SlideShare a Scribd company logo
1 of 5
GLOBALSOFT TECHNOLOGIES 
IEEE PROJECTS & SOFTWARE DEVELOPMENTS 
IEEE FINAL YEAR PROJECTS|IEEE ENGINEERING PROJECTS|IEEE STUDENTS PROJECTS|IEEE 
BULK PROJECTS|BE/BTECH/ME/MTECH/MS/MCA PROJECTS|CSE/IT/ECE/EEE PROJECTS 
CELL: +91 98495 39085, +91 99662 35788, +91 98495 57908, +91 97014 40401 
Visit: www.finalyearprojects.org Mail to:ieeefinalsemprojects@gmail.com 
A Cocktail Approach for Travel Package Recommendation 
ABSTRACT: 
Recent years have witnessed an increased interest in recommender systems. 
Despite significant progress in this field, there still remain numerous avenues to 
explore. Indeed, this paper provides a study of exploiting online travel information 
for personalized travel package recommendation. A critical challenge along this 
line is to address the unique characteristics of travel data, which distinguish travel 
packages from traditional items for recommendation. To that end, in this paper, we 
first analyze the characteristics of the existing travel packages and develop a 
tourist-area-season topic (TAST) model. This TAST model can represent travel 
packages and tourists by different topic distributions, where the topic extraction is 
conditioned on both the tourists and the intrinsic features (i.e., locations, travel 
seasons) of the landscapes. Then, based on this topic model representation, we 
propose a cocktail approach to generate the lists for personalized travel package 
recommendation. Furthermore, we extend the TAST model to the tourist-relation-area- 
season topic (TRAST) model for capturing the latent relationships among the 
tourists in each travel group. Finally, we evaluate the TAST model, the TRAST 
model, and the cocktail recommendation approach on the real-world travel package
data. Experimental results show that the TAST model can effectively capture the 
unique characteristics of the travel data and the cocktail approach is, thus, much 
more effective than traditional recommendation techniques for travel package 
recommendation. Also, by considering tourist relationships, the TRAST model can 
be used as an effective assessment for travel group formation. 
EXISTING SYSTEM: 
There are many technical and domain challenges inherent in designing and 
implementing an effective recommender system for personalized travel package 
recommendation. 
1. Travel data are much fewer and sparser than traditional items, such as 
movies for recommendation, because the costs for a travel are much more 
expensive than for watching a movie. 
2. Every travel package consists of many landscapes (places of interest and 
attractions), and, thus, has intrinsic complex spatio-temporal relationships. 
For example, a travel package only includes the landscapes which are 
geographically colocated together. Also, different travel packages are 
usually developed for different travel seasons. Therefore, the landscapes in a 
travel package usually have spatial temporal autocorrelations. 
3. Traditional recommender systems usually rely on user explicit ratings. 
However, for travel data, the user ratings are usually not conveniently 
available.
DISADVANTAGES OF EXISTING SYSTEM: 
 Recommendation has a long period of stable value. 
 To replace the old ones based on the interests of the tourists. 
 A values of travel packages can easily depreciate over time and a 
package usually only lasts for a certain period of time 
PROPOSED SYSTEM: 
In this paper, we aim to make personalized travel package recommendations for 
the tourists. Thus, the users are the tourists and the items are the existing packages, 
and we exploit a real-world travel data set provided by a travels for building 
recommender systems. we develop a tourist-area-season topic (TAST) model, 
which can represent travel packages and tourists by different topic distributions. In 
the TAST model, the extraction of topics is conditioned on both the tourists and the 
intrinsic features (i.e., locations, travel seasons) of the landscapes. Based on this 
TAST model, a cocktail approach is developed for personalized travel package 
recommendation by considering some additional factors including the seasonal 
behaviors of tourists, the prices of travel packages, and the cold start problem of 
new packages. 
ADVANTAGES OF PROPOSED SYSTEM: 
 Represent the content of the travel packages and the interests of the tourists. 
 TAST model can effectively capture the unique characteristics of travel data.
 The cocktail recommendation approach performs much better than 
traditional techniques. 
SYSTEM ARCHITECTURE:
SYSTEM REQUIREMENTS: 
HARDWARE REQUIREMENTS: 
 System : Pentium IV 2.4 GHz. 
 Hard Disk : 40 GB. 
 Floppy Drive : 1.44 Mb. 
 Monitor : 15 VGA Colour. 
 Mouse : Logitech. 
 Ram : 512 Mb. 
SOFTWARE REQUIREMENTS: 
 Operating system : Windows XP/7. 
 Coding Language : JAVA/J2EE 
 IDE : Netbeans 7.4 
 Database : MYSQL 
REFERENCE: 
Qi Liu, Enhong Chen, Hui Xiong, Yong Ge, Zhongmou Li, and Xiang Wu ,“A 
Cocktail Approach for Travel Package Recommendation”, IEEE 
TRANSACTIONS, VOL. 26, NO. 2, FEBRUARY 2014.

