Theoretical grounds of lambda optimization

Правка en52, от adamant, 2022-01-03 01:07:50

Hi everyone!

This time I'd like to write about what's widely known as "Aliens trick" (as it got popularized after 2016 IOI problem called Aliens). There are already some articles about it here and there, and I'd like to summarize them, while also adding insights into the connection between this trick and generic Lagrange multipliers and Lagrangian duality which often occurs in e.g. linear programming problems.

Familiarity with a previous blog about ternary search or, at the very least, definitions and propositions from it is expected.

Great thanks to mango_lassi and 300iq for useful discussions and some key insights on this.

Note that although explanation here might be quite verbose and hard to comprehend at first, the algorithm itself is stunningly simple.

Another point that I'd like to highlight for those already familiar with "Aliens trick" is that typical solutions using it require binary search on lambdas to reach specified constraint by minimizing its value for specific $$$\lambda$$$. However, this part is actually unnecessary and you don't even have to calculate the value of constraint function at all within your search.

It further simplifies the algorithm and extends applicability of aliens trick to the cases when it is hard to minimize constraint function while simultaneously minimizing target function for the given $$$\lambda$$$.

Tldr.

Let $$$f : X \to \mathbb R$$$ and $$$g : X \to \mathbb R^c$$$. You need to solve the constrained optimization problem

$$$\begin{gather}f(x) \to \min,\\ g(x) = 0.\end{gather}$$$

Let $$$t(\lambda) = \inf_x [f(x) - \lambda \cdot g(x)]$$$. Finding $$$t(\lambda)$$$ is unconstrained problem and is usually much simpler.

It may be rewritten as $$$t(\lambda) = \inf_y [h(y) - \lambda \cdot y]$$$ where $$$h(y)$$$ is the minimum possible $$$f(x)$$$ subject to $$$g(x)=y$$$.

This is applicable if $$$h(y)$$$ is convex, as $$$t(\lambda)$$$ defines a supporting hyperplane of $$$h(y)$$$'s graph with normal vector $$$(-\lambda, 1)$$$.

For convex $$$h(y)$$$, there is a certain monotonicity between $$$\lambda_i$$$ and $$$y_i$$$, so you can find $$$\lambda$$$ corresponding to $$$y=0$$$ with a binary search.

If calculating or minimizing $$$y_i$$$ for specific $$$\lambda_i$$$ is cumbersome, one can do ternary search on $$$t(\lambda)$$$ instead.

If $$$g(x)$$$ and $$$f(x)$$$ are integer functions, a binary search is sometimes doable over integers with $$$\lambda_i$$$ corresponding to $$$h(y_i) - h(y_i-1)$$$.

Boring and somewhat rigorous explanation is below, problem examples are belower.

Lagrange duality

Let $$$f : X \to \mathbb R$$$ be the objective function and $$$g : X \to \mathbb R^c$$$ be the constraint function. The constrained optimization problem

$$$\begin{gather}f(x) \to \min,\\ g(x) = 0\end{gather}$$$

in some cases can be reduced to finding stationary points of the Lagrange function

$$$L(x, \lambda) = f(x) - \lambda \cdot g(x).$$$

Here $$$\lambda \cdot g(x)$$$ is a dot product of $$$g(x)$$$ and a variable vector $$$\lambda \in \mathbb R^c$$$.


Def. 1. A function $$$L(x, \lambda)$$$ defined above is called the Lagrange function, or the Lagrangian.



Def. 2. A vector $$$\lambda \in \mathbb R^c$$$ defined above is called a Lagrange multiplier. Its components are collectively called Lagrange multipliers.


Mathematical optimization focuses on finding stationary points of $$$L(x,\lambda)$$$. However, we're more interested in its infimal projection

$$$t(\lambda) = \inf\limits_{x \in X} L(x,\lambda).$$$

Def. 3. A function $$$t(\lambda)$$$ defined above is called the Lagrange dual function.


Note that $$$t(\lambda)$$$, as a point-wise infimum of concave (linear in $$$\lambda$$$) functions, is always concave, no matter what $$$X$$$ and $$$f$$$ are.

