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Estimating the longest increasing sequence in polylogarithmic time

Estimating the longest increasing sequence in polylogarithmic time. C. Seshadhri ( Sandia National Labs) Joint work with Michael Saks ( Rutgers University ).

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Estimating the longest increasing sequence in polylogarithmic time

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  1. Estimating the longest increasing sequence in polylogarithmic time C. Seshadhri (Sandia National Labs) Joint work with Michael Saks (Rutgers University) Sandia National Laboratories is a multi-program laboratory managed and operated by Sandia Corporation, a wholly owned subsidiary of Lockheed Martin Corporation, for the U.S. Department of Energy's National Nuclear Security Administration under contract DE-AC04-94AL85000

  2. The problem 4 4 24 10 10 9 15 15 17 17 20 18 18 4 19 19 3 • Given array f:[n] → N, find (length of) Longest Increasing Subsequence (LIS) • Rather self-explanatory • By now, textbook dynamic programming problem • [CLRS 01] Chapter 15.4 (Longest Common Subsequence), Starred Problem 15.4-6 • [Schensted 61, Fredman 75] O(n log n) algorithm

  3. Too much to read |LIS| is in range [0.4n, 0.6n] • Array f is extremely large, so can’t read all of it • What can we say about LIS length, if we see very little? • |LIS| = LIS length • Read only poly(log n) positions • Obviously randomized Algorithm 5 7 4 8 9 2

  4. Uniform sample says nothing • Choose uniform random sample of poly(log n) size • |LIS| = n/2, but random sample always increasing • So not really that easy to learn about |LIS|… 2 1 4 4 3 6 5 8 7 10 9 9

  5. Our result |LIS| in this range Algorithm 1 n • We want range to be small |LIS|

  6. |LIS| in this range Our result δn Algorithm 1 n • We want range to be small • [This work] For any (constant) δ > 0 Algorithm gives additive δn approximation to |LIS| Running time is (1/δ)1/δ(log n)c |LIS|

  7. Ad alert! Our result δn 1 n/2 n • We want range to be small • [This work] For any (constant) δ > 0 Algorithm gives additive δn approximation to |LIS| Running time is (1/δ)1/δ(log n)c • [Ailon Chazelle Liu S 03] [Parnas Ron Rubinfeld 03] Previous best: δ = ½ |LIS|

  8. Ad alert! Our result δn 1 n/2 n • We want range to be small • [This work] For any (constant) δ > 0 Algorithm gives additive δn approximation to |LIS| Running time is (1/δ)1/δ(log n)c • We get (1+δ)-approx to distance to monotonicity • Previously best was factor 2 |LIS|

  9. Prelims: the array in space 20 15 10 4 4 20 10 10 9 15 15 4 1 2 3

  10. Prelims: the array in space • Input is points in plane, given as array • (LIS is longest chain in partial order) Violation Increasing sequence

  11. A hard example k k 10 points in each • The decision for a point depends on small scale properties of “far away” portions k k |LIS| = 4k |LIS| = 2k 3k k k 3k

  12. A hard example k k • Random samples in neighborhoods of points are identical! • “Can we really estimate LIS in polylog time?” • Is it time for some heavy work? • I mean, time for lbs (lower bounds). k k 3k k k 3k

  13. Outline (or lack thereof) • Will I show proofs? • No • Will I show the algorithm? • Maybe • I will try to demonstrate the main insight • By a series of thought experiments

  14. The dynamic program Closest LIS point to left • Closest LIS point to left gives “splitter” • Find LIS is each blue region. Piece together! • So we break up original problem into subproblems Splitter n/2

  15. The dynamic program • But we don’t know right splitter. • So try all possible! Only n different choices • Choose the one that gives the largest sum of LIS’s • MaxS (|LIS-below-S| + |LIS-above-S|) S n/2

  16. The dynamic program • If you LIS in all small boxes, you can build LIS for bigger boxes • Not the most efficient DP… • So our sublinear algo will mimic this process n/2

  17. The IP Is this point on LIS? LIS is in blue region Splitter n/2 Where is the splitter? It is there.

  18. The IP This point NOT on LIS LIS is in blue region n/2 Where is the splitter? It is there.

  19. The IP n/2 3n/4 I wish we knew the splitter in that region It is there.

  20. The IP n/2 3n/4 5n/8 I think I know what will happen next You’re lucky I’m here

  21. The IP n/2 3n/4 5n/8 I think I know what will happen next You’re lucky I’m here

  22. The IP n/2 3n/4 5n/8 I think I know what will happen next You’re lucky I’m here

  23. The interactive protocol • If point stays in blue region till very end, then it is good (on LIS). Otherwise, bad. • This takes (log n) steps, with the help of the wizard

  24. The interactive protocol • If point stays in blue region till very end, then it is good (on LIS). Otherwise, bad. • This takes (log n) steps, with the help of the wizard • If we could simulate the wizard…

  25. The interactive protocol • If point stays in blue region till very end, then it is good (on LIS). Otherwise, bad. • This takes (log n) steps, with the help of the wizard • If we could simulate the wizard… What?? If you could simulate the wizard, you know the LIS!