More Related Content

Similar to IEEE 2014 JAVA DATA MINING PROJECTS A cocktail approach for travel package recommendation

A survey on a cocktail approach for travel package recommendation
A survey on a cocktail approach for travel package recommendationA survey on a cocktail approach for travel package recommendation
A survey on a cocktail approach for travel package recommendationeSAT Journals
 
Travel route scheduling based on user’s preferences using simulated annealing
Travel route scheduling based on user’s preferences using simulated annealingTravel route scheduling based on user’s preferences using simulated annealing
Travel route scheduling based on user’s preferences using simulated annealingIJECEIAES
 
EFFICIENT AND END TO END TOUR SYSTEM
EFFICIENT AND END TO END TOUR SYSTEMEFFICIENT AND END TO END TOUR SYSTEM
EFFICIENT AND END TO END TOUR SYSTEMIRJET Journal
 
Smart Tourism Recommender System
Smart Tourism Recommender SystemSmart Tourism Recommender System
Smart Tourism Recommender SystemIRJET Journal
 
A Review on Tourist Analyzer
A Review on Tourist AnalyzerA Review on Tourist Analyzer
A Review on Tourist AnalyzerIRJET Journal
 
IRJET- Intelligent Globetrotting Information System using Association Rule Mi...
IRJET- Intelligent Globetrotting Information System using Association Rule Mi...IRJET- Intelligent Globetrotting Information System using Association Rule Mi...
IRJET- Intelligent Globetrotting Information System using Association Rule Mi...IRJET Journal
 
IRJET- Analysis of Trajectories
IRJET- Analysis of TrajectoriesIRJET- Analysis of Trajectories
IRJET- Analysis of TrajectoriesIRJET Journal
 
Personalized Route Recommendation for self-drive tourists based on V2V commun...
Personalized Route Recommendation for self-drive tourists based on V2V commun...Personalized Route Recommendation for self-drive tourists based on V2V commun...
Personalized Route Recommendation for self-drive tourists based on V2V commun...IRJET Journal
 
Designing The Tourist Agency Of The Future
Designing The Tourist Agency Of The FutureDesigning The Tourist Agency Of The Future
Designing The Tourist Agency Of The FutureThomas Cook Belgium
 
IRJET-Smart Tourism Recommender System
IRJET-Smart Tourism Recommender SystemIRJET-Smart Tourism Recommender System
IRJET-Smart Tourism Recommender SystemIRJET Journal
 
IRJET- Location-Based Route Recommendation System with Effective Query Keywords
IRJET- Location-Based Route Recommendation System with Effective Query KeywordsIRJET- Location-Based Route Recommendation System with Effective Query Keywords
IRJET- Location-Based Route Recommendation System with Effective Query KeywordsIRJET Journal
 
