Terms and Formulas
Aida Haghighi
Term | Formula | Explanation |
Ratio | a : b | |
Proportion | An equation with a ratio (or rate) on two sides, in which the two ratios are equal. | |
Cross-product rule | Multiplying along two diagonals and solving for the unknown. | |
Percent proportion method | ||
Percent increase | = | |
Percent decrease | = | |
Linear equation: slope-intercept form | y = mx + b | m is the slope and b is the constant. |
Slope of a linear equation | ||
Linear equation: standard form | Ax + By = C | |
Slope of a linear equation in standard form | ||
Linear equation: Point-slope formula | ||
Average rate of change | The average rate of change between two input values is the total change of the function values (output values) divided by the change in the input values. | |
Quadratic function: standard form | ||
Quadratic function: vertex form | ||
Vertex of a quadratic function |
, |
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Quadratic formula | It gives the horizontal intercepts. | |
Exponential growth or decay function | or where | a is the initial or starting value, r is the percent growth or decay rate, and b is the growth factor.
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Compound Interest Formula | r is the annual percentage rate (APR), also called the nominal rate, and k is the number of compounding periods in one year | |
Continuous Growth Formula | f(x) = | |
Conversion to log form | ba = c is equivalent to the statement logb(c) = a . | |
Properties of Logs: Inverse Properties | logb(bx) = x
blogbx = x |
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Properties of Logs: Exponent Property |
logb(Ar) = rlogb(A) |
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Properties of Logs: Change of Base | ||
Sum of Logs Property | ||
Difference of Logs Property | ||
Half-Life (Based on standard exponential function) | ||
Half-Life (Based on continuous change function) | ||
Doubling Time (Based on standard exponential function) |
2 = bt |
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Half-Life (Based on continuous change function) | ||
Subset | set A is a subset of a set B if every member of A is also a member of B. | |
Union of two sets | The set of all elements that are either in A or in B, or in both. | |
Intersection of two sets | The set of all elements that are common to both sets A and B. | |
Complement of a set | The set consists of elements in the universal set U that are not in A. | |
Permutations |
nPr = |
The Number of Permutations of n Objects Taken r at a Time. |
Circular Permutations |
(n − 1)! |
The number of permutations of n elements in a circle. |
Permutations with Similar Elements |
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The number of permutations of n elements taken n at a time, with r1 elements of one kind, r2 elements of another kind, and so on. |
Combinations | nCr = | The Number of Combinations of n Objects Taken r at a Time |
Probability addition rule | The probability of the union of two events | |
The complement rule | ||
Conditional probability | P(E | F) = | The probability of E given F |
Independence test | Two Events E and F are independent. | |
Binomial Probability Theorem | P(n, k; p) = nCkpkqn – k | p denotes the probability of success and q = (1 − p) the probability of failure. |
Bayes’ Formula | Let S be a sample space that is divided into n partitions, A1, A2, . . . An and E is any event in S. | |
Expected Value | Expected Value = x1p(x1) + x2p(x2) + x3p(x3) + ··· + xnp(xn) | |
Markov Chains | ||
Equilibrium vector | ET = E
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The system is in steady-state or state of equilibrium in the long run. T is the transition matrix and E is the equilibrium vector. |