Difference between revisions of "IU:TestPage"
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== Course Sections == |
== Course Sections == |
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The main sections of the course and approximate hour distribution between them is as follows: |
The main sections of the course and approximate hour distribution between them is as follows: |
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+ | === Section 1 === |
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+ | |||
+ | ==== Section title ==== |
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+ | Linear equation system solving by using the vector-matrix approach |
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+ | |||
+ | ==== Topics covered in this section ==== |
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+ | * The geometry of linear equations. Elimination with matrices. |
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+ | * Matrix operations, including inverses. <math>LU</math> and <math>LDU</math> factorization. |
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+ | * Transposes and permutations. Vector spaces and subspaces. |
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+ | * The null space: Solving <math>Ax = 0</math> and <math>Ax = b</math>. Row reduced echelon form. Matrix rank. |
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+ | |||
+ | ==== What forms of evaluation were used to test students’ performance in this section? ==== |
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+ | {| class="wikitable" |
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+ | |+ |
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+ | |- |
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+ | ! Form !! Yes/No |
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+ | |- |
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+ | | Development of individual parts of software product code || 1 |
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+ | |- |
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+ | | Homework and group projects || 1 |
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+ | |- |
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+ | | Midterm evaluation || 1 |
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+ | |- |
||
+ | | Testing (written or computer based) || 1 |
||
+ | |- |
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+ | | Reports || 0 |
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+ | |- |
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+ | | Essays || 0 |
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+ | |- |
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+ | | Oral polls || 0 |
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+ | |- |
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+ | | Discussions || 1 |
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+ | |} |
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+ | |||
+ | ==== Typical questions for ongoing performance evaluation within this section ==== |
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+ | # How to perform Gauss elimination? |
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+ | # How to perform matrices multiplication? |
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+ | # How to perform LU factorization? |
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+ | # How to find complete solution for any linear equation system Ax=b? |
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+ | |||
+ | ==== Typical questions for seminar classes (labs) within this section ==== |
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+ | # Find the solution for the given linear equation system <math>Ax=b</math> by using Gauss elimination. |
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+ | # Perform <math>A=LU</math> factorization for the given matrix <math>A</math>. |
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+ | # Factor the given symmetric matrix <math>A</math> into <math>A=LDL^T</math> with the diagonal pivot matrix <math>D</math>. |
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+ | # Find inverse matrix <math>A^-1</math> for the given matrix <math>A</math>. |
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+ | |||
+ | ==== Tasks for midterm assessment within this section ==== |
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+ | |||
+ | |||
+ | ==== Test questions for final assessment in this section ==== |
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+ | # Find linear independent vectors (exclude dependent): <math>\overrightarrow{a}=[4,0,3,2]^T</math>, <math>\overrightarrow{b}=[1,-7,4,5]^T</math>, <math>\overrightarrow{c}=[7,1,5,3]^T</math>, <math>\overrightarrow{d}=[-5,-3,-3,-1]^T</math>, <math>\overrightarrow{e}=[1,-5,2,3]^T</math>. Find <math>rank(A)</math> if <math>A</math> is a composition of this vectors. Find <math>rank(A^T)</math>. |
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+ | # Find <math>E</math>: <math>EA=U</math> (<math>U</math> – upper-triangular matrix). Find <math>L=E^-1</math>, if <math>A=\left( \begin{array}{ccc} 2 & 5 & 7 \\ 6 & 4 & 9 \\ 4 & 1 & 8 \\ \end{array} \right)</math>. |
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+ | # Find complete solution for the system <math>Ax=b</math>, if <math>b=[7,18,5]^T</math> and <math>A=\left( \begin{array}{cccc} 6 & -2 & 1 & -4 \\ 4 & 2 & 14 & -31 \\ 2 & -1 & 3 & -7 \\ \end{array} \right)</math>. Provide an example of vector b that makes this system unsolvable. |
Revision as of 14:00, 17 January 2022
Analytical Geometry \& Linear Algebra -- II
- Course name: Analytical Geometry \& Linear Algebra -- II
- Course number: XYZ
Course Characteristics
Key concepts of the class
- fundamental principles of linear algebra,
- concepts of linear algebra objects and their representation in vector-matrix form
What is the purpose of this course?
This course covers matrix theory and linear algebra, emphasizing topics useful in other disciplines. Linear algebra is a branch of mathematics that studies systems of linear equations and the properties of matrices. The concepts of linear algebra are extremely useful in physics, data sciences, and robotics. Due to its broad range of applications, linear algebra is one of the most widely used subjects in mathematics.
Course objectives based on Bloom’s taxonomy
- What should a student remember at the end of the course?
By the end of the course, the students should be able to
- List basic notions of linear algebra
- Understand key principles involved in solution of linear equation systems and the properties of matrices
- Linear regression analysis
- Fast Fourier Transform
- How to find eigenvalues and eigenvectors for matrix diagonalization and single value decomposition
- What should a student be able to understand at the end of the course?
By the end of the course, the students should be able to
- Key principles involved in solution of linear equation systems and the properties of matrices
- Become familiar with the four fundamental subspaces
- Linear regression analysis
- Fast Fourier Transform
- How to find eigenvalues and eigenvectors for matrix diagonalization and single value decomposition
- What should a student be able to apply at the end of the course?
By the end of the course, the students should be able to
- Linear equation system solving by using the vector-matrix approach
- Make linear regression analysis
- Fast Fourier Transform
- To find eigenvalues and eigenvectors for matrix diagonalization and single value decomposition
Course evaluation
Type | Points |
---|---|
Labs/seminar classes | 20 |
Interim performance assessment | 30 |
Exams | 50 |
Grades range
Grade | Points |
---|---|
A | [85, 100] |
B | [65, 84] |
C | [50, 64] |
D | [0, 49] |
Resources and reference material
- Gilbert Strang. Linear Algebra and Its Applications, 4th Edition, Brooks Cole, 2006. ISBN: 9780030105678
- Gilbert Strang. Introduction to Linear Algebra, 4th Edition, Wellesley, MA: Wellesley-Cambridge Press, 2009. ISBN: 9780980232714
Course Sections
The main sections of the course and approximate hour distribution between them is as follows:
Section 1
Section title
Linear equation system solving by using the vector-matrix approach
Topics covered in this section
- The geometry of linear equations. Elimination with matrices.
- Matrix operations, including inverses. and factorization.
- Transposes and permutations. Vector spaces and subspaces.
- The null space: Solving and . Row reduced echelon form. Matrix rank.
What forms of evaluation were used to test students’ performance in this section?
Form | Yes/No |
---|---|
Development of individual parts of software product code | 1 |
Homework and group projects | 1 |
Midterm evaluation | 1 |
Testing (written or computer based) | 1 |
Reports | 0 |
Essays | 0 |
Oral polls | 0 |
Discussions | 1 |
Typical questions for ongoing performance evaluation within this section
- How to perform Gauss elimination?
- How to perform matrices multiplication?
- How to perform LU factorization?
- How to find complete solution for any linear equation system Ax=b?
Typical questions for seminar classes (labs) within this section
- Find the solution for the given linear equation system by using Gauss elimination.
- Perform factorization for the given matrix .
- Factor the given symmetric matrix into with the diagonal pivot matrix .
- Find inverse matrix for the given matrix .
Tasks for midterm assessment within this section
Test questions for final assessment in this section
- Find linear independent vectors (exclude dependent): , , , , . Find if is a composition of this vectors. Find .
- Find : ( – upper-triangular matrix). Find , if .
- Find complete solution for the system , if and . Provide an example of vector b that makes this system unsolvable.