Hybrid recommendation technique for automated personalized poi selection
Hybrid recommendation technique for automated personalized poi selectionHybrid recommendation technique for automated personalized poi selection
Hybrid recommendation technique for automated personalized poi selectionIAEME Publication
 
PPTSEM3.pptx
PPTSEM3.pptxPPTSEM3.pptx
PPTSEM3.pptxVEDAMNT
 
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The FutureD:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The FutureThomas Cook Belgium
 
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The FutureD:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The FutureThomas Cook Belgium
 
Travelogue: A Travel Package Recommendation using Python
Travelogue: A Travel Package Recommendation using PythonTravelogue: A Travel Package Recommendation using Python
Travelogue: A Travel Package Recommendation using PythonIRJET Journal
 
Multi-Objective Trip Planning With Tourist Attractions, Restaurant Selection ...
Multi-Objective Trip Planning With Tourist Attractions, Restaurant Selection ...Multi-Objective Trip Planning With Tourist Attractions, Restaurant Selection ...
Multi-Objective Trip Planning With Tourist Attractions, Restaurant Selection ...IRJET Journal
 
A Web Application for Recommending Personalized Mobile Tourist Routes
A Web Application for Recommending Personalized Mobile Tourist RoutesA Web Application for Recommending Personalized Mobile Tourist Routes
A Web Application for Recommending Personalized Mobile Tourist RoutesTrieu Nguyen
 

Similar to IEEE 2014 JAVA DATA MINING PROJECTS A cocktail approach for travel package recommendation (20)

A survey on a cocktail approach for travel package recommendation
A survey on a cocktail approach for travel package recommendationA survey on a cocktail approach for travel package recommendation
A survey on a cocktail approach for travel package recommendation
 
Tourist Analyzer
Tourist AnalyzerTourist Analyzer
Tourist Analyzer
 
Travel route scheduling based on user’s preferences using simulated annealing
Travel route scheduling based on user’s preferences using simulated annealingTravel route scheduling based on user’s preferences using simulated annealing
Travel route scheduling based on user’s preferences using simulated annealing
 
EFFICIENT AND END TO END TOUR SYSTEM
EFFICIENT AND END TO END TOUR SYSTEMEFFICIENT AND END TO END TOUR SYSTEM
EFFICIENT AND END TO END TOUR SYSTEM
 
Smart Tourism Recommender System
Smart Tourism Recommender SystemSmart Tourism Recommender System
Smart Tourism Recommender System
 
A Review on Tourist Analyzer
A Review on Tourist AnalyzerA Review on Tourist Analyzer
A Review on Tourist Analyzer
 
IRJET- Intelligent Globetrotting Information System using Association Rule Mi...
IRJET- Intelligent Globetrotting Information System using Association Rule Mi...IRJET- Intelligent Globetrotting Information System using Association Rule Mi...
IRJET- Intelligent Globetrotting Information System using Association Rule Mi...
 
IRJET- Analysis of Trajectories
IRJET- Analysis of TrajectoriesIRJET- Analysis of Trajectories
IRJET- Analysis of Trajectories
 
Personalized Route Recommendation for self-drive tourists based on V2V commun...
Personalized Route Recommendation for self-drive tourists based on V2V commun...Personalized Route Recommendation for self-drive tourists based on V2V commun...
Personalized Route Recommendation for self-drive tourists based on V2V commun...
 
Designing The Tourist Agency Of The Future
Designing The Tourist Agency Of The FutureDesigning The Tourist Agency Of The Future
Designing The Tourist Agency Of The Future
 
IRJET-Smart Tourism Recommender System
IRJET-Smart Tourism Recommender SystemIRJET-Smart Tourism Recommender System
IRJET-Smart Tourism Recommender System
 
IRJET- Location-Based Route Recommendation System with Effective Query Keywords
IRJET- Location-Based Route Recommendation System with Effective Query KeywordsIRJET- Location-Based Route Recommendation System with Effective Query Keywords
IRJET- Location-Based Route Recommendation System with Effective Query Keywords
 
