AP Precalculus Unit 2 Notes: Understanding Exponentials Through Patterns, Graphs, and Models

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25 Terms

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Sequence

An ordered list of numbers (terms) that follows a rule; a discrete way to describe patterns of change.

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Term (of a sequence)

A number in a sequence; terms are indexed (e.g., a1, a2, …).

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Arithmetic sequence

A sequence in which each term is found by adding/subtracting the same constant each step.

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Common difference (d)

The constant amount added each step in an arithmetic sequence (found by subtracting consecutive terms).

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Explicit formula for an arithmetic sequence

an = a1 + (n−1)d, where a1 is the first term and d is the common difference.

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Consecutive differences test

A check for arithmetic behavior by computing a2−a1, a3−a2, …; if (approximately) constant, the sequence is arithmetic.

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Linear behavior (discrete)

Change by a constant additive amount per step; arithmetic sequences are the discrete version of linear patterns.

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Geometric sequence

A sequence in which each term is found by multiplying by the same constant factor each step.

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Common ratio (r)

The constant multiplier between consecutive terms in a geometric sequence (found by dividing consecutive terms).

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Explicit formula for a geometric sequence

an = a1·r^(n−1), where a1 is the first term and r is the common ratio.

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Consecutive ratios test

A check for geometric behavior by computing a2/a1, a3/a2, …; if (approximately) constant, the sequence is geometric.

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Exponential behavior (discrete)

Change by a constant multiplicative factor (often constant percent change); geometric sequences are the discrete version of exponential patterns.

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Indexing (n−1) in sequences

In an = a1·r^(n−1) (or an = a1 + (n−1)d), the exponent/term uses n−1 so that n=1 gives a1.

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Exponential function

A function where the variable appears in the exponent; commonly f(x)=a·b^x in precalculus.

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Initial value (a) in f(x)=a·b^x

The value at x=0; f(0)=a (the y-intercept in the basic form).

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Base (b) in f(x)=a·b^x

The constant multiplicative factor per 1 unit increase in x; determines growth vs decay.

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Exponential growth

Exponential behavior with b>1 (or factor 1+r where r>0), increasing by a constant percent each step.

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Exponential decay

Exponential behavior with 0<b<1 (or factor 1−r where 0<r<1), decreasing by a constant percent each step.

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Y-intercept of an exponential (basic form)

For f(x)=a·b^x, the y-intercept is f(0)=a.

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Horizontal asymptote (transformed exponential)

For f(x)=a·b^(x−h)+k, the horizontal asymptote is y=k (the graph approaches but may not reach it).

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Transformation parameters (h and k)

In f(x)=a·b^(x−h)+k: h shifts horizontally (right if h>0) and k shifts vertically, changing the asymptote to y=k.

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Exponential model A(t)=A0·b^t

A modeling form where A0 is the initial amount at t=0 and b is the growth/decay factor per unit time.

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Growth/decay factor vs percent rate

If the percent rate per unit is r (decimal), then b=1+r for growth and b=1−r for decay.

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Residual

Observed − predicted; used to compare models (smaller residual magnitudes and no clear pattern indicates a better fit).

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Competing model validation

Choosing between plausible models (often linear vs exponential) by checking differences vs ratios, comparing predictions, and using residuals/context to justify the choice.