Applied Mathematics Ⅰ

Course Information

College Tsuyama College Year 2024
Course Title Applied Mathematics Ⅰ
Course Code 0141 Course Category General / Compulsory
Class Format Lecture Credits School Credit: 2
Department Department of Integrated Science and Technology Communication and Informations System Program Student Grade 4th
Term Year-round Classes per Week 2
Textbook and/or Teaching Materials
Instructor MATSUDA Osamu,FUKUDA Nobuyuki,MATSUDA Noriko

Course Objectives

Purpose of learning: To understand the meaning of statistics be able to estimate and test from actual statistical data.

Attainment target
1. You can find various probabilities and understand the probability of complementary events, the addition theorem of probability, and the probability of mutual exclusivity.
2. To be able to find conditional probabilities and understand the multiplication theorem of probabilities and the probabilities of independent events.
3. To understand 1D and 2D data to obtain mean, variance, standard deviation, correlation coefficient, and regression line.
4. To understand the basic sample distribution and be able to calculate probabilities using it.
5. To learn how to estimate and test the population parameter.

Rubric

Ideal LevelStandard LevelUnacceptable Level
Achievement 1Clearly understand the probability of complementary events, the addition theorem of probability, and the probability of mutual exclusivity, and solve basic problems.Can solve about 60% of the basic problems of probability of complementary events, the addition theorem of probability, and the probability of mutual exclusivity.Cannot solve about 60% of the basic problems of the probability of complementary events, the addition theorem of probability, and the probability of mutual exclusivity.
Achievement 2Understand conditional probabilities, multiplication rules of probabilities, and probabilities of independent events, and be able to solve basic problems.Can solve about 60% of the basic problems of conditional probability, multiplication rule of probability, and probability of independent events.Cannot solve about 60% of the basic problems of conditional probability, multiplication rule of probability, and probability of independent event.
Achievement 3Clearly understand the meanings of mean, variance, standard deviation, correlation coefficient, regression line, etc. for 1D and 2D data and can calculate them.Understand and can calculate the mean, variance, standard deviation, correlation coefficient, regression line, etc. of 1D and 2D data.Doesn't understand the mean, variance, standard deviation, correlation coefficient, regression line, etc. of 1D and 2D data.
Achievement 4Clearly understand the meaning of the basic sample distribution and can calculate probability using it.Can calculate using a basic sample distribution and work about 60% of problems.Cannot calculate using a basic sample distribution and cannot work about 60% of problems.
Achievement 5 Clearly understand the method of estimating the population parameter and the method of the test, and can solve the standard problems related to them.Can solve about 60% of the standard problems related to the method of estimating the population parameter.Cannot solve about 60% of the standard problems related to the method of estimating the population parameter.

Assigned Department Objectives

Teaching Method

Outline:
General or Specialized : Specialized
Field of learning : Natural science Common / Basic
Foundational academic disciplines : Mathematical science / Mathematics / Analysis basics
Relationship with Educational Objectives : This subject corresponds to the learning goal "(2) Acquire basic science and technical knowledge".
Relationship with JABEE programs : The main goal of learning / education in this class are "(A) ".
Class Outline: In Applied Mathematics I, you will learn the basics of probability theory and statistics. In probability theory, we look at the theory of distributions (binomial distribution, Poisson distribution, normal distribution) and the central limit theorem, which are important in statistical processing. Learn the equations of correlation and regression line as an arrangement of two-variable data. Finally, learn how to estimate and test the population.
Style:
Course method : Focus on understanding the content on the board, and assign as many exercises as possible to deepen understanding.
Grade evaluation method : 4 regular exams (50%) and other exams, exercises, reports and effort of class(50%). etc,
Re-examination: At the end of the first semester and the end of the second semester, during the supplementary classes, those with a score of 59 points or less will be tested.
Notice:
Precautions on enrollment : Students must take this class (no more than one-third of the required number of class hours missed) in order to complete the academic year.
Course advice: This course teaches the basic ideas of ​​probability and statistical methods required for engineering, so this course is of great importance.
Foundational subjects : Fundamental Mathematics (1st year), Fundamental Linear Algebra (2nd), Differential and Integral Ⅰ(2nd), Differential and Integral Ⅱ (3rd)
Related subjects: Mathematics, physics, and other subjects after the third year
Attendance advice : If you are late after, you may be treated as absent after a warning.
Preparatory study in advance: Read the units of the text that you will be studying that week.
This course is taught by a part-time lecturer. Matsuda is the contact teacher.

Characteristics of Class / Division in Learning

Active Learning
Aided by ICT
Applicable to Remote Class
Instructor Professionally Experienced
Must complete subjects

Course Plan

Theme Goals
1st Semester
1st Quarter
1st Guidance Definition and nature of probability 1 Understanding the basic formula of probability
2nd Definition and property of probability 2 Understanding iterative trials
3rd
Various probabilities
Understanding conditional probabilities
4th
Various probabilities 2
Understanding Bayes' theorem
5th Random variables and probability distribution 1 Understanding Random Variables and Probability Distributions
6th Random variables and probability distribution 2 Understanding the binomial distribution and Poisson distribution
7th Probability and random variable exercises
8th
First term midterm exam
2nd Quarter
9th Return and explanation of answers, random variables and probability distribution 3 Understanding the normal distribution
10th Random variables and probability distribution 4 Understanding the binomial and normal distributions
11th One-dimensional data 1
Understanding frequency distribution table and representative values
12th One-dimensional data 2
Understanding variance and standard deviation
13th 2 variable data 1
Understanding correlation
14th 2 variable data 2 Understanding regression lines
15th
Last term exam
16th Return of answer, commentary, supplementary explanation
2nd Semester
3rd Quarter
1st Statistic and sampling distribution 1 Understanding Statistics and Sampling Distribution
2nd Statistic and sampling distribution 2 Understanding various probability distributions
3rd Statistic and sampling distribution 3 Confirmation of goals
4th Statistical inference 1 Point test / interval estimation of population mean
5th Statistical inference 2 Interval estimation of population ratio
6th Statistical inference 3 Interval estimation of population variance
7th Statistical inference exercises
8th Late midterm exam
4th Quarter
9th Return of answer, commentary, supplementary explanation
10th Hypothesis test 1 Hypothesis and test, test of population mean
11th Hypothesis test 2 Population mean test
12th Hypothesis test 3
Test of population ratio
13th Hypothesis test 4 Test of population variance
14th
Hypothesis testing exercises
15th Year-end exam
16th Return of answer, commentary, supplementary explanation

Evaluation Method and Weight (%)

ExaminationPresentationMutual Evaluations between studentsBehaviorPortfolioOtherTotal
Subtotal50000050100
Basic Proficiency50000050100
Specialized Proficiency0000000
Cross Area Proficiency0000000