Hybrid recommendation technique for automated personalized poi selection
Hybrid recommendation technique for automated personalized poi selectionHybrid recommendation technique for automated personalized poi selection
Hybrid recommendation technique for automated personalized poi selection
 
PPTSEM3.pptx
PPTSEM3.pptxPPTSEM3.pptx
PPTSEM3.pptx
 
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The FutureD:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
 
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The FutureD:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
D:\Settings\U115501\Desktop\Designing The Tourist Agency Of The Future
 
Travelogue: A Travel Package Recommendation using Python
Travelogue: A Travel Package Recommendation using PythonTravelogue: A Travel Package Recommendation using Python
Travelogue: A Travel Package Recommendation using Python
 
Multi-Objective Trip Planning With Tourist Attractions, Restaurant Selection ...
Multi-Objective Trip Planning With Tourist Attractions, Restaurant Selection ...Multi-Objective Trip Planning With Tourist Attractions, Restaurant Selection ...
Multi-Objective Trip Planning With Tourist Attractions, Restaurant Selection ...
 
ICTTT2015
ICTTT2015ICTTT2015
ICTTT2015
 
A Web Application for Recommending Personalized Mobile Tourist Routes
A Web Application for Recommending Personalized Mobile Tourist RoutesA Web Application for Recommending Personalized Mobile Tourist Routes
A Web Application for Recommending Personalized Mobile Tourist Routes
 

More from IEEEFINALYEARSTUDENTPROJECTS

IEEE 2014 JAVA NETWORK SECURITY PROJECTS Efficient and privacy aware data agg...
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Efficient and privacy aware data agg...IEEE 2014 JAVA NETWORK SECURITY PROJECTS Efficient and privacy aware data agg...
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Efficient and privacy aware data agg...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Building a scalable system for steal...
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Building a scalable system for steal...IEEE 2014 JAVA NETWORK SECURITY PROJECTS Building a scalable system for steal...
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Building a scalable system for steal...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Token mac a fair mac protocol for pa...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Token mac a fair mac protocol for pa...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Token mac a fair mac protocol for pa...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Token mac a fair mac protocol for pa...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Tag sense leveraging smartphones for...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Tag sense leveraging smartphones for...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Tag sense leveraging smartphones for...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Tag sense leveraging smartphones for...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Privacy preserving optimal meeting l...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Privacy preserving optimal meeting l...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Privacy preserving optimal meeting l...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Privacy preserving optimal meeting l...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Preserving location privacy in geo s...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Preserving location privacy in geo s...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Preserving location privacy in geo s...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Preserving location privacy in geo s...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Friendbook a semantic based friend r...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Friendbook a semantic based friend r...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Friendbook a semantic based friend r...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Friendbook a semantic based friend r...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Efficient and privacy aware data agg...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Efficient and privacy aware data agg...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Efficient and privacy aware data agg...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Efficient and privacy aware data agg...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Cloud assisted mobile-access of heal...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Cloud assisted mobile-access of heal...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Cloud assisted mobile-access of heal...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Cloud assisted mobile-access of heal...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS A low complexity algorithm for neigh...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS A low complexity algorithm for neigh...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS A low complexity algorithm for neigh...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS A low complexity algorithm for neigh...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Hierarchical prediction and context ...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Hierarchical prediction and context ...IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Hierarchical prediction and context ...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Hierarchical prediction and context ...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Designing an-efficient-image encrypt...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Designing an-efficient-image encrypt...IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Designing an-efficient-image encrypt...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Designing an-efficient-image encrypt...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Click prediction-for-web-image-reran...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Click prediction-for-web-image-reran...IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Click prediction-for-web-image-reran...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Click prediction-for-web-image-reran...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Web service recommendation via expl...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Web service recommendation via expl...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Web service recommendation via expl...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Web service recommendation via expl...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Scalable and accurate prediction of...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Scalable and accurate prediction of...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Scalable and accurate prediction of...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Scalable and accurate prediction of...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Privacy enhanced web service compos...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Privacy enhanced web service compos...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Privacy enhanced web service compos...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Privacy enhanced web service compos...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Decentralized enactment of bpel pro...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Decentralized enactment of bpel pro...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Decentralized enactment of bpel pro...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Decentralized enactment of bpel pro...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS A novel time obfuscated algorithm ...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS  A novel time obfuscated algorithm ...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS  A novel time obfuscated algorithm ...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS A novel time obfuscated algorithm ...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA SOFTWARE ENGINEER PROJECTS Conservation of information softwar...
IEEE 2014 JAVA SOFTWARE ENGINEER PROJECTS Conservation of information softwar...IEEE 2014 JAVA SOFTWARE ENGINEER PROJECTS Conservation of information softwar...
IEEE 2014 JAVA SOFTWARE ENGINEER PROJECTS Conservation of information softwar...IEEEFINALYEARSTUDENTPROJECTS
 
