23 research outputs found

    Survey on Automated Bugs Triage System

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    Nowadays IT companies is spending more than 40 percent of their cost in fixing software bugs, traditonally these bugs are fixed by manual assignement to a particular developer , this approach causes too much dependency, the new and alternative approach is the bug triage system which fix the bug automatically , which automatically assign the reported bug to a develop which decreases the time and cost in in manual work, different classification techniques are used to conduct automatic bug triage. In this paper, we propose to apply machine learning techniques to assist in bug triage to predict which developer should be assigned on the bug based on its description by applying text categrorization . We will address the problem of data reduction for bug triage, i.e. How the quality of bug data would be improved

    System for Effective Data Processing Using Flaw Traige

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    A Software bug is an error, flaw, failure or fault in a computer program or system that causes it to produce an incorrect or unexpected result. When bugs arise, we have to fix them which is not easy. Most of the companies spend 40% of cost to fixing bugs. The process of fixing bug is bug triage or bug assortment. Triaging this incoming report manually is error prone and time consuming .software company pays most of their cost in dealing with these bugs. In this paper we classifying the bugs so that we can determine the class of the bug at which class that bug is belongs and after applying the classification we can assign the particular bug to the exact developer for fixing them. This is efficient. In this paper we are using combination of two classification techniques , na�ve bayes (NB) and k nearest neighbor(KNN).In modern days company uses automatic bug triaging system but in Traditional manual Triaging system is used which is not efficient and taking too much time .For triaging the bug we require bug detail which is called bug repository. In this paper we also reducing the bug dataset because if we having more data with unused information which causes problem to assigning bugs. For implementing this we use instance selection and feature selection for reducing bug data. This paper describe the whole procedure of bug allotment from starting to end and at last result will show on the basis of graph .Graph represents the maximum possibility of class means at which class the bug will belongs

    A Survey Paper on Software Bug Classification Techniques using Data Mining

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    A Software bug is a blunder, blemish, disappointment or deficiency in a PC project or framework that causes it to deliver an off base or surprising result. At the point when bugs emerge, we need to settle them which is difficult. The greater part of the organizations burn through 40% of expense to settling bugs. The procedure of altering bug will be bug triage or bug collection. Triaging this approaching report physically is blunder inclined and tedious .programming organization pays the greater part of their expense in managing these bugs. In this paper we arranging the bugs with the goal that we can decide the class of the bug at which class that bug is has a place and in the wake of applying the order we can dole out the specific bug to the precise designer for altering them. This is effective. In this paper we are utilizing mix of two grouping strategies, guileless bayes (NB) and k closest neighbor (KNN).In advanced days organization utilizes programmed bug triaging framework yet in Traditional manual Triaging framework is utilized which not effective and setting aside an excess of time .For is triaging the bug we require bug subtle element which is called bug store. In this paper we likewise diminishing the bug dataset in light of the fact that on the off chance that we having more information with unused data which causes issue to relegating bugs. For actualizing this we utilize occasion determination and highlight choice for lessening bug information. This paper portray the entire methodology of bug assignment from beginning to end and finally result will appear on the premise of chart .Graph speaks to the most extreme plausibility of class means at which class the bug will has a place

    Framework for Automatic Bug Classification in Bug Triage System

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    A Software bug is an error, flaw, failure or fault in a computer program or system that causes it to produce an incorrect or unexpected result. When bugs arise, we have to fix them which is not easy. Most of the companies spend 40% of cost to fixing bugs. The process of fixing bug is bug triage or bug assortment. Triagingthis incoming report manually is error prone and time consuming .Software companies spend most of their cost in dealing with these bugs. In this paper we classifying the bugs so that we can determine the class of the bug at which class that bug is belongs and after applying the classification we can assign the particular bug to the exact developer for fixing them. This is efficient. In this paper we are using combination of two classification techniques ,na�ve Bayes (NB) and k nearest neighbor(KNN).In modern days company uses automatic bug triaging system but in Traditional manual Triaging system is used which is not efficient and taking too much time .For triaging the bug we require bug detail which is called bug repository. In this paper we also reducing the bug dataset because if we having more data with unused information which causes problem to assigning bugs. For implementing this we use instance selection and feature selection for reducing bug data. This paper describe the whole procedure of bug allotment from starting to end and at last result will show on the basis of graph .Graph represents the maximum possibility of class means at which class the bug will belongs

