CISC520 Data Engineering and Mining Late Spring, 2019 Final Project Instruction 1. Choose data mining problem and data set For this project, you must choose your own dataset. It can be one found from an on-line source, one of your own, or one of the ones from the UCI repository (http://archive.ics.uci.edu/ml/). A list of additional dataset sources is provided at the end of this document. If you would like to use data collection API to curate data, the attached document provides an example of using R to collect Twitter data. Some rules/tips about choosing data sets: a. Do not choose the datasets that we have already analyzed in class. b. It should not be a small or made-up dataset. For this semester, “small” is defined as fewer than 1000 examples in the dataset. c. Choose a data set that does not require excessive data preprocessing. 2. Experiment design Define a problem on the dataset and describe it in terms of its real-world organizational or business application. The complexity level of the problem should be at least comparable to one homework assignment. The problem may use at least TWO different types of data mining algorithms that we have studied this semester such as Classification, Clustering and Association Rules, in an investigation of the analytics solution to the problem. This investigation must include some aspects of experimental comparison: depending on the problem, you may choose to experiment with different types of algorithms, e.g. different types of classifiers, and some experiments with tuning parameters of the algorithms. Alternatively, if your problem is suitable, you may use multiple algorithms (Clustering + Classification, etc.). If there are a larger number of attributes, you can try some type of feature selection to reduce the number of attributes. You may use summary statistics and visualization techniques to help you explain your findings. 3. Final project paper To complete this project, write a final report that conforms to general research paper format. See (Pang, Lee, and Vaithyanathan, 2002) as an example. Your report should be within 6 pages, 1 inch margin on all sides, and at least 12 point Arial or Times New Roman. Remember that your project paper serves as the tour guide for your readers to be able to repeat your data mining process and discover the same patterns as you did. It is very important to cite and paraphrase relevant work appropriately.
This is the final report that will be graded. References Pang, B., Lee, L., and Vaithyanathan, S. (2002). Thumbs up? Sentiment Classification using Machine Learning Techniques. Proceedings of EMNLP 2002, 79-86. Additional Sources of Data Sets for Final Project 1. http://socialcomputing.asu.edu/pages/datasets (Social Computing Data Repository ASU) 2. http://snap.stanford.edu/data/index.html (Stanford Repository) 3. https://www.kaggle.com/datasets Amazon Fine Food Reviews World Food Facts Reddit Comments US baby names 4. https://www.yelp.com/academic_dataset Dataset containing the reviews of business 5. http://openflights.org/data.html Airline, airport data 6. http://www.inf.ed.ac.uk/teaching/courses/dme/html/datasets0405.html • http://archive.ics.uci.edu/ml/datasets/Internet+Advertisement (Internet Adverti sement Dataset) • http://osmot.cs.cornell.edu/kddcup/datasets.html (Particle Physics Dataset) • http://www.cs.cmu.edu/afs/cs.cmu.edu/project/theo-20/www/data/ (4 university dataset) 7. http://www.kdnuggets.com/datasets/kddcup.html Contains KDD cup datasets 8. http://www.kdnuggets.com/datasets/index.html Contains links to multiple datasets.
Approximate price: $22
We value our customers and so we ensure that what we do is 100% original..
With us you are guaranteed of quality work done by our qualified experts.Your information and everything that you do with us is kept completely confidential.You have to be 100% sure of the quality of your product to give a money-back guarantee. This describes us perfectly. Make sure that this guarantee is totally transparent.The Product ordered is guaranteed to be original. Orders are checked by the most advanced anti-plagiarism software in the market to assure that the Product is 100% original. The Company has a zero tolerance policy for plagiarism.The Free Revision policy is a courtesy service that the Company provides to help ensure Customer’s total satisfaction with the completed Order. To receive free revision the Company requires that the Customer provide the request within fourteen (14) days from the first completion date and within a period of thirty (30) days for dissertations.The Company is committed to protect the privacy of the Customer and it will never resell or share any of Customer’s personal information, including credit card data, with any third party. All the online transactions are processed through the secure and reliable online payment systems.By placing an order with us, you agree to the service we provide. We will endear to do all that it takes to deliver a comprehensive paper as per your requirements. We also count on your cooperation to ensure that we deliver on this mandate.
Data Engineering and Mining
Never use plagiarized sources. Get Your Original Essay on
Data Engineering and Mining
Hire Professionals Just from $11/Page