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@ai-on-browser/data-analysis-models

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Data analysis model package without any dependencies

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/** * Balanced iterative reducing and clustering using hierarchies */ export default class BIRCH { /** * @param {number} k * @param {number} [b] Maximum number of entries for each non-leaf nodes * @param {number} [t] Threshold * @param {number} [l] Maximum number of entries for each leaf nodes */ constructor(k: number, b?: number, t?: number, l?: number); _k: number; _tree: CFTree; /** * Fit model. * @param {Array<Array<number>>} datas Training data */ fit(datas: Array<Array<number>>): void; /** * Returns predicted categories. * @param {Array<Array<number>>} datas Sample data * @returns {number[]} Predicted values */ predict(datas: Array<Array<number>>): number[]; } declare class CFTree { constructor(b?: number, t?: number, l?: number); _b: number; _l: number; _t: number; _datas: any[]; _children: any[]; _parent: any; get size(): number; get length(): number; get depth(): any; get cf(): { n: number; ls: any; ss: number; } | { n: number; ls: any[]; ss: number; } | { n: any; ls: any; ss: any; }; _cf: { n: number; ls: any; ss: number; } | { n: number; ls: any[]; ss: number; } | { n: any; ls: any; ss: any; }; get r(): any; _r: any; get c(): any; at(index: any): any; isRoot(): boolean; isLeaf(): boolean; push(data: any): void; _separate(): void; } export {};