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Submitted by
Assigned_Reviewer_4
Q1: Comments to author(s).
First provide a summary of the paper, and then address the following
criteria: Quality, clarity, originality and significance. (For detailed
reviewing guidelines, see
http://nips.cc/PaperInformation/ReviewerInstructions)
---Response to Author Response---
Thank you
for the clarifications. I hope the authors will consider the following
points:
- I'm glad the authors plan to add more comparative
results, as they are much needed, but I still see no reason not to compare
to UCT. I appreciate the value of comparing to algorithms with similar
theoretical properties, but that does not preclude also comparing to the
current go-to algorithm in this problem setting. If ASOP does better than
UCT in one or more examples, then that is compelling evidence for ASOP's
practical applicability as well as its theoretical desirability. If UCT
does better then we get a sense of the magnitude of the practical cost of
ASOP's desirable guarantees (and can compare that to other algorithms that
make similar promises). Neither outcome diminishes ASOP's contribution and
either way the paper creates more knowledge for very little extra effort
or page space.
- I appreciate the clarification of the
relationship between the regret bounds for ASOP and UCT; I hope future
versions of this paper will make a similar direct comparison.
- I
may be missing something, but I'm not sure I see why it would be difficult
to apply Coquelin and Munos' algorithms to your planning problem.
"Modified UCT" is essentially just UCT except the exploration bonus is
smaller in deeper nodes and it enjoys a singly exponential regret bound
with high probability. In any case, the point is just that the paper makes
prominent mention of UCT's unfortunate worst case bound, but does not
clearly situate ASOP amongst other algorithms in this setting that also
improve upon UCT's worst case behavior (even those that are explicitly
cited!).
- I now understand better what was meant by "good
approximation to the MDP." For me personally, the S3 tree being a good
approximation to the MDP suggests that the tree is a close approximation
to the MDP model. It sounds like the real point is that the *value
function* if the tree is a close approximation to the value function of
the MDP. I think it would not be difficult to make this wording more
clear/specific in the paper.
- The clarification regarding the
best-first expansions helps, and I hope similar clarity will be added to
the paper. I personally would find it informative to see an empirical
comparison to ASOP with only breadth-first expansions as an illustration
of the relative importance of the "optimism" in the algorithm, but if the
role of the best-first expansions is clarified in the text, I don't think
it would be critical to add this.
---Summary of paper---
The paper presents an online planning algorithm for large MDPs.
The main idea is to sample several determinations of the system in the
form of roll-out trees where each state/action pair has only one sampled
successor. A combination of breadth-first and best-first search is used to
explore the deterministic trees, and then they are recombined to create a
stochastic model from which a policy can be calculated. The algorithm is
proven to be consistent (as the number of trees and number of nodes in
each tree both approach infinity, the value at the root can be arbitrarily
approximated with high probability). The algorithm is empirically compared
to an planning algorithm that requires a full transition model and
performs well in comparison.
---Quality---
The analysis
provided is, as far as I can tell, correct. I am intrigued by the overall
approach, and particularly like the intuition that the S3 trees are
"off-policy Monte Carlo" samples. My main concern is with the evaluation
of the algorithm. The strengths and weaknesses of this algorithm in
comparison to existing approaches to this problem are not very well
explored.
The shortcomings of UCT are given as primary motivators
for this work, and yet ASOP is not empirically compared to UCT (or to
"Modified UCT," the algorithm given in [4] with a singly exponential
regret bound with high probability). Also, the regret analysis given here
is in terms of the simple regret, but the worst case analysis in [4] is
not, making it difficult to compare the two to get a sense of the extent
of the improvement (if any) in the bounds. The regret in [4] is related to
the number of visits to sub-optimal leaves, and, because it is performing
breadth-first search, it seems straightforward to force ASOP to visit
exponentially many sub-optimal leaves. So, it is not clear whether this
algorithm's theoretical performance guarantees represent an improvement
over existing algorithms.