    CONCERNING EFFECTIVE ERROR IDENTIFIED WITH SOFTWARE RECORDS DECREASE TECHNIQUES

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    To reduce time cost in manual work, text classification techniques they can fit on conduct automatic bug triage. In this particular paper, we address the problem of understanding reduction for bug triage, i.e., the simplest way to reduce the scale and improve the grade of bug data. Software companies spend over 45 percent of cost when controlling software bugs. An inevitable step of fixing bugs is bug triage, which aims to correctly assign a developer to a new bug. To discover a purchase of applying instance selection and possess selection, we extract attributes from historic bug data sets developing a predictive model for every new bug data set. We combine instance selection with feature selection to concurrently reduce data scale inside the bug dimension coupled with word dimension. The conclusion result shows our data reduction can effectively reduce the data scale and lift a realistic look at bug triage. We empirically investigate performance of understanding reduction on totally 600,000 bug reports of two large free projects, namely Eclipse and Mozilla. Our work supplies a kinds of leveraging techniques on human sources to produce reduced and-quality bug data in software development and maintenance

    NEAR OPERATIVE VIRUSTOAST WITH SOFTWARE DATA DISCOUNT METHODS

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    To lessen time cost in manual work, text classification techniques they can fit on conduct automatic bug triage. Within this paper, we address the issue of understanding reduction for bug triage, i.e., the easiest method to reduce the scale and improve the standard of bug data. Software companies spend over 45 percent of cost when controlling software bugs. An unavoidable step of fixing bugs is bug triage, which aims to properly assign a developer to a different bug. To uncover an order of applying instance selection and possess selection, we extract attributes from historic bug data sets creating a predictive model for each new bug data set. We combine instance selection with feature selection to concurrently reduce data scale within the bug dimension along with word dimension. To conclude result shows our data reduction can effectively reduce the data scale and lift take a look at bug triage. We empirically investigate performance of understanding reduction on totally 600,000 bug reports of two large free projects, namely Eclipse and Mozilla. Our work supplies a types of leveraging techniques on human sources to create reduced and-quality bug data in software development and maintenance

    HIGH-QUALITY AIMING CLASSIFICATION TO CONSIGN BUGS

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    To lower time cost in manual work, text classification techniques are put on conduct automatic bug triage. Within this paper, we address the issue of information reduction for bug triage, i.e., how you can lessen the scale and improve the caliber of bug data. Software companies spend over 45 percent of cost in working with software bugs. An unavoidable step of fixing bugs is bug triage, which aims to properly assign a developer to a different bug. We combine instance selection with feature selection to concurrently reduce data scale around the bug dimension and also the word dimension. To look for the order of using instance selection and have selection, we extract characteristics from historic bug data sets and make a predictive model for any new bug data set. Our work provides a technique for leveraging techniques on information systems to create reduced and-quality bug data in software development and maintenance. We empirically investigate performance of information reduction on totally 600,000 bug reviews of two large free projects, namely Eclipse and Mozilla. The outcomes reveal that our data reduction can effectively lessen the data scale and enhance the precision of bug triage

    CREATING BUG REPOSITORY IN THE FIELD OF SOFTWARE INDUSTRY

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    An unavoidable step of fixing bugs is bug triage, which aims to properly assign a developer to a different bug. We combine instance selection with feature selection to concurrently reduce data scale around the bug dimension and also the word dimension. To lower time cost in manual work, text classification techniques are put on conduct automatic bug triage. Within this paper, we address the issue of information reduction for bug triage, i.e., how you can lessen the scale and improve the caliber of bug data. Software companies spend over 45 percent of cost in working with software bugs. To look for the order of applying instance selection and have selection, we extract attributes from historic bug data sets and make a predictive model for any new bug data set. The outcomes reveal that our data reduction can effectively lessen the data scale and enhance the precision of bug triage. Our work provides a technique for leveraging techniques on information systems to create reduced and-quality bug data in software development and maintenance. We empirically investigate performance of information reduction on totally 600,000 bug reports of two large free projects, namely Eclipse and Mozilla

    Text Classification Techniques to Conduct Automatic Bug Triage

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    We address the issue of information lessening for bug triage, i.e., how to diminish the scale and enhance the nature of bug information. We solidify illustration decision with highlight assurance to in the meantime decrease data scale on the bug estimation and the word estimation. To choose the demand of applying event assurance and highlight decision, we isolate characteristics from recorded bug educational lists and build a judicious model for another bug enlightening gathering. We exactly look at the execution of data reduction on totally 600,000 bug reports of two enormous open source wanders, specifically Eclipse and Mozilla. The results show that our data decline can feasibly lessen the data scale and upgrade the precision of bug triage. Our work gives an approach to manage using frameworks on data taking care of to edge diminished and superb bug data in programming change and support
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