If $$$x^*$$$ is the solution to the original problem, then $$$t(\lambda) \leq L(x^*,\lambda)=f(x^*)$$$ for any $$$\lambda \in \mathbb R^c$$$. This allows us to introduce


Def. 4. The unconstrained optimization problem $$$t(\lambda) \to \max$$$ is called the Lagrangian dual problem.



Def. 5. If $$$\lambda^*$$$ is the solution to the dual problem, the value $$$f(x^*) - t(\lambda^*)$$$ is called the duality gap.



Def. 6. A condition when the duality gap is zero is called a strong duality.


Typical example here is Slater's condition, which says that strong duality holds if $$$f(x)$$$ is convex and there exists $$$x$$$ such that $$$g(x)=0$$$.

Change of domain

In competitive programming, the set $$$X$$$ in definitions above is often weird and very difficult to analyze directly, so Slater's condition is not applicable. As a typical example, $$$X$$$ could be a set of all possible partitions of $$$\{1,2,\dots, n\}$$$ into non-intersecting segments. Besides, instead of specific equation $$$g(x)=0$$$, you are often asked to minimize $$$f(x)$$$ subject to $$$g(x)=y$$$ where $$$y$$$ is a part of problem input.

To mitigate this, we define $$$h(y)$$$ as the minimum value of $$$f(x)$$$ subject to $$$g(x)=y$$$. In this notion, the dual function is written as

$$$t(\lambda) = \inf\limits_{y \in Y} [h(y) - \lambda \cdot y],$$$

where $$$Y=\{ g(x) : x \in X\}$$$. The set $$$Y$$$ is usually much more regular than $$$X$$$, as just by definition it is already a subset of $$$\mathbb R^c$$$. The strong duality condition is also very clear in this terms: it holds if and only if $$$0 \in Y$$$ and there is a $$$\lambda$$$ for which $$$y=0$$$ delivers infimum.


Def. 7. The epigraph of a function $$$f : Y \to \mathbb R$$$ is a set $$$\text{epi }f = \{(y, z) : z \geq f(y)\} \subset Y \times \mathbb R$$$.



Def. 8. A supporting hyperplane of a set $$$X \subset \mathbb R^d$$$ with a normal vector $$$\lambda \in \mathbb R^d$$$ is a surface defined as $$$\lambda \cdot x = c$$$, where $$$c$$$ is the largest possible number such that $$$\lambda \cdot x \geq c$$$ for all $$$x \in X$$$. Equivalently, $$$c$$$ is the infimum of $$$\lambda \cdot x$$$ among all $$$x \in X$$$.


Geometrically, $$$t(\lambda)$$$ defines a level at which the epigraph of $$$h(y)$$$ has a supporting hyperplane with the normal vector $$$(-\lambda, 1)$$$. Indeed, the half-space bounded by such hyperplane on the level $$$c$$$ is defined as $$$\{(y, z) : z-\lambda \cdot y \geq c\}$$$.

All the points $$$(y, h(y))$$$ at which the hyperplane touches the epigraph minimize the $$$t(\lambda)$$$. Please, refer to the picture below. Lower $$$c$$$ would move the hyperplane lower, while higher $$$c$$$ would move it higher. With $$$c=t(\lambda)$$$, the hyperplane is lowest possible while still intersecting the epigraph of the function in the point $$$(y^*, h(y^*))$$$ where $$$y^*$$$ delivers the minimum of $$$h(y) - \lambda \cdot y$$$.

For strong duality to hold for all inputs, all $$$y \in Y$$$ should have a supporting hyperplane that touches the epigraph at $$$(y, h(y))$$$. This condition is essentially equivalent to $$$h(y)$$$ being convex-extensible, that is, there should exist a convex function on $$$\mathbb R^c$$$ such that its restriction to $$$Y$$$ yields $$$h(y)$$$.

$$$1$$$-dimensional case

For now, let's assume that the problem has a single constraint, thus only one dimension to deal with.

Due to general properties of convex functions, larger $$$y$$$ would require larger $$$\lambda$$$ for the supporting line in the point $$$y$$$ and vice versa — larger $$$\lambda$$$ would be able to define a supporting line on larger $$$y$$$ only. This monotonicity means that we can find optimal $$$\lambda$$$.


