Cricket is one of the most popular games in many countries. As many as 19 countries play cricket as their main game, and the number is likely to increase in the future. However, there are no suitable tools for analyzing pre-outcome of the match from beginning to end. Existing tools do not support simulating match using batting partnerships. The ultimate goal of predicting pre-outcome of a cricket match is to identify key players and their batting performances. It is also to prevent wrong players from selecting and toss decision by making statistical predictions. This research focuses on One Day International (ODI) cricket match and predicts the outcome of a particular match. Our solution consists of three major modules, namely, Web UI Module, CRIC-Win Analytic Engine, and Backend Data Module. CRIC-Win Analytic Engine has two sub data models, one for predicting the overall match outcome based on a given pre-match data, and the other for predicting match outcome based on batting partnership of both home and rival teams. All sub-models in the CRIC-Win Analytic Engine are developed using the Naïve Bayes algorithm for generating the classifier model, which is used to predict the outcome of the cricket match.


Author(s):  
Sujata Mulik

Agriculture sector in India is facing rigorous problem to maximize crop productivity. More than 60 percent of the crop still depends on climatic factors like rainfall, temperature, humidity. This paper discusses the use of various Data Mining applications in agriculture sector. Data Mining is used to solve various problems in agriculture sector. It can be used it to solve yield prediction.  The problem of yield prediction is a major problem that remains to be solved based on available data. Data mining techniques are the better choices for this purpose. Different Data Mining techniques are used and evaluated in agriculture for estimating the future year's crop production. In this paper we have focused on predicting crop yield productivity of kharif & Rabi Crops. 


Author(s):  
Mustafa S. Abd ◽  
Suhad Faisal Behadili

Psychological research centers help indirectly contact professionals from the fields of human life, job environment, family life, and psychological infrastructure for psychiatric patients. This research aims to detect job apathy patterns from the behavior of employee groups in the University of Baghdad and the Iraqi Ministry of Higher Education and Scientific Research. This investigation presents an approach using data mining techniques to acquire new knowledge and differs from statistical studies in terms of supporting the researchers’ evolving needs. These techniques manipulate redundant or irrelevant attributes to discover interesting patterns. The principal issue identifies several important and affective questions taken from a questionnaire, and the psychiatric researchers recommend these questions. Useless questions are pruned using the attribute selection method. Moreover, pieces of information gained through these questions are measured according to a specific class and ranked accordingly. Association and a priori algorithms are used to detect the most influential and interrelated questions in the questionnaire. Consequently, the decisive parameters that may lead to job apathy are determined.


Sign in / Sign up

Export Citation Format

Share Document