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Welcome to Statistics World Note: This PowerPoint is only a summary and your main source should be the book.
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E-mail: alaa.saud@hotmail.com M.W sections: BA6 8->9:20 M.W DA5 9:30->11:50 M.W 11->12:30 Office hours: Office room : Statistic office Note: This PowerPoint is only a summary and your main source should be the book. Instructor: Alaa saud
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Course Information Course name and number: General Statistics. STAT 110 Course website address: http://aalfrady.kau.edu.sa/http://aalfrady.kau.edu.sa/ Textbook :Elementary Statistics a Step by Step Approach, 9th Edition by Allan Bluman, McGraw/Hill, 2009. Available at Alsheqary bookstore Note: This PowerPoint is only a summary and your main source should be the book.
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Class Rules
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CHAPTER 1 The Nature of Probability and Statistics Note: This PowerPoint is only a summary and your main source should be the book.
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Introduction Statistics: is the science of conducting studies to collect,organize, summarize, analyze and drawing conclusions from data.. A Variable: is characteristic or attribute that can assume different values. Data: are the values that the variables can assume. data set : Collection of data values. A data value or a datum. Is the each value in the data set. Random Variable: variables whose determined by chance Note: This PowerPoint is only a summary and your main source should be the book.
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1-1:Descriptive and Inferential Statistics Note: This PowerPoint is only a summary and your main source should be the book.
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Branches of Statistics: Data can be used in different ways and the two main areas are Branches of Statistics: Data can be used in different ways and the two main areas are Descriptive statistic Inferential statistic Inferential statistic consists of the collection, organization, summarization, and presentation of data. consists of the collection, organization, summarization, and presentation of data. consists of generalizing from samples to populations, performing estimations and hypothesis tests, determining relationships among variables, and making predictions. Note: This PowerPoint is only a summary and your main source should be the book. For example : The average age of the student is 14 years. The median household income for people aged 25-34 is 35.888$. For example: the relationship between smoking and lung cancer. probability.
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1-1:Descriptive and Inferential Statistics
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It is important to distinguish between A population:consists of all subjects (human or otherwise) that are being studied. A sample :is a group of subjects selected from a population Note: This PowerPoint is only a summary and your main source should be the book. For example : In order to study the response times for emergency 988 calls in Jeddah 50 calls are selected randomly over a six month period and the response times are recorded. Population : all calls 988. Sample : 50 calls.
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1-2:Variables and Types of Data variables QualitativeQuantitative DiscreteContinuous Note: This PowerPoint is only a summary and your main source should be the book.
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Types of Variables Qualitative Variables: Quantitative variables are variables that have distinct categories, according to some characteristic or attribute. For example: Gender,Major,Color……etc are variables that can be counted or measured. For example: Age,Height, Weight,temperature …..etc
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Note: This PowerPoint is only a summary and your main source should be the book. Discrete Variables Continuous Variables Quantitative variables classified into two groups assume values that can be counted. For example: Number of children in a family. Number of student in classroom. ……etc assume an infinite number of values between any two specific values. For example: Temperature, Height Weight Time …..etc
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Measurement Scales Qualitative NominalOrdinal Quantitative IntervalRatio Note: This PowerPoint is only a summary and your main source should be the book.
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Nominal level Ordinal level: Measurement Scale of Qualitative classifies data into mutually exclusive, exhausting categories in which no order or ranking can be imposed on the data. For example: Eye color,Gender, Political party, blood types …etc classifies data into categories can be ranked. For example: Grade of course (A,B,C), Size( S,M,L) Rating scale (Poor,Good,Excellent ) Ranking of tennis players …etc
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Note: This PowerPoint is only a summary and your main source should be the book. Interval level Interval level Ratio level Ratio level Measurement Scale of Quantitative ranks data and precise differences between units of measure do exist,however there is no meaningful zero. For example: Temperature, IQ test…etc possesses all the characteristics of interval and there exist a true zero. For example: Height, Weight, Time, Salary, Age …etc
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