Algorithm for finding $$$\lambda$$$ that delivers optimal $$$t(\lambda)$$$:

  1. Do the binary search on $$$\lambda$$$. Assume that you work in $$$[\lambda_l, \lambda_r)$$$ and test $$$\lambda_m$$$ with $$$m \approx \frac{l+r}{2}$$$.
  2. Compute optimal $$$x_\lambda$$$ for $$$f(x)-\lambda_m g(x)$$$ function and $$$y_\lambda=g(x_\lambda)$$$ corresponding to it.
  3. When there are several possible $$$x_\lambda$$$, choose the one that delivers minimum $$$y_\lambda$$$.
  4. If $$$y_\lambda > 0$$$, you should reduce working range to $$$[\lambda_l, \lambda_m)$$$, otherwise reduce it to $$$[\lambda_m,\lambda_r)$$$.

Third step is essential, as $$$\lambda_m$$$ can correspond to several consequent $$$y$$$ such that the points $$$(y, h(y))$$$ lie on the same line and, therefore, have a common supporting line. However, if we look on the smallest $$$y$$$ for every $$$\lambda_m$$$, we will guarantee that the values we find are non-decreasing as a function of $$$\lambda_m$$$. If finding minimal $$$y_\lambda$$$ is cumbersome, one might use ternary search instead to solve dual problem directly.


Note: This approach doesn't guarantee that we find $$$x_\lambda$$$ such that $$$g(x_\lambda)=0$$$, however we will find $$$\lambda$$$ that corresponds to the optimum, which would mean that $$$(y_\lambda, f(x_\lambda))$$$ and $$$(y^*, f(x^*))$$$ lie on the same line with a slope coefficient $$$\lambda$$$, thus you can get the answer as

$$$f(x^*) = f(x_\lambda) + (y^*-y_\lambda) \cdot \lambda = f(x_\lambda) - y_\lambda \cdot \lambda = t(\lambda).$$$

Integer search

What are the possible $$$\lambda$$$ for specific $$$y$$$? When $$$h(y)$$$ is continuously differentiable, it essentially means that $$$\lambda$$$ corresponds to $$$y$$$ such that $$$\lambda = h'(y)$$$. On the other hand, when $$$Y$$$ is the set of integers, $$$y$$$ optimizes $$$t(\lambda)$$$ for all $$$\lambda$$$ such that

$$$h(y) - h(y-1) \leq \lambda \leq h(y + 1) - h(y).$$$

So, if $$$h(y)$$$ is an integer function, we may do the integer search of $$$\lambda$$$ on possible values of $$$h(k)-h(k-1)$$$ only.

In a very generic case, when the function is not continuously differentiable and $$$y_i$$$ are not necessarily integer, the set of possible $$$\lambda_i$$$ for a given $$$y_i$$$ is defined as $$$\partial h(y_i)$$$, the so-called sub-differential of $$$h$$$ in $$$y_i$$$, formally defined as $$$[a,b]$$$ where

$$$\begin{gather}a = \sup_{y'_i < y_i} \frac{f(y_i) - f(y'_i)}{y_i - y'_i},~~b = \inf_{y_i < y'_i} \frac{f(y'_i) - f(y_i)}{y'_i - y_i}\end{gather}.$$$

The concept of sub-derivatives and sub-differentials can be generalized to multi-dimensional case as well with sub-gradients.

$$$2$$$-dimensional case

When $$$c>1$$$, the original problem might be reduced to a sequence of nested single-dimensional problems. Let's start with $$$c=2$$$.

$$$\inf\limits_{\substack{g_1(x)=0\\g_2(x)=0}} f(x) = \max\limits_{\lambda_1}\inf\limits_{g_2(x)=0} [f(x)-\lambda_1 g_1(x)] = \max\limits_{\lambda_1} t(\lambda_1),$$$

The function $$$t(\lambda_1)$$$ can also be rewritten as a maximum of the Lagrangian dual:

$$$\begin{gather}t(\lambda_1) = \max\limits_{\lambda_2} \inf\limits_x [f_{\lambda_1}(x)-\lambda_2 g_2(x)]=\max\limits_{\lambda_2}t_{\lambda_1}(\lambda_2),\\ f_{\lambda_1}(x) = f(x) - \lambda_1 g_1(x). \end{gather}$$$

