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. 2009 Apr 30;9:87. doi: 10.1186/1471-2148-9-87

Table 6.

Determining the reduction path for the graph-based reduction approach.

Step Context 1 Context 2 Log likelihood difference Performed Model
1 CXC TXC 872.10 YES GTR15C
2 GXG TXG 1064.87 YES GTR14C
3 GXT TXC 1300.93 YES GTR13C
4 CXC GXC 1524.96 YES GTR12C
5 AXC GXC 1750.50 NO
6 GXC TXC 1777.24 SKIP
7 AXT CXG 1868.77 YES GTR11C
8 CXC GXT 1925.79 SKIP
9 CXA GXT 1928.98 YES GTR10C
10 GXC GXT 1940.97 SKIP
11 GXA TXG 1961.01 YES GTR9C
12 AXC GXA 1964.73 YES GTR8C
13 GXA GXG 1973.80 SKIP
14 AXC CXG 1983.92 YES GTR7C
15 AXC TXG 2043.25 SKIP
16 CXA GXC 2047.72 SKIP
17 AXC GXG 2211.16 SKIP
18 CXG TXG 2302.08 SKIP
19 CXG GXG 2341.46 SKIP
20 CXG GXC 2343.32 YES GTR6C
21 AXC AXT 2352.48 SKIP
22 GXT TXA 2363.72 YES GTR5C
... ... ... ... ... ...

The graph-based reduction approach constructs the optimal model (GTR8C in Table 8) for the Ancestral Repeats dataset in 12 iterations (first column). The second and third column show which 2 contexts (or clusters) are proposed for merging; the fourth column shows the difference in log likelihood between the full 16-contexts model and the resulting 15-contexts model should only those 2 contexts given in the second and third column be merged; the fifth column shows the decision on the proposed merge (YES: the merge is performed; NO: the merge is not performed due to a lower cost alternative; SKIP: the merge is already present in the current clustering); the sixth column shows the resulting model when a merge operation is performed.