A joint analysis of continuous (time series demand observations) and discrete (well-describing parameters) data is studied. Such data mining techniques as data collection, preprocessing, clustering analysis, and classification are considered. Upon continuous data preprocessing and clustering, images of possible sales development are constructed. A new product’s demand is searched for using inductive decision trees built on well-describing data
Abstract: Data mining may be defined as the science of extracting useful information from databases....
Abstract. Predictive clustering is a general framework that unifies clustering and prediction. This ...
Abstract—Timely identification of newly emerging trends is needed in business process. Data mining t...
Many companies today, in different fields of operations and sizes, have access to a vast amount of d...
This article studies data structure investigation possibilities using cluster analysis. Density stru...
Inductive databases tightly integrate databases with data mining. Besides data, an inductive databas...
The article analyzes clustering problems that arise in forecasting tasks when clustering short time ...
Accurate demand forecasting is crucial for industries who have both high lead time in productions a...
Rational pricing strategy is one of the most important problems in economy. Pricing comprises a numb...
This master’s thesis applies two clustering methods to item or product sales data of a grocery retai...
Abstract — Data mining is the method of discovering or fetching useful information from database tab...
Abstract—Sales-Demand Forecasting uses machine learning model to forecast demand of a product and to...
Data mining is an important part of information management technology. Simply put, it is a method to...
Classifiers can be either linear means Naive Bayes classifier or non-linear means decision trees.In ...
Temporal information plays a very important role in many analysis tasks, and can be encoded in at le...
Abstract: Data mining may be defined as the science of extracting useful information from databases....
Abstract. Predictive clustering is a general framework that unifies clustering and prediction. This ...
Abstract—Timely identification of newly emerging trends is needed in business process. Data mining t...
Many companies today, in different fields of operations and sizes, have access to a vast amount of d...
This article studies data structure investigation possibilities using cluster analysis. Density stru...
Inductive databases tightly integrate databases with data mining. Besides data, an inductive databas...
The article analyzes clustering problems that arise in forecasting tasks when clustering short time ...
Accurate demand forecasting is crucial for industries who have both high lead time in productions a...
Rational pricing strategy is one of the most important problems in economy. Pricing comprises a numb...
This master’s thesis applies two clustering methods to item or product sales data of a grocery retai...
Abstract — Data mining is the method of discovering or fetching useful information from database tab...
Abstract—Sales-Demand Forecasting uses machine learning model to forecast demand of a product and to...
Data mining is an important part of information management technology. Simply put, it is a method to...
Classifiers can be either linear means Naive Bayes classifier or non-linear means decision trees.In ...
Temporal information plays a very important role in many analysis tasks, and can be encoded in at le...
Abstract: Data mining may be defined as the science of extracting useful information from databases....
Abstract. Predictive clustering is a general framework that unifies clustering and prediction. This ...
Abstract—Timely identification of newly emerging trends is needed in business process. Data mining t...