140x Filetype PPTX File size 2.01 MB Source: www2.cs.uh.edu
September 10, 2020 News 1. Online Credit: Groups C, D and E will present their solutions (prepare a slide (or two)) during the Tu.,Sept. 15 lecture. 2. Start working on Task1 of ProblemSet1, if you have not already started. 3. The lectures on Sept. 10+15+17 will discuss a mixture of topics: EDA, Classification, Kritik&Peer Evaluation and ProblemSet1 4. Today’s mode of operation: Unmute microphone&ask question today; only when asked!!!; will have additional Q&A near the end of the lecture 5. Today’s Lecture a. Finish EDA Slide Set (mostly) b. Useful Source Code for ProblemSet1 c. Watch Kritik Video online (6 minutes) and Brief Discussion of the Content d. Discussion of an Example Rubric e. Starting new topic: Classification Centering on “Classification Basics” and DT, SVM, k-NN and NN Tan,Steinbach, Kumar: Exploratory Data Analysis (with major modifications and additions by Ch. Eick) 9/9/2020 Rubric In education terminology, rubric means "a scoring guide used to evaluate the quality of students' constructed responses". Put simply, it is a set of criteria for grading assignments. Rubrics usually contain evaluative criteria, quality definitions for those criteria at particular levels of achievement, and a scoring strategy. They are often presented in table format and can be used by teachers when marking, and by students when planning their work. (from Wikipedia) Tan,Steinbach, Kumar: Exploratory Data Analysis (with major modifications and additions by Ch. Eick) 9/9/2020 Kritik Activity Stages Stage 1: Create → Follow the Stage instructions, read the provided 1 rubric and create a submission Stage 2: Evaluate → Anonymously score your peers based on a rubric, and give a provide written Stage Stage comments (2 components: score + 2 3 justification) Stage 3: Feedback → Provide peer evaluators anonymous feedback on how motivational/critical their comments were 4 Novel: Everything that is in yellow!! Tan,Steinbach, Kumar: Exploratory Data Analysis (with major modifications and additions by Ch. Eick) 9/9/2020 Exploratory Data Analysis Remark: covers Chapter 3 of the first edition Tan book in Part Organization 1. Why Exploratory Data Analysis? 2. Summary Statistics 3. Visualization Tan,Steinbach, Kumar: Exploratory Data Analysis (with major modifications and additions by Ch. Eick) 9/9/2020 1. Why Data Exploration? A preliminary exploration of the data to better understand its characteristics. Key motivations of data exploration include – Getting a better understanding of the data – Create background knowledge about the data to be analyzed – Helping to select the right tool for preprocessing, data analysis and data mining – Making use of humans’ abilities to recognize patterns People can recognize patterns not captured by data analysis tools Related to the area of Exploratory Data Analysis (EDA) – Created by statistician John Tukey – Seminal book is Exploratory Data Analysis by Tukey – A nice online introduction can be found in Chapter 1 of the NIST Engineering Statistics Handbook http://www.itl.nist.gov/div898/handbook/index.htm Tan,Steinbach, Kumar: Exploratory Data Analysis (with major modifications and additions by Ch. Eick) 9/9/2020
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