An alternative to independent pairwise distance estimation is proposed that uses hyperbolic geometry to jointly estimate pairwise distances subject to a weakening of the four point condition that characterises tree metrics. Specifically, taxa are represented as points in hyperbolic space such that the distance between a pair of points accounts for the site differences between the corresponding taxa. The proposed algorithm iteratively rearranges the points to increase an objective function that is shown empirically to increase the log-likelihood employed in tree search. Unlike the log-likelihood on tree space, the proposed objective function is differentiable, allowing for the use of gradient-based techniques in its optimisation. It is shown that the error term in the weakened four point condition is bounded by a linear function of the radius parameter of the hyperboloid model, which controls the curvature of the space. The error may thus be made as small as desired, within the bounds of computational precision.
翻译:除了独立的对称距离估计之外,还提议使用双曲几何测量法来共同估计对称距离,但受树量测量的四点条件减弱的影响。 具体地说, 分类法是作为超曲空间的点数表示的, 这样一对点之间的距离就代表了相应分类群之间站点的差异。 提议的算法迭代地重新排列了点数,以增加客观功能, 从经验上显示, 目的是增加在树面积搜索中使用的日志相似性。 与树面积上的日志相似性不同, 拟议的客观功能是不同的, 允许在优化时使用基于梯度的技术。 这表明, 被削弱的四点条件中的错误词被控制空间曲线的超光标模型半径参数线性函数所捆绑。 因此, 错误可以在计算精度范围内按需要的那样小化。