IEEE 2014 JAVA DATA MINING PROJECTS Xs path navigation on xml schemas made easy
IEEE 2014 JAVA DATA MINING PROJECTS Xs path navigation on xml schemas made easyIEEE 2014 JAVA DATA MINING PROJECTS Xs path navigation on xml schemas made easy
IEEE 2014 JAVA DATA MINING PROJECTS Xs path navigation on xml schemas made easyIEEEFINALYEARSTUDENTPROJECTS
 

More from IEEEFINALYEARSTUDENTPROJECTS (20)

IEEE 2014 JAVA NETWORK SECURITY PROJECTS Efficient and privacy aware data agg...
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Efficient and privacy aware data agg...IEEE 2014 JAVA NETWORK SECURITY PROJECTS Efficient and privacy aware data agg...
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Efficient and privacy aware data agg...
 
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Building a scalable system for steal...
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Building a scalable system for steal...IEEE 2014 JAVA NETWORK SECURITY PROJECTS Building a scalable system for steal...
IEEE 2014 JAVA NETWORK SECURITY PROJECTS Building a scalable system for steal...
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Token mac a fair mac protocol for pa...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Token mac a fair mac protocol for pa...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Token mac a fair mac protocol for pa...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Token mac a fair mac protocol for pa...
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Tag sense leveraging smartphones for...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Tag sense leveraging smartphones for...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Tag sense leveraging smartphones for...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Tag sense leveraging smartphones for...
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Privacy preserving optimal meeting l...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Privacy preserving optimal meeting l...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Privacy preserving optimal meeting l...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Privacy preserving optimal meeting l...
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Preserving location privacy in geo s...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Preserving location privacy in geo s...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Preserving location privacy in geo s...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Preserving location privacy in geo s...
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Friendbook a semantic based friend r...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Friendbook a semantic based friend r...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Friendbook a semantic based friend r...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Friendbook a semantic based friend r...
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Efficient and privacy aware data agg...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Efficient and privacy aware data agg...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Efficient and privacy aware data agg...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Efficient and privacy aware data agg...
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Cloud assisted mobile-access of heal...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Cloud assisted mobile-access of heal...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Cloud assisted mobile-access of heal...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS Cloud assisted mobile-access of heal...
 
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS A low complexity algorithm for neigh...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS A low complexity algorithm for neigh...IEEE 2014 JAVA MOBILE COMPUTING PROJECTS A low complexity algorithm for neigh...
IEEE 2014 JAVA MOBILE COMPUTING PROJECTS A low complexity algorithm for neigh...
 
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Hierarchical prediction and context ...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Hierarchical prediction and context ...IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Hierarchical prediction and context ...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Hierarchical prediction and context ...
 
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Designing an-efficient-image encrypt...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Designing an-efficient-image encrypt...IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Designing an-efficient-image encrypt...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Designing an-efficient-image encrypt...
 