Thus, rather than solving joint problem on $$$\lambda_1,\lambda_2$$$, we need to solve two Lagrangian dual problems:

$$$\begin{align} t(\lambda_1) &= \inf\limits_{g_2(x)=0} [f(x)-\lambda_1 g_1(x)] \to \max,\\ t_{\lambda_1}(\lambda_2) &= \inf\limits_x [f_{\lambda_1}(x)-\lambda_2 g_2(x)] \to \max. \end{align}$$$

Rewriting them in $$$h$$$-terms, we obtain

$$$\begin{align} t(\lambda_1) &= \inf\limits_{y_1} [h(y_1)-\lambda_1 y_1],\\ t_{\lambda_1}(\lambda_2) &= \inf\limits_{y_2} [h_{\lambda_1}(y_2)-\lambda_2 y_2], \end{align}$$$

where $$$h$$$-functions are defined in the following way:

$$$\begin{align} h(y_1) &= h(y_1, 0),\\ h_{\lambda_1}(y_2) &= \inf\limits_{y_1} [h(y_1, y_2) - \lambda_1 y_1]. \end{align}$$$

For both problems to have strong duality, both $$$h(y_1) = h(y_1, 0)$$$ and $$$h_{\lambda_1}(y_1)$$$ must be convex.

Multidimensional case

Let's for the sake of clarity write down the full sequence of nested $$$1$$$-dimensional optimization problems in $$$c$$$-dimensional case.

We need to optimize $$$f(x)$$$ w.r.t $$$g_1(x) = g_2(x) = \dots = g_n(x)=0$$$. We introduce $$$\lambda_1, \dots, \lambda_n$$$. and solve the optimization problem

$$$\max\limits_{\lambda_1 \dots \lambda_n} t(\lambda_1, \dots, \lambda_n) = \max\limits_{\lambda_1} \dots \max\limits_{\lambda_n} \inf\limits_x [f(x) - \lambda_1 \cdot g_1(x) - \dots - \lambda_n \cdot g_n(x)].$$$

We decompose it in a sequence of nested problems in the following way:

$$$\max\limits_\lambda t(\lambda) = \max\limits_{\lambda_1} t(\lambda_1) = \max\limits_{\lambda_1} \max\limits_{\lambda_2} t_{\lambda_1}(\lambda_2) = \max\limits_{\lambda_1} \max\limits_{\lambda_2} \max\limits_{\lambda_3} t_{\lambda_1 \lambda_2}(\lambda_3) = \dots,$$$

where

$$$\begin{gather} t_{\lambda_1 \dots \lambda_{k-1}}(\lambda_k) = \inf\limits_{\substack{g_{k+1}(x)=0 \\ \dots \\ g_n(x) = 0}} [f_{\lambda_1 \dots \lambda_{k-1}}(x) - \lambda_k \cdot g_k(x)],\\ f_{\lambda_1 \dots \lambda_{k-1}}(x) = f(x) - \lambda_1 g_1(x) - \dots - \lambda_{k-1} g_{k-1}(x).\end{gather}$$$

With the help of $$$h(y_1, \dots, y_n)$$$, the same could be rewritten as

$$$\begin{gather} t_{\lambda_1 \dots \lambda_{k-1}}(\lambda_k) = \inf\limits_{y_k} [h_{\lambda_1 \dots \lambda_{k-1}}(y_k) - \lambda_k \cdot y_k],\\ h_{\lambda_1 \dots \lambda_{k-1}}(y_k) = \inf\limits_{y_1 \dots y_{k-1}} [h(y_1,\dots,y_{k-1},y_k,0,\dots,0) - \lambda_1 y_1 - \dots - \lambda_{k-1} y_{k-1}].\end{gather}$$$

For nested binary search on $$$\lambda$$$ components to work, every function $$$h_{\lambda_1 \dots \lambda_{k-1}}(y_k)$$$ must be convex, including $$$h(y_1) = h(y_1, 0, \dots, 0)$$$.

