knowledge mining
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Author(s):  
Yu Gao ◽  
Hua Han ◽  
Hailong Lu ◽  
SongXuan Jiang ◽  
Yunqian Zhang ◽  
...  
Keyword(s):  

2021 ◽  
Author(s):  
Abhijeet Kumar ◽  
Vinayak Kulkrani ◽  
Abhishek Pandey ◽  
Ankit Gupta ◽  
Mridul Mishra
Keyword(s):  

Author(s):  
N. Zafar Ali Khan ◽  
R. Mahalakshmi

Recommendation systems are shrewd applications for knowledge mining that profoundly handle the problem of data overload. Various literature explores different philosophies to create ideas and recommends different strategies according to the needs of customers. Most of the work in the suggested structure space focuses on extending the accuracy of the recommendation by using a few possible methods where the principle purpose remains to improve the accuracy of suggestions while avoiding other plan objectives, such as the particular situation of a client. By using appropriate customer rating data, the biggest test for a suggested system is to generate substantial proposals. A setting is an enormous concept that can think of numerous points of view: for example, the community of friends of a client, time, mindset, environment, organization, type of day, classification of an item, description of the object, place, and language. The rating behavior of customers typically varies in different environments. We have proposed a new review-based contextual recommender (RBCR) system application from this line of analysis, in particular a novel recommender system, which is an adaptable, quick, and accurate piece planning framework that perceives the significance of setting and fuses the logical data using piece stunt while making expectations. We have contrasted our suggested calculation with pre- and post-sifting methods as they have been the most common methodologies in writing to illuminate the issue of setting conscious suggestion. Our studies show that considering the logical data, the display of a system will increase and provide better, appropriate and important results on various evaluation measurements.


Author(s):  
Moses Effiong Ekpenyong ◽  
Mercy E. Edoho ◽  
Ifiok J. Udo ◽  
Geoffery Joseph

Author(s):  
Susy Rahmawati ◽  
Miftahul Nuril Silviyah ◽  
Nur Syifa’ul Husna

Market basket analysis is one of the techniques of knowledge mining used in a broad dataset or database to find a collection of items that are interwoven. Generally used in a sale, the most relevant shopping cart data is used. This methodology has been widely applied in different multinational or foreign industries and is very useful in consumer buying preferences. Technology advances change business trends dramatically, shifting customer demands require increased surgical accuracy of business. In this research, the writer wants to analyze the shopping cart using apriori algorithm, with a dataset from the Kaggle web. Using anaconda software features with the Python programming language is expected to create knowledge overwriting consumer buying patterns. In conclusion, this pattern can be used to support industry in managing its company activities.


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