The empirical comparison to OP-MDP seems
strange, since it is not even intended for the same problem setting. The
fact that OP-MDP requires a full transition model seems to limit the
experiment to smallish MDPs, which is counter to the point of ASOP, isn't
it? The argument seems to be implied that, because OP-MDP requires access
to the transition dynamics, it should have an advantage but, having never
heard of it before, I have no idea what kind of performance to expect from
OP-MDP nor what to make of the fact that ASOP does better. I can't even
tell if either algorithm is doing objectively well, since I don't know
what optimal performance would look like in this problem. In all, I did
not feel this was an effective or informative empirical demonstration.
The authors should correct me if I am wrong, but it didn't seem
like the optimistic part of the algorithm actually played any role in the
regret bound. Presumably, then, this part of the algorithm is there to
improve empirical performance? If that is the case, it seems like it
should be better evaluated. How much do the best-first expansions really
help performance? Is it possible for them to hurt performance? Are there
another expansion strategy one could consider combining with breadth-first
search?
In the conclusions section it is suggested that ASOP
should perform best when single-successor trees are good approximations to
the original MDP, but I don't see much indication of this in the theory or
the experiments. Conceptually, when I think about the extreme case of a
deterministic environment, it seems like ASOP would either waste its time
creating multiple identical trees or, if it determinism is known a priori,
only create one tree but simply perform simultaneous breadth-first and
best-first search, which in a lot of cases has done much worse than Monte
Carlo tree search algorithms. So I think it would help to have some more
justification of this statement.
---Clarity---
For the
most part I found the paper to be clear, and the ideas accessible. I
appreciate that the high level idea was well-laid out before diving into
the details, and that each component of the framework was placed clearly
in context in the larger algorithm. I also found the proofs to be mostly
easy to follow with a good mix of intuitive and formal argument (though
there were some parts that tripped me up, listed below).
- Eq. 1
would be more clear if it was "d = …"
- The proof of Lemma 2 ends
in "< \epsilon", but should be "= \epsilon", so the lemma statement
should be "<= \epsilon" (adjustments also needed in later statements).
- Shouldn't the exponent in Eq. 3 be ceil[log(\epsilon/4(1 -
\gamma))(log \gamma)^{-1}] + 1? I'm not sure where some of those -1s came
from.
- Figure 3 is never discussed. What are we meant to learn
from it?
There are also several type-os and grammatical mistakes
throughout, so the authors should be sure to take some more
editing/polishing passes.
---Originality---
The
algorithm's conceptual connections to existing work are clearly laid out.
I believe the algorithm and its analysis to be novel, and the general
approach seems interesting.
---Significance---
The
presented algorithm does seem like a new approach to online planning in
large domains. It's possible that this approach will turn out to yield
significant advances in the state of the art. However, at the end of this
paper, I did not feel I had a sense of where this algorithm fits in with
existing techniques. It's not that I think every paper needs to be a horse
race ending with "Our algorithm is better than that other algorithm." I do
think that a new approach, even if it does not immediately compete with
existing methods, might still be interesting and valuable to have in the
literature. However, there has to be some indication of what that approach
brings to the table that is not already there, some indication of what
promise it may hold. In this paper, ASOP is presented largely as a novel
algorithm in a vacuum, without any comparative analysis (whether
theoretical, empirical, or even intuitive). In my opinion that
substantially hurts the potential impact of the
work. Q2: Please summarize your review in 1-2
sentences
I believe the approach is new and the analysis is both
clear and correct. However, I did not feel that the strengths and
weaknesses of the algorithm were adequately evaluated, particularly in
comparison to existing approaches to the same problem. A direct
comparative analysis either of theoretical properties or empirical
performance would go a long way toward illustrating what this algorithm
provides that existing algorithms do not.
Submitted by
Assigned_Reviewer_5
Q1: Comments to author(s).
First provide a summary of the paper, and then address the following
criteria: Quality, clarity, originality and significance. (For detailed
reviewing guidelines, see
http://nips.cc/PaperInformation/ReviewerInstructions)
The paper describes a novel stochastic simulation
technique for planning in MDPs by generating a forest of simple trees and
then aggregating the forest into a single tree. This method is claimed to
have advantages of depth and breadth searching that other methods do not
have. The method is novel, but incremental. The paepr is well written and
clear.
