashtra, IN
2 Department of Computer Engineering, Vishwakarma Institute of Technology, Pune, Maharashtra, IN
Source
Data Mining and Knowledge Engineering, Vol 2, No 5 (2010), Pagination: 82-85Abstract
This paper describes, proposed modified K-NN (MKNN) classifier, which calculates group prototypes from several patterns belonging to the same class and uses these prototypes for the recognition of patterns. Number of prototypes created by MKNN classifier is dependant on the distance factor d. More prototypes are created for smaller value of d and vice versa. We have compared performance of original KNN and MKNN using a fault diagnosis databases. From the experimentation, one can conclude that performance of MKNN is better than original KNN, in terms of percentage recognition rate and recall time per pattern, classification and classification time. MKNN, thus has increased the scope of original KNN for its application to large data sets, which was not possible previously.Keywords
KNN Classifier, Group Prototypes, Pattern Recognition, Document Classification, Fault Diagnosis.- Development of Bilingual Application Using Machine Transliteration:A Practical Case Study
Authors
1 Vishwakarma Institute of Technology, Pune, Maharashtra, IN
2 Walchand Institute of Technology, Solapur, Maharashtra, IN
Source
Artificial Intelligent Systems and Machine Learning, Vol 3, No 13 (2011), Pagination: 859-864Abstract
This paper focuses on the use of transliteration approach for customizable localization support in small scale systems. Marathi, Devanagari based Indian language is considered for the customizable localization support with the use of machine transliteration and translation memory using phonemic based pure consonant approach. Marathi is one of the widely spoken languages in India especially in the state of Maharashtra. This work addresses the support of local language access to the user to input and retrieve the data in Marathi language on the fly, whereas the data is stored in database in default language, English. User can interact with the system in Marathi as well as in English. The designed middleware plays the role of transliteration, when user uses the local language Marathi. Middleware reads data from the database and transliterate it into Devanagari script Marathi and display it to user. The transliteration from English to Devanagari and vice versa is carried out with the help of translation memory. This method solves the problem of extra space on the web server as well as complexity in web pages. This approach provides safe and cost effective method of localizing existing and new web pages stored on web server.
Keywords
Localization, Machine Transliteration, Phonemics, Translation Memory.- Cross Language Representation for Commercial Web Applications in Context of Indian Languages Using Phonetic Model
Authors
1 Department of Computer Engineering, Vishwakarma Institute of Technology, Pune, Maharashtra, IN
2 Department of E&TC, Walchand Institute of Technology, Solapur, Maharashtra, IN
Source
Artificial Intelligent Systems and Machine Learning, Vol 3, No 3 (2011), Pagination: 120-125Abstract
This paper focuses on an important aspect of how to provide access facilitation to the user in their native language. English continues to be ubiquitous as a mode of communication in higher education, judiciary, bureaucracy, and the corporate sector. Most of the web based commercial on-line applications such as Internet Banking, on-line shopping usually has their input and output user interfaces in English.This paper proposes an approach by which user can input the data in his native language as well can view the output reports in his native language with the little cost of computation required for transliteration. In this paper, the authors describe how to input data and get the information in Marathi, Hindi and Gujarati languages using transliteration based on the phonetic basis of Indian languages. Authors have focused more on transliterating the input in multiple languages into common representation using intermediate phonetic based code while maintaining the master database in world business language English.
Keywords
Phonemics, Phonetic Model, Transliteration, Multilingual Dictionary.- Fault Diagnosis Using Fuzzy Min-Max Neural Network Classifier
Authors
1 Computer Engineering Department, MAEER's Maharashtra Institute of Technology, Pune, Maharashtra, IN
2 Vishwakarma Institute of Technology, Pune, Maharashtra, IN
3 Department of Computer Engineering, Vishwakarma Institute of Technology, Pune, Maharashtra, IN
Source
Artificial Intelligent Systems and Machine Learning, Vol 2, No 7 (2010), Pagination: 95-101Abstract
In this paper Fuzzy Min-Max Neural Network (FMN) classifier is used for Fault Diagnosis applications. It is a 3-layer architecture and uses a fuzzy membership function to reason about class label of a test pattern. We have collected two standard data sets-one from UCI repository and other from NASA, for experimentation purpose. Each data set is divided in two sets namely Training and Testing, using around half of the patterns. Above said Neural Network is trained using Training set and its performance is calculated using Test set. From the calculated performance it is found that the FMN performs well for both the data sets. By observing training, one can note that training time is more, but since training needs to be done only once it should not be treated as a serious handicap. Recall time per pattern is very small, thus the given neural network can be used for real time fault diagnostic purpose.Keywords
Fault Diagnosis, Fuzzy Min Max Neural Network, NASA ADAPT Data, UCI Pump Data.- Modified Fuzzy Hyper-Line Segment Neural Network and it's Application to Heart Disease Detection
Authors
1 Vishwakarma Institute of Technology, Pune, Maharashtra, IN
2 Department of Computer Engineering, Vishwakarma Institute of Technology, Pune, Maharashtra, IN