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Click prediction-for-web-image-reran...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Click prediction-for-web-image-reran...IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Click prediction-for-web-image-reran...
IEEE 2014 JAVA IMAGE PROCESSING PROJECTS Click prediction-for-web-image-reran...
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Web service recommendation via expl...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Web service recommendation via expl...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Web service recommendation via expl...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Web service recommendation via expl...
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Scalable and accurate prediction of...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Scalable and accurate prediction of...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Scalable and accurate prediction of...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Scalable and accurate prediction of...
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Privacy enhanced web service compos...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Privacy enhanced web service compos...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Privacy enhanced web service compos...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Privacy enhanced web service compos...
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Decentralized enactment of bpel pro...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Decentralized enactment of bpel pro...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Decentralized enactment of bpel pro...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS Decentralized enactment of bpel pro...
 
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS A novel time obfuscated algorithm ...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS  A novel time obfuscated algorithm ...IEEE 2014 JAVA SERVICE COMPUTING PROJECTS  A novel time obfuscated algorithm ...
IEEE 2014 JAVA SERVICE COMPUTING PROJECTS A novel time obfuscated algorithm ...
 
IEEE 2014 JAVA SOFTWARE ENGINEER PROJECTS Conservation of information softwar...
IEEE 2014 JAVA SOFTWARE ENGINEER PROJECTS Conservation of information softwar...IEEE 2014 JAVA SOFTWARE ENGINEER PROJECTS Conservation of information softwar...
IEEE 2014 JAVA SOFTWARE ENGINEER PROJECTS Conservation of information softwar...
 
IEEE 2014 JAVA DATA MINING PROJECTS Xs path navigation on xml schemas made easy
IEEE 2014 JAVA DATA MINING PROJECTS Xs path navigation on xml schemas made easyIEEE 2014 JAVA DATA MINING PROJECTS Xs path navigation on xml schemas made easy
IEEE 2014 JAVA DATA MINING PROJECTS Xs path navigation on xml schemas made easy
 

Recently uploaded

Heart Disease Prediction using machine learning.pptx
Heart Disease Prediction using machine learning.pptxHeart Disease Prediction using machine learning.pptx
Heart Disease Prediction using machine learning.pptxPoojaBan
 
Oxy acetylene welding presentation note.
Oxy acetylene welding presentation note.Oxy acetylene welding presentation note.
Oxy acetylene welding presentation note.eptoze12
 
Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...VICTOR MAESTRE RAMIREZ
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSKurinjimalarL3
 
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Dr.Costas Sachpazis
 
Introduction to Microprocesso programming and interfacing.pptx
Introduction to Microprocesso programming and interfacing.pptxIntroduction to Microprocesso programming and interfacing.pptx
Introduction to Microprocesso programming and interfacing.pptxvipinkmenon1
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AIabhishek36461
 
VICTOR MAESTRE RAMIREZ - Planetary Defender on NASA's Double Asteroid Redirec...
VICTOR MAESTRE RAMIREZ - Planetary Defender on NASA's Double Asteroid Redirec...VICTOR MAESTRE RAMIREZ - Planetary Defender on NASA's Double Asteroid Redirec...
VICTOR MAESTRE RAMIREZ - Planetary Defender on NASA's Double Asteroid Redirec...VICTOR MAESTRE RAMIREZ
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...Soham Mondal
 
Current Transformer Drawing and GTP for MSETCL
Current Transformer Drawing and GTP for MSETCLCurrent Transformer Drawing and GTP for MSETCL
Current Transformer Drawing and GTP for MSETCLDeelipZope
 
IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024Mark Billinghurst
 
GDSC ASEB Gen AI study jams presentation
GDSC ASEB Gen AI study jams presentationGDSC ASEB Gen AI study jams presentation
GDSC ASEB Gen AI study jams presentationGDSCAESB
 