The whole procedure could roughly look as follows:

void adjust(double *lmb, int i, int c) {
    if(i == c) {
        return;
    }
    double l = -inf, r = +inf; // some numbers that are large enough
    while(r - l > eps) { // Might be unsafe on large numbers, consider fixed number of iterations
        double m = (l + r) / 2;
        lmb[i] = m;
        adjust(lmb, i + 1, c);
        auto [xl, yl] = solve(lmb, i); // returns (x_lambda, y_lambda) with the minimum y_lambda[i]
        if(yl[k] > 0) {
            r = m;
        } else {
            l = m;
        }
    }
    lmb[i] = (l + r) / 2;
}

Alternatively, one might consider nested ternary search to solve joint dual problem directly.

Testing convexity

Differential criteria. When $$$Y$$$ is continuous set, convexity may be tested by local criteria. For one-dimensional set, $$$h(y)$$$ is convex if and only if $$$h'(y)$$$ is non-decreasing. If it has a second derivative, we might also say that the function is convex if and only if $$$h' '(y) \geq 0$$$ for all $$$y$$$.

In multidimensional case, the local criterion is that the Hessian matrix $$$\frac{\partial h}{\partial y_i \partial y_j}$$$ is a positive semi-definite.

Finite differences. In discrete case, derivatives can be substituted with finite differences. A function $$$h(y) : \mathbb Z \to \mathbb R$$$ is convex if and only if

$$$\Delta [h] (y) = h(y+1)-h(y)$$$

is non-decreasing or, which is equivalent,

$$$\Delta^2 [h] (y) = h(y+2)-2h(y+1)+h(y) \geq 0.$$$

Reduction to mincost flow. Another possible way to prove that $$$1$$$-dimensional $$$h(y)$$$ is convex in relevant problems is to reduce it to finding min-cost flow of size $$$y$$$ in some network. The common algorithm to find such flow pushes a flow of size $$$1$$$ through the shortest path in the residual network. The shortest path becomes larger with each push, guaranteeing that mincost flow is convex in $$$y$$$. This method was revealed to me by 300iq.

Testing convexity in $$$1$$$-dimensional reductions. In multidimensional discrete case testing convexity might be challenging. Instead of this, one may try to directly prove that every single-dimensional $$$h$$$-function defined above is convex. Specifically, for $$$2$$$-dimensional case one would need to prove the convexity of

$$$\begin{align} h(y_1) &= h(y_1, 0),\\ h_{\lambda_1}(y_2) &= \inf\limits_{y_1} [h(y_1, y_2) - \lambda_1 y_1]. \end{align}$$$

Problem examples

Sometimes the problem is stated with $$$\max$$$ rather than $$$\min$$$. In this case, $$$t(\lambda)$$$ and $$$h(y)$$$ are defined as supremum and maximum rather than infimum and minimum. Correspondingly, $$$h(y)$$$ needs to be concave rather than convex to allow the usage of the trick.


Gosha is hunting. You're given $$$a$$$, $$$b$$$, $$$p_1, \dots, p_n$$$ and $$$q_1,\dots, q_n$$$. You need to pick two subsets $$$A$$$ and $$$B$$$ of $$$\{1,2,\dots,n\}$$$ of size $$$a$$$ and $$$b$$$ correspondingly in such a way that the following sum is maximized:

$$$f(A, B) = \sum\limits_{i \in A} p_i + \sum\limits_{j \in B} q_j - \sum\limits_{k \in A \cap B} p_k q_k.$$$

Formulating it as a constrained optimization problem, we obtain

$$$\begin{gather}f(A, B) \to \max, \\ |A| - a = 0, \\ |B| - b = 0.\end{gather}$$$

Lagrangian dual here is

$$$t(\lambda_1, \lambda_2) = \max\limits_{A,B} [f(A, B) - \lambda_1|A| - \lambda_2|B|] + \lambda_1 a + \lambda_2 b.$$$

Let $$$h(\alpha,\beta) = \max f(A, B)$$$ subject to $$$|A| = \alpha$$$ and $$$|B| = \beta$$$, then

$$$t(\lambda_1, \lambda_2) = \max\limits_{\alpha,\beta}[h(\alpha,\beta)-\lambda_1 (\alpha-a) - \lambda_2 (\beta-b)].$$$