  26. Find a splitter If very few LIS points outside blue, this is not a bad splitter • Finding splitter may be hard, so try for approximate versions…? • But how do we determine the number of LIS points? n/2

  27. Find a splitter Total no. of points outside blue< μn • If μ < 1/(100 log n), being against health care conservative is good enough Conservative splitter n/2

  28. Easy to check • Count fraction of sample outside blue • poly(log n) samples checks this accurately n/2

  29. Getting a conservative splitter • We can sample (log n) different candidates and check which of them disbelieves evolution is conservative • What if no conservative splitter exists? n/2

  30. A liberal paradise No. of points outside at least μn Choose any line • So we know that |LIS| < (1-μ) n • Leads to the next idea. Boosting approximations! • Given δ-approx to LIS, can we get improve to δ’? n/2

  31. Boosting approximations Run δn-approx on points in box No. of points outside at least μn • Take sum of outputs as total LIS estimate • |LIS| = |LIS1| + |LIS2|, Est = Est1 + Est2 • |Est1 – LIS1| < δn1 |Est2 – LIS2| < δn2 • So |Est – LIS| < δ(n1 + n2) • n1+n2 < (1-μ)n, so |Est – LIS| < δ(1-μ)n ! n2 Run δn-approx on points in box Real splitter n1 n/2

  32. Putting it together Conservative splitter? • Check if each is conservative splitter • If it is, we’re found right subproblems • Otherwise… n/2

  33. Putting it together Run δn-approx on points in box • One of these is “close enough” to real splitter • Est(S) = Left-Est(S) + Right-Est(S) S Run δn-approx on points in box n/2

  34. Putting it together Run δn-approx on points in box • One of these is “close enough” to real splitter • Est(S) = Left-Est(S) + Right-Est(S) • Final Estimate = maxS Est(S) • Looks like a great idea! • We go from δnto δ(1- μ)n.Recur to keep improving approximation S Run δn-approx on points in box n/2

  35. It fails, miserably Alg δ0=δ1(1-μ) • As we go up each level, approx gets better by (1-μ). • So to get δ0 = ¼, how many levels needed? • ¼ = ½ (1-μ)tSo t = 1/μ • We have running time at least 21/μ. So, μ needs to be > 1/log log n. Alg Alg δ1 1/μ Alg Alg Alg Alg δ2 ½ Alg Alg Alg Alg

  36. Find a splitter Total no. of points outside blue< μn • If μ < 1/(100 log n),being against health care conservative is good enough Conservative splitter n/2

  37. The basic dichotomy Continue IP P Cannot find splitter We find splitter The “Interactive Protocol” phase The “Dynamic Programming” phase • For IP, we need μ < 1/log n • μn is error in each “level” of IP • For DP, we need μ > 1/log log n • (1-μ) is decrease in approximation

  38. The basic dichotomy Strengthen Weaken Continue IP P Cannot find splitter We find splitter The “Interactive Protocol” phase The “Dynamic Programming” phase • For IP, we need μ < 1/log n • μn is error in each “level” of IP • For DP, we need μ > 1/log log n • (1-μ) is decrease in approximation

  39. Reducing to smaller DP! • Run δ-approx on all poly(log n) such boxes n/(log n) Run δ-approx to get LIS estimate inside box n/(log n)

  40. Reducing to smaller DP! • Run δ-approx on all poly(log n) such boxes • Use Dynamic Program to find chain with largest sum of estimates • Longest path in DAG • Can solve in poly(log n) time Chain n/(log n) n/(log n)

  41. Dichotomy theorem OR One can go from δ-approx to (δ-δ2)-approx by a (log n) sized DP Either it is easy to find the right subproblems

  42. The algorithm, in one slide Continue IP P • Overall running time becomes (log n)1/δ • *&^#$% miracle that the math works out Cannot find splitter We find splitter Make poly(log n) calls to δ-approx. Solve DP of poly(log n) size.

  43. The even better version • Don’t exactly solve this dynamic program! • Use our sublinear algo to approximately solve in (loglog n) time. Then do it recursively… • It’s painful • It’s all Greek:α β γδεζλμξ • We had ν, but got rid of it

  44. What next? • Sublinear dynamic programming! • We get (1/δ)1/δ (log n)c time. Can we get (log n)/δ time? • Would be extremely cool. Completely optimal • Applications for other dynamic programs? • How does one find the “right” subproblems in sublinear time? • Generalize the dichotomy • Longest common subsequence/edit distance…?

  45. Ask and you shall know…

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