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escortsranjana rawat
 
HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2RajaP95
 
SPICE PARK APR2024 ( 6,793 SPICE Models )
SPICE PARK APR2024 ( 6,793 SPICE Models )SPICE PARK APR2024 ( 6,793 SPICE Models )
SPICE PARK APR2024 ( 6,793 SPICE Models )Tsuyoshi Horigome
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024hassan khalil
 
Microscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxMicroscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxpurnimasatapathy1234
 
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort serviceGurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort servicejennyeacort
 

Recently uploaded (20)

Heart Disease Prediction using machine learning.pptx
Heart Disease Prediction using machine learning.pptxHeart Disease Prediction using machine learning.pptx
Heart Disease Prediction using machine learning.pptx
 
Oxy acetylene welding presentation note.
Oxy acetylene welding presentation note.Oxy acetylene welding presentation note.
Oxy acetylene welding presentation note.
 
Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
 
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
 
Introduction to Microprocesso programming and interfacing.pptx
Introduction to Microprocesso programming and interfacing.pptxIntroduction to Microprocesso programming and interfacing.pptx
Introduction to Microprocesso programming and interfacing.pptx
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AI
 
VICTOR MAESTRE RAMIREZ - Planetary Defender on NASA's Double Asteroid Redirec...
VICTOR MAESTRE RAMIREZ - Planetary Defender on NASA's Double Asteroid Redirec...VICTOR MAESTRE RAMIREZ - Planetary Defender on NASA's Double Asteroid Redirec...
VICTOR MAESTRE RAMIREZ - Planetary Defender on NASA's Double Asteroid Redirec...
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
 
Current Transformer Drawing and GTP for MSETCL
Current Transformer Drawing and GTP for MSETCLCurrent Transformer Drawing and GTP for MSETCL
Current Transformer Drawing and GTP for MSETCL
 
IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024
 
GDSC ASEB Gen AI study jams presentation
GDSC ASEB Gen AI study jams presentationGDSC ASEB Gen AI study jams presentation
GDSC ASEB Gen AI study jams presentation
 
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
 
HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2
 
Call Us -/9953056974- Call Girls In Vikaspuri-/- Delhi NCR
Call Us -/9953056974- Call Girls In Vikaspuri-/- Delhi NCRCall Us -/9953056974- Call Girls In Vikaspuri-/- Delhi NCR
Call Us -/9953056974- Call Girls In Vikaspuri-/- Delhi NCR
 
SPICE PARK APR2024 ( 6,793 SPICE Models )
SPICE PARK APR2024 ( 6,793 SPICE Models )SPICE PARK APR2024 ( 6,793 SPICE Models )
SPICE PARK APR2024 ( 6,793 SPICE Models )
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024
 
Exploring_Network_Security_with_JA3_by_Rakesh Seal.pptx
Exploring_Network_Security_with_JA3_by_Rakesh Seal.pptxExploring_Network_Security_with_JA3_by_Rakesh Seal.pptx
Exploring_Network_Security_with_JA3_by_Rakesh Seal.pptx
 
Microscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxMicroscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptx
 
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort serviceGurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
 

IEEE 2014 JAVA DATA MINING PROJECTS A cocktail approach for travel package recommendation