As it is $$$2$$$-dimensional problem, we would need to prove the concavity of the following functions:

$$$\begin{align} h(\alpha) &= h(\alpha, 0),\\ h_{\lambda_1}(\beta) &= \max\limits_\alpha[h(\alpha, \beta) - \lambda_1\alpha] + \lambda_1 a. \end{align}$$$

To prove the concavity of $$$h_{\lambda_1}$$$, we can consider the alternative formulation of this problem

$$$h_{\lambda_1}(\beta) = \max\limits_{|B|=\beta} [f(A, B)-\lambda_1|A|] + \lambda_1 a,$$$

which is the primal problem for $$$h_{\lambda_1}$$$. We can interpret it as if we're penalized by $$$\lambda_1$$$ for every element from the set $$$A$$$, but we have no constraint on its size. It means, that we might by default take into the answer all elements of $$$A$$$ having $$$p_i \geq \lambda_1$$$.

Then we might sort all potential elements of $$$B$$$ by their potential contribution to $$$f(A, B)$$$ if we pick this element and pick top $$$\beta$$$ elements in the sorted list. Since we sorted the elements by their contribution before picking them, increasing $$$\beta$$$ will lead to smaller increases in $$$f(A, B)$$$ proving that $$$h_{\lambda_1}$$$ is concave. Here's an example solution with nested ternary search on $$$t(\lambda_1,\lambda_2)$$$:

Code

Note that we do not have to minimize $$$|A|$$$ or $$$|B|$$$ when we use ternary search on $$$t(\lambda_1,\lambda_2)$$$ instead of binary search on $$$\lambda$$$ to match it with $$$|A|=a$$$ and $$$|B|=b$$$. In this way, we do not need to care about $$$|A|$$$ and $$$|B|$$$ and might as well not store it at all throughout the code.


Minkowski addition on epigraphs. Let $$$f_1 : [0,N] \to \mathbb R$$$ and $$$f_2 : \mathbb [0,M] \to \mathbb R$$$ be convex functions computable in $$$O(1)$$$. You need to quickly compute $$$f(x)$$$ for any given point $$$x$$$ where $$$f : \mathbb [0,N+M] \to \mathbb R$$$ is a convex function defined as:

$$$\text{epi } f = \text{epi }f_1 + \text{epi }f_2.$$$

From this definition follows an alternative formula for $$$f(x)$$$:

$$$f(x) = \min\limits_{x_1+x_2=x}[f_1(x_1)+f_2(x_2)],$$$

thus we can say that $$$f$$$ is a convolution of $$$f_1$$$ and $$$f_2$$$ with $$$\min$$$-operation.

To solve this problem, we introduce

$$$t(\lambda) = \inf\limits_{x_1,x_2}[f_1(x_1)+f_2(x_2) - \lambda x_1 - \lambda x_2] + \lambda x.$$$

Formally, constraint function here is $$$g(x_1,x_2) = x_1+x_2-x$$$ and corresponding $$$h$$$-function is defined as

$$$h(y) = \min\limits_{x_1+x_2-x=y} [f_1(x_1) + f_2(x_2)] = f(x+y),$$$

therefore $$$h(y)$$$ is convex as well and strong duality holds. To compute $$$t(\lambda)$$$, we can separate variables as

$$$t(\lambda) = \inf\limits_{x_1} [f_1(x_1) - \lambda x_1] + \inf\limits_{x_2} [f_2(x_2) - \lambda x_2] + \lambda x.$$$

Since $$$f_1$$$ and $$$f_2$$$ are convex, corresponding infimums are computable in $$$O(\log C)$$$ with the ternary search, therefore $$$f(x)$$$ as a whole is computable in $$$O(\log^2 C)$$$.

Another noteworthy fact here is that optimal $$$(x_1, x_2)$$$ always define points such that both $$$f_1$$$ and $$$f_2$$$ have a supporting line with the slope $$$\lambda$$$ in $$$x_1$$$ and $$$x_2$$$ correspondingly.

