TY - GEN
T1 - A new prediction model to discover probability of document in the website
AU - Dai, Chien Yun
AU - Lu, Chi Jun
AU - Rau, Dar Chin
AU - Yeh, Chen Chieh
PY - 2007
Y1 - 2007
N2 - Vocational teachers and students in Taiwan nearly have the amount of people 1,200,000. The Website of The Technological and Vocational Education is Skill duty teachers and students and the expert's knowledge entry website. This research picks user's data of the route to collect as the training data that originally study the way from the Data Warehouse of websites at first. Analyze the user's possible behavior route and describe models with set up its dynamic action with Petri Nets. Naive Bayesian Classification in Data Mining calculates that trains data to concentrate probability value of the network user's behavior route attribute, as predicting whether the next user looks for to the file. By the discovery rate of the file, put forward the amendment and problem and solve the mechanism to the webpage system or the structure. Find the following result while studying: 1. If data is it for independence each other can spend less and every attribute to link because every attribute connect with influence it of product fruit value 0. In order to overcome this question, originally research and propose and adopt M-estimate to revise the mechanism, can really improve this question through verifying. 2. The research random access 150 data in database of website. Use Naive Bayesian Classification to ask out every attribute probability, and the construction Data Mining engine and random access 100 testing data. Among them find, use shellfish's probability classification, find the file and predict that success rate is all more than 93%. 3. The button name of Website of The Technological and Vocational Education is not a clear definition, the ones that let users not know the file are preserved to the place, and some sub browsing through rate of webpage is too low, this research also proposes proper revision and recommendations.
AB - Vocational teachers and students in Taiwan nearly have the amount of people 1,200,000. The Website of The Technological and Vocational Education is Skill duty teachers and students and the expert's knowledge entry website. This research picks user's data of the route to collect as the training data that originally study the way from the Data Warehouse of websites at first. Analyze the user's possible behavior route and describe models with set up its dynamic action with Petri Nets. Naive Bayesian Classification in Data Mining calculates that trains data to concentrate probability value of the network user's behavior route attribute, as predicting whether the next user looks for to the file. By the discovery rate of the file, put forward the amendment and problem and solve the mechanism to the webpage system or the structure. Find the following result while studying: 1. If data is it for independence each other can spend less and every attribute to link because every attribute connect with influence it of product fruit value 0. In order to overcome this question, originally research and propose and adopt M-estimate to revise the mechanism, can really improve this question through verifying. 2. The research random access 150 data in database of website. Use Naive Bayesian Classification to ask out every attribute probability, and the construction Data Mining engine and random access 100 testing data. Among them find, use shellfish's probability classification, find the file and predict that success rate is all more than 93%. 3. The button name of Website of The Technological and Vocational Education is not a clear definition, the ones that let users not know the file are preserved to the place, and some sub browsing through rate of webpage is too low, this research also proposes proper revision and recommendations.
KW - Data mining
KW - Data warehouse
KW - Naive Bayesian classification
KW - Network user's behavior route
KW - Petri nets
UR - http://www.scopus.com/inward/record.url?scp=84888316575&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=84888316575&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:84888316575
SN - 9789889867140
T3 - Lecture Notes in Engineering and Computer Science
SP - 771
EP - 775
BT - IMECS 2007 - International MultiConference of Engineers and Computer Scientists 2007
T2 - International MultiConference of Engineers and Computer Scientists 2007, IMECS 2007
Y2 - 21 March 2007 through 23 March 2007
ER -