SU-EE364A JAN082026
Last edited: January 1, 2026Key Sequence
Notation
New Concepts
Important Results / Claims
- operations that preserve convexity
- seperating hyperplane theorem
- supporting hyperplane theorem
- some convex functions
- some concave fuctions
- convexity preserve line restriction
Questions
Interesting Factoids
China Economy Index
Last edited: January 1, 2026convex function
Last edited: January 1, 2026a function for which, given any two points, the function between those points sits at (lines are convex!) or below the plane given those points
constituents
For \(f: \mathbb{R}^{n} \to \mathbb{R}\)
requirements
\begin{equation} f\qty(\theta x + \qty(1-\theta) y) \leq \theta f\qty(x) + \qty(1-\theta) f\qty(y) \end{equation}
strictly convex is the strict inequality
additional information
some convex functions
- affine: \(ax + b\)
- exponential: \(e^{ax}\)
- powers: \(x^{\alpha}\) for \(\alpha \geq 1\) or \(\alpha \leq 0\)
- \(|x|^{p}\) for \(p > 1\)
- relu
- any norm
- sum of squares: \(\qty {x}^{2}_{2} = x_1^{2} + … + x_{n}^{2}\)
- max function: \(\max \qty(x) = \max \qty {x_1 \dots x_{n}}\)
- softmax: \(\log \qty(\exp x_1 + \dots + \exp x_{n})\)
some concave fuctions
- affine
- powers
- logs: \(\log x\)
- entropy: \(- x \log x\)
- negative part (opposite relu)
convex set
Last edited: January 1, 2026constituents
- set \(C\)
- \(\theta \in \mathbb{R}\)
requirements
A set \(C\) is a convex set if:
\begin{equation} x_1, x_2 \in C, 0 \leq \theta \leq 1 \implies \theta x_{1} + \qty(1-\theta) x_{2} \in C \end{equation}
definitions
additional information
operations that preserve convexity
Convex sets is a calculus! Methods to showing complexity:
- apply definition: show \(x_1, x_2 \in C, 0 \leq \theta \leq 1 \implies \theta x_1 + \qty(1-\theta) x_2 \in C\)
- use convex functions
- show that \(C\) is obtained from convex sets via the following operations
intersection
Intersections of any number of convex sets, include infinite, are convex.
convexity preserve line restriction
Last edited: January 1, 2026\(f: \mathbb{R}^{n} \to \mathbb{R}\) is convex IFF the function \(g: \mathbb{R} \to \mathbb{R}\) is convex:
\begin{equation} g\qty(t) = f\qty(x + tv), \text{dom } g = \qty {t \mid x + tv \in \text{dom }f} \end{equation}
is convex in \(t \in \mathbb{R}\) for any \(x \in \text{dom } f\), \(v \in \mathbb{R}^{n}\).