It means that if $$$f_1$$$ and $$$f_2$$$ are defined in $$$[0,N] \cap \mathbb Z$$$ and $$$[0,M] \cap \mathbb Z$$$ instead of $$$[0,N]$$$ and $$$[0,M]$$$, it is possible to compute values of $$$f$$$ in $$$[0,N+M] \cap \mathbb Z$$$ in $$$O(N+M)$$$ by merging two arrays as in merge-sort, but comparing $$$a_{i+1}-a_i$$$ and $$$b_{i+1}-b_i$$$ instead of $$$a_i$$$ and $$$b_i$$$.


More examples will be added later.

References

Теги lambda, aliens, tutorial, lagrange, duality

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en68 Английский adamant 2023-10-11 00:47:07 8
en67 Английский adamant 2022-02-13 16:55:43 33
en66 Английский adamant 2022-01-04 14:57:40 25
en65 Английский adamant 2022-01-04 05:03:24 6363 + honorable mention
en64 Английский adamant 2022-01-04 04:20:18 8 articles
en63 Английский adamant 2022-01-04 04:18:39 354 example 3
en62 Английский adamant 2022-01-04 04:00:52 748 tldr structured
en61 Английский adamant 2022-01-04 03:39:52 33
en60 Английский adamant 2022-01-04 03:38:28 721 example, part 2
en59 Английский adamant 2022-01-04 03:25:48 784
en58 Английский adamant 2022-01-04 03:18:14 1414 example
en57 Английский adamant 2022-01-04 00:21:04 4
en56 Английский adamant 2022-01-04 00:20:45 570 better code for min_conv
en55 Английский adamant 2022-01-03 15:20:41 472 clarified tldr
en54 Английский adamant 2022-01-03 03:37:09 688 code for max-conv of concave functions
en53 Английский adamant 2022-01-03 01:11:10 43 link
en52 Английский adamant 2022-01-03 01:07:50 30
en51 Английский adamant 2022-01-03 01:06:56 12
en50 Английский adamant 2022-01-03 01:02:56 1815 + example
en49 Английский adamant 2022-01-02 20:14:13 160 sections in testing convexity
en48 Английский adamant 2022-01-02 13:29:02 129
en47 Английский adamant 2022-01-02 13:26:24 104 (published)
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en26 Английский adamant 2021-12-28 19:28:41 1585
en25 Английский adamant 2021-12-28 18:57:44 52
en24 Английский adamant 2021-12-28 18:44:26 5
en23 Английский adamant 2021-12-28 18:43:58 915
en22 Английский adamant 2021-12-28 18:28:53 112
en21 Английский adamant 2021-12-28 18:25:09 218
en20 Английский adamant 2021-12-28 18:18:48 1224 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en19 Английский adamant 2021-12-28 17:51:33 66
en18 Английский adamant 2021-12-28 17:50:21 316 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en17 Английский adamant 2021-12-28 17:35:06 409 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en16 Английский adamant 2021-12-28 17:18:07 81 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en15 Английский adamant 2021-12-28 17:14:07 1049 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en14 Английский adamant 2021-12-28 16:12:52 96 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en13 Английский adamant 2021-12-28 16:01:48 338 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en12 Английский adamant 2021-12-28 15:54:43 903 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en11 Английский adamant 2021-12-28 04:38:22 2 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en10 Английский adamant 2021-12-28 04:35:18 118 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en9 Английский adamant 2021-12-28 04:23:41 1406 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en8 Английский adamant 2021-12-28 03:18:55 333 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en7 Английский adamant 2021-12-28 02:59:30 322 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en6 Английский adamant 2021-12-28 01:40:50 2845 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en5 Английский adamant 2021-12-27 22:08:35 26 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en4 Английский adamant 2021-12-26 19:06:11 0 Tiny change: 'blem\n\n$$f(x)→ming(x)=0f(x)→ming(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en3 Английский adamant 2021-12-26 01:42:07 1888 Tiny change: 'blem\n\n$$f(x)→extrg(x)=0f(x)→extrg(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en2 Английский adamant 2021-12-25 16:27:58 176 Tiny change: 'blem\n\n$$f(x)→extrg(x)=0f(x)→extrg(x)=0\begin{gat' -> 'blem\n\n$$\begin{gat'
en1 Английский adamant 2021-12-25 16:21:30 2909 Initial revision (saved to drafts)