  • 1. GLOBALSOFT TECHNOLOGIES IEEE PROJECTS & SOFTWARE DEVELOPMENTS IEEE FINAL YEAR PROJECTS|IEEE ENGINEERING PROJECTS|IEEE STUDENTS PROJECTS|IEEE BULK PROJECTS|BE/BTECH/ME/MTECH/MS/MCA PROJECTS|CSE/IT/ECE/EEE PROJECTS CELL: +91 98495 39085, +91 99662 35788, +91 98495 57908, +91 97014 40401 Visit: www.finalyearprojects.org Mail to:ieeefinalsemprojects@gmail.com A Cocktail Approach for Travel Package Recommendation ABSTRACT: Recent years have witnessed an increased interest in recommender systems. Despite significant progress in this field, there still remain numerous avenues to explore. Indeed, this paper provides a study of exploiting online travel information for personalized travel package recommendation. A critical challenge along this line is to address the unique characteristics of travel data, which distinguish travel packages from traditional items for recommendation. To that end, in this paper, we first analyze the characteristics of the existing travel packages and develop a tourist-area-season topic (TAST) model. This TAST model can represent travel packages and tourists by different topic distributions, where the topic extraction is conditioned on both the tourists and the intrinsic features (i.e., locations, travel seasons) of the landscapes. Then, based on this topic model representation, we propose a cocktail approach to generate the lists for personalized travel package recommendation. Furthermore, we extend the TAST model to the tourist-relation-area- season topic (TRAST) model for capturing the latent relationships among the tourists in each travel group. Finally, we evaluate the TAST model, the TRAST model, and the cocktail recommendation approach on the real-world travel package
  • 2. data. Experimental results show that the TAST model can effectively capture the unique characteristics of the travel data and the cocktail approach is, thus, much more effective than traditional recommendation techniques for travel package recommendation. Also, by considering tourist relationships, the TRAST model can be used as an effective assessment for travel group formation. EXISTING SYSTEM: There are many technical and domain challenges inherent in designing and implementing an effective recommender system for personalized travel package recommendation. 1. Travel data are much fewer and sparser than traditional items, such as movies for recommendation, because the costs for a travel are much more expensive than for watching a movie. 2. Every travel package consists of many landscapes (places of interest and attractions), and, thus, has intrinsic complex spatio-temporal relationships. For example, a travel package only includes the landscapes which are geographically colocated together. Also, different travel packages are usually developed for different travel seasons. Therefore, the landscapes in a travel package usually have spatial temporal autocorrelations. 3. Traditional recommender systems usually rely on user explicit ratings. However, for travel data, the user ratings are usually not conveniently available.
  • 3. DISADVANTAGES OF EXISTING SYSTEM:  Recommendation has a long period of stable value.  To replace the old ones based on the interests of the tourists.  A values of travel packages can easily depreciate over time and a package usually only lasts for a certain period of time PROPOSED SYSTEM: In this paper, we aim to make personalized travel package recommendations for the tourists. Thus, the users are the tourists and the items are the existing packages, and we exploit a real-world travel data set provided by a travels for building recommender systems. we develop a tourist-area-season topic (TAST) model, which can represent travel packages and tourists by different topic distributions. In the TAST model, the extraction of topics is conditioned on both the tourists and the intrinsic features (i.e., locations, travel seasons) of the landscapes. Based on this TAST model, a cocktail approach is developed for personalized travel package recommendation by considering some additional factors including the seasonal behaviors of tourists, the prices of travel packages, and the cold start problem of new packages. ADVANTAGES OF PROPOSED SYSTEM:  Represent the content of the travel packages and the interests of the tourists.  TAST model can effectively capture the unique characteristics of travel data.
  • 4.  The cocktail recommendation approach performs much better than traditional techniques. SYSTEM ARCHITECTURE:
  • 5. SYSTEM REQUIREMENTS: HARDWARE REQUIREMENTS:  System : Pentium IV 2.4 GHz.  Hard Disk : 40 GB.  Floppy Drive : 1.44 Mb.  Monitor : 15 VGA Colour.  Mouse : Logitech.  Ram : 512 Mb. SOFTWARE REQUIREMENTS:  Operating system : Windows XP/7.  Coding Language : JAVA/J2EE  IDE : Netbeans 7.4  Database : MYSQL REFERENCE: Qi Liu, Enhong Chen, Hui Xiong, Yong Ge, Zhongmou Li, and Xiang Wu ,“A Cocktail Approach for Travel Package Recommendation”, IEEE TRANSACTIONS, VOL. 26, NO. 2, FEBRUARY 2014.