User:Jadrian Miles/OKRs/Spring 2012: Difference between revisions
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Today's Date: '''{{CURRENTMONTH}}/{{CURRENTDAY2}}''' | Today's Date: '''{{CURRENTMONTH}}/{{CURRENTDAY2}}''' | ||
* Meta-objective: make measurable progress toward the dissertation. | |||
** Key result: curve-clustering / macrostructure-initialization chapter is complete by '''04/27'''. | |||
** Key result: chapter outline for the first-pass "real" problem is complete by '''04/27'''. | |||
*** {{red|Neither of these got done this semester.}} | |||
* Objective: Finish the toy problem. | * Objective: Finish the toy problem. | ||
** Key result: | ** Key result: Success is defined by '''01/10'''. | ||
** Key result: | *** Demonstrate that the ground-truth configuration is a local optimum of the chi-squared goodness-of-fit measure. | ||
** Key result: | *** Write a simple local search optimizer that improves goodness-of-fit—no need to go overboard tweaking it, though; a simple demonstration of improvement by geometrical adjustment, splitting, and joining is sufficient. | ||
* Objective: | *** {{green|Wrote success definition 01/08--10.}} | ||
** Key result: | ** Key result: Principled solver meets success criteria by '''01/17'''. | ||
*** | *** {{green|Wrote an optimizer and wrapped up toy problem on 01/16.}} | ||
** Key result: | * Objective: Submit a paper to MICCAI. | ||
*** {{green| | ** Key result: Potential paper subjects are defined by '''01/17'''. | ||
*** Subject: Streamline clustering based on chi-squared reconstruction error of coherent structures. | |||
*** {{green|Done before 01/17.}} | |||
** <span style="text-decoration: line-through; color: red;">Key result: Paper draft is ready by '''01/27'''.</span> | |||
** <span style="text-decoration: line-through; color: red;">Key result: Paper is submitted by '''03/01'''.</span> | |||
** <span style="text-decoration: line-through; color: red;">Key result: Additional OKRs for after the submission are defined by '''03/02'''.</span> | |||
** Can't write the code and the paper in time for the MICCAI deadline (decided 02/17). The rough outline (done before 01/27) is still a good guide though. | |||
* Objective: Upgrade the toy problem to a simple 3-D case. | |||
** Key result: Clustering objective function is coded up by '''01/27'''. | |||
*** {{yellow|Objective function defined in terms of chi-squared before 01/27, but not implemented.}} | |||
** Key result: success defined for clustering by '''02/24'''. | |||
*** Clustering must perform better with respect to streamline reproduction, as measured by chi-squared goodness-of-fit, than at least two other competitor clustering algorithms. May want to compare to the Lawes cortical-ROI-based approach too. | |||
*** {{yellow|Success defined late, 03/09.}} | |||
** Key result: success defined for real problem by '''02/24'''. | |||
*** There are four demonstrations of success I think are compelling. Demonstrations of success with synthetic data may be intermediate, but to finish the dissertation I think the following is required: | |||
***# Demonstrate (by pictures) specific challenging regions in which the multi-scale approach reconstructs structures better than two competitors. | |||
***# Demonstrate (numerically) that image reconstruction, as measured by chi-squared goodness-of-fit, is better than two competitors. | |||
***# Demonstrate (in prose, or maybe with a quick user study) that selection tasks for specific brain structures are easier and more precise than with ROI+tractography methods. | |||
*** {{yellow|Success defined late, 03/09.}} | |||
* Objective: Submit a paper to a journal in 2012. | |||
** Key result: Potential paper subjects are defined by '''03/06'''. | |||
*** The clustering paper described by the above definition of success would be a good submission. | |||
*** Would it be possible to write up the toy problem as a case study for doing the Rician-to-Gaussian transformation for chi-squared analysis? | |||
*** {{green|Paper subjects written up on time.}} | |||
Latest revision as of 19:13, 22 May 2012
Today's Date: 12/10
- Meta-objective: make measurable progress toward the dissertation.
- Key result: curve-clustering / macrostructure-initialization chapter is complete by 04/27.
- Key result: chapter outline for the first-pass "real" problem is complete by 04/27.
- Neither of these got done this semester.
- Objective: Finish the toy problem.
- Key result: Success is defined by 01/10.
- Demonstrate that the ground-truth configuration is a local optimum of the chi-squared goodness-of-fit measure.
- Write a simple local search optimizer that improves goodness-of-fit—no need to go overboard tweaking it, though; a simple demonstration of improvement by geometrical adjustment, splitting, and joining is sufficient.
- Wrote success definition 01/08--10.
- Key result: Principled solver meets success criteria by 01/17.
- Wrote an optimizer and wrapped up toy problem on 01/16.
- Key result: Success is defined by 01/10.
- Objective: Submit a paper to MICCAI.
- Key result: Potential paper subjects are defined by 01/17.
- Subject: Streamline clustering based on chi-squared reconstruction error of coherent structures.
- Done before 01/17.
- Key result: Paper draft is ready by 01/27.
- Key result: Paper is submitted by 03/01.
- Key result: Additional OKRs for after the submission are defined by 03/02.
- Can't write the code and the paper in time for the MICCAI deadline (decided 02/17). The rough outline (done before 01/27) is still a good guide though.
- Key result: Potential paper subjects are defined by 01/17.
- Objective: Upgrade the toy problem to a simple 3-D case.
- Key result: Clustering objective function is coded up by 01/27.
- Objective function defined in terms of chi-squared before 01/27, but not implemented.
- Key result: success defined for clustering by 02/24.
- Clustering must perform better with respect to streamline reproduction, as measured by chi-squared goodness-of-fit, than at least two other competitor clustering algorithms. May want to compare to the Lawes cortical-ROI-based approach too.
- Success defined late, 03/09.
- Key result: success defined for real problem by 02/24.
- There are four demonstrations of success I think are compelling. Demonstrations of success with synthetic data may be intermediate, but to finish the dissertation I think the following is required:
- Demonstrate (by pictures) specific challenging regions in which the multi-scale approach reconstructs structures better than two competitors.
- Demonstrate (numerically) that image reconstruction, as measured by chi-squared goodness-of-fit, is better than two competitors.
- Demonstrate (in prose, or maybe with a quick user study) that selection tasks for specific brain structures are easier and more precise than with ROI+tractography methods.
- Success defined late, 03/09.
- There are four demonstrations of success I think are compelling. Demonstrations of success with synthetic data may be intermediate, but to finish the dissertation I think the following is required:
- Key result: Clustering objective function is coded up by 01/27.
- Objective: Submit a paper to a journal in 2012.
- Key result: Potential paper subjects are defined by 03/06.
- The clustering paper described by the above definition of success would be a good submission.
- Would it be possible to write up the toy problem as a case study for doing the Rician-to-Gaussian transformation for chi-squared analysis?
- Paper subjects written up on time.
- Key result: Potential paper subjects are defined by 03/06.