The downside of this paper is that only a single algorithm
is compared against, and the reasons behind the performance increases are
not sufficiently discussed. The paper would be improved if it gave more
discussion of *why* this contribution is significant. Why is the method
not compared against more generic MCTS planners? What is the motivation
for generating all the S3 trees and then aggregating? Why not just
generate the aggregate tree (or something similar) directly by a number of
states for each action (instead of only one and then aggregating with
other sample runs later)? Why is this not compared against?
A few
more minor things: - second paragraph of introduction "made available
every for every ..." - first sentence of section 2 "lead" --> "led"
- figure 1 is not very helpful as it is showing something quite
obvious. I would suggest deleting this and adding more discussion of the
significance - last sentence of section 6 : for every values -->
for every value - in bibliography - capitalise Markov
Q2: Please summarize your review in 1-2 sentences
Overall, the method seems novel and reasonable, but
lack of comparisons to other methods, and lack of discussion about what
the contributions are, have caused me to lower my score.
Submitted by
Assigned_Reviewer_6
Q1: Comments to author(s).
First provide a summary of the paper, and then address the following
criteria: Quality, clarity, originality and significance. (For detailed
reviewing guidelines, see
http://nips.cc/PaperInformation/ReviewerInstructions)
Summary: The authors introduce a new MCTS
algorithm based on the aggregation of trees constructed by the
optimism in the face of uncertainty (OFU) principle. To the best of my
knowledge the approach is novel, and I found it quite interesting. The
theoretical analysis seems sound, and I can believe that the OFU
heuristic used by SOP tree construction process gives a tangible
benefit in practice. I also think the work opens up a number of
avenues for future investigation. My only criticism is that the
experimental justification for this approach is only partially
convincing. For example, a comparison of ASOP to FSSS [18], which
enjoys (arguably) comparable theoretical guarantees and can use a form
of branch and bound pruning to speed up the search, would greatly
strengthen the paper in my opinion. Without a more comprehensive
experimental evaluation, I feel this paper is borderline or at most a
weak accept.
Comments: - Once the aggregate tree is
constructed, the final dynamic programming step to compute the value
estimate is quite similar to the computation performed by sparse
sampling. The FSSS algorithm, a sparse sampling variant which you cite
in [18], uses a sound form of branch and bound pruning to speed up the
search. I think this approach could also be directly applied to speed
up your final dynamic programming step. If this is the case, it is
probably worth mentioning and/or re-running your results to see if it
helps. - Line 138: is the C(x,a) and C(x) needed? Unless I missed it,
I don't think it is used later. - In Section 5, I think it is
worth mentioning that, like sparse sampling approaches, there is no
dependence on |S| in the bounds. Some further discussion comparing
Thm1 to the bounds obtained for Sparse Sampling [11] would also be
interesting. - In Section 5, it might be helpful to be more specific
about what you mean by a complete tree. It took me a bit of time to
work out what was meant exactly given the assumed property that
state-action pairs have only one successor in the realised trees.
Minor typos: - Line 41: "... made available every for every"
-> is available for every - Line 42: "... can be referred called"
-> is commonly known as - Line 47: "... (for" -> (short for
- Line 47: "... have allowed to" -> have allowed practitioners to
- Line 169: "... leaves T" -> leaves
T_i Q2: Please summarize your review in 1-2 sentences
The authors introduce a new MCTS algorithm based on
the aggregation of trees constructed via a process that applies the
optimism in the face of uncertainty principle. The approach is novel,
interesting, and asymptotically consistent. While there is some limited
experimental evaluation, it could be more comprehensive.
Q1:Author
rebuttal: Please respond to any concerns raised in the reviews. There are
no constraints on how you want to argue your case, except for the fact
that your text should be limited to a maximum of 6000 characters. Note
however that reviewers and area chairs are very busy and may not read long
vague rebuttals. It is in your own interest to be concise and to the
point.
We thank the 3 reviewers for their very relevant and
informative comments.
A major issue that was raised by all 3
reviewers is about numerical experiments: It is true that empirical
comparison to UCT as well as other MCTS algorithms is lacking. Our primary
goal was to compare ASOP with other planning algorithms that enjoy
finite-time performance guarantees, and UCT as well as many other MCTS
algorithms may perform well in specific problems but are lacking
finite-time theoretical performance guarantees. We chose to compare ASOP
to OP-MDP since it applies the optimistic principle in a similar planning
setting. We agree that additional experiments are needed and will be added
in future version of the work, in particular a comparison with FSSS.
About the difference in the regret definition: ASOP uses the
simple regret (like in OP-MDP [2] and OPD [9]) whereas UCT, modified UCT
and other algorithms in [4] use a cumulative regret. Although those
notions of regret are different in the K-armed bandit setting, an
algorithm with R_n cumulative regret can be turned into an algorithm with
expected simple-regret of R_n / n (see references [i] and [ii] below).
[i] S. Bubeck, R. Munos, and G. Stoltz. Pure exploration in
finitely-armed and continuous-armed bandits. Theoretical Computer Science,
412:1832-1852, 2011 [ii] J.-Y. Audibert, S. Bubeck, and R. Munos. Best
arm identification in multi-armed bandits. In Conference on Learning
Theory, 2010.
The counter-example mentioned in [4] does not
directly fit into the planning scenario considered in our paper. However,
a modification of this counter-example in a planning scenario with
discounted rewards is possible, and for such problem, the regret of ASOP
would be exponential ("only") in the depth D of the planning horizon since
ASOP uses half of the numerical budget for expanding the shallowest nodes.
This is much better than UCT (which is multiple-times exponential in D)
and almost as good as a pure uniform strategy (which would be the best
possible strategy when the reward function does not possess any
structure). It is not clear how a "modified UCT" could be implemented in
this planning problem (while still guaranteeing the B-values to be true
upper-bounds).
About the fact that we aggregate at the end and not
earlier: One motivation behind ASOP is that the individual planning
problems in the S3 trees are deterministic, so the approach "lifts"
strategies intended for the deterministic case to the stochastic case.
Also, the problem is decoupled; each S3 planning problem can be solved
independently of the others.
About the statement that ASOP should
perform best in MDPs where S3-trees are "a good approximation to the
original MDP": Consider the noisy inverted pendulum used in the numerical
evaluation. It has the property that state-action values are somewhat
robust against noise: The effect of noise on the control of the pendulum
can often be "corrected" by taking an appropriate next action: if the
policy (an action sequence) on a particular S3-tree consists of an impulse
into a certain direction followed by free movement (a typical situation),
and the impulse actually applied is weakened by noise compared to the
S3-tree, this can be corrected by consecutively applying another impulse
into the same direction instead of the free movement. Therefore, even
though the state transitions in the S3-tree may differ from the ones which
finally occur, the estimation of the action-value is not too far off;
there is a different, "patched" action sequence that has a similar value
and the same first action. OP-MDP does not exploit this, and instead
considers both cases (the original plan and its correction) separately. As
the values are similar, branch-and-bound is not effective in avoiding the
duplication of work. For equal budget this leads to deeper, and therefore
possibly more precise planning in the case of ASOP.
Some
additional answers to reviewer 4:
- It is correct that the
"optimistic part of the algorithm" does not play any role in the regret
bound. This part of the algorithm is indeed there to improve empirical
performance. - The "optimistic part" helps in our numerical
experiments, but it is also true that it may hurt performance. The
exploration in each S3 tree by design focusses on an optimal action
sequence for this "scenario". Since exploration leads to better lower
bounds, those policies which perform well across the considered scenarios
are preferred by ASOP. This can be a good thing, but it can also lead to
problems, as our counter-example shows. With increasing budget, this bias
disappears. - It is possible to combine the approach with other
expansion strategies, maybe incorporating some prior knowledge, but it
should be noted that these strategies will also introduce a bias for the
reasons described above. - When using just uniform planning, a
swing-up like shown in figure 3 (it gives an example of a computed policy)
requires a much higher number of samples; for this problem, a large
planning horizon is necessary. - The assumption of a full transition
model in OP-MDP does not imply a restriction to small MDPs, however the
number of successor states (the support of the successor state
distribution) should not be too large.
Some additional answers to
reviewer 6:
- It is correct that the pruning aspect of FSSS could
speed up the final dynamic programming step. - The results for sparse
sampling are comparable to those given in Thm1; when each of the S3 trees
is fully explored to the same depth H as the planning tree in sparse
sampling, and the forest size is C, the action value function has the same
near optimality guarantee.
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