target_path: coarse_rank.fusion baseline: es_bias: 10.0 es_exponent: 0.05 text_bias: 0.1 text_exponent: 0.35 text_translation_weight: 1.0 knn_text_weight: 1.0 knn_image_weight: 2.0 knn_tie_breaker: 0.3 knn_bias: 0.2 knn_exponent: 5.6 knn_text_bias: 0.2 knn_text_exponent: 0.0 knn_image_bias: 0.2 knn_image_exponent: 0.0 parameters: es_bias: {min: 2.0, max: 20.0, scale: log, round: 4} es_exponent: {min: 0.03, max: 0.28, scale: linear, round: 4} text_bias: {min: 0.01, max: 4.0, scale: log, round: 4} text_exponent: {min: 0.2, max: 1.6, scale: linear, round: 4} text_translation_weight: {min: 0.7, max: 1.8, scale: linear, round: 4} knn_text_weight: {min: 0.05, max: 1.8, scale: linear, round: 4} knn_image_weight: {min: 1.2, max: 6.0, scale: linear, round: 4} knn_tie_breaker: {min: 0.0, max: 0.4, scale: linear, round: 4} knn_bias: {min: 0.001, max: 2.5, scale: log, round: 4} knn_exponent: {min: 0.05, max: 12.0, scale: log, round: 4} knn_text_bias: {min: 0.001, max: 4.0, scale: log, round: 4} knn_text_exponent: {min: 0.0, max: 2.0, scale: linear, round: 4} knn_image_bias: {min: 0.01, max: 1.5, scale: log, round: 4} knn_image_exponent: {min: 0.0, max: 6.0, scale: linear, round: 4} seed_experiments: - name: seed_low_knn_global description: 先验证 021002 中出现的低 knn 全局指数,去掉 reranker 后是否仍有收益。 params: knn_bias: 0.6 knn_exponent: 0.4 - name: seed_bigset_knn_soft description: 从低 knn 全局指数出发,继续平滑 knn 非线性。 params: text_exponent: 0.42 text_translation_weight: 1.05 knn_text_weight: 0.85 knn_image_weight: 2.4 knn_tie_breaker: 0.18 knn_bias: 0.9 knn_exponent: 0.18 knn_image_exponent: 0.2 - name: seed_bigset_knn_mid description: 保留平滑 knn,但让 image 通路再强一点,验证大集是否需要适度非线性。 params: es_bias: 8.0 es_exponent: 0.08 text_bias: 0.15 text_exponent: 0.5 text_translation_weight: 1.15 knn_text_weight: 0.65 knn_image_weight: 3.1 knn_tie_breaker: 0.12 knn_bias: 0.45 knn_exponent: 0.85 knn_text_bias: 0.35 knn_text_exponent: 0.2 knn_image_bias: 0.22 knn_image_exponent: 0.8 - name: seed_bigset_text_stable description: 提高 lexical 区分度,观察大集是否更偏好稳健文本排序。 params: es_bias: 7.0 es_exponent: 0.12 text_bias: 0.25 text_exponent: 0.72 text_translation_weight: 1.0 knn_text_weight: 0.55 knn_image_weight: 2.2 knn_tie_breaker: 0.08 knn_bias: 0.7 knn_exponent: 0.35 knn_text_bias: 0.5 knn_text_exponent: 0.4 knn_image_bias: 0.18 knn_image_exponent: 0.35 - name: seed_hybrid_transfer description: 以大集 baseline 为主,温和吸收小集历史赢家中的 image/text 强化模式。 params: es_bias: 7.2 es_exponent: 0.15 text_bias: 0.6 text_exponent: 0.82 text_translation_weight: 1.28 knn_text_weight: 0.45 knn_image_weight: 4.0 knn_tie_breaker: 0.08 knn_bias: 0.2 knn_exponent: 1.2 knn_text_bias: 0.8 knn_text_exponent: 0.45 knn_image_bias: 0.3 knn_image_exponent: 1.4 - name: seed_legacy_bo234 description: 直接验证 53 条集历史最优在 771 条集上的迁移表现。 params: es_bias: 7.214 es_exponent: 0.2025 text_bias: 4.0 text_exponent: 1.584 text_translation_weight: 1.4441 knn_text_weight: 0.1 knn_image_weight: 5.6232 knn_tie_breaker: 0.021 knn_bias: 0.0019 knn_exponent: 11.8477 knn_text_bias: 2.3125 knn_text_exponent: 1.1547 knn_image_bias: 0.9641 knn_image_exponent: 5.8671 - name: seed_legacy_bo340 description: 验证小集冠军参数在大集上是否仍有价值。 params: es_bias: 5.887 es_exponent: 0.2145 text_bias: 4.0 text_exponent: 1.6 text_translation_weight: 1.4788 knn_text_weight: 0.3693 knn_image_weight: 5.7028 knn_tie_breaker: 0.0174 knn_bias: 0.0016 knn_exponent: 12.0 knn_text_bias: 2.6071 knn_text_exponent: 1.0458 knn_image_bias: 0.8282 knn_image_exponent: 6.0 - name: seed_image_guard description: 控制 image 权重但允许 image 子项指数,检查 recall 与 precision 的平衡点。 params: es_bias: 9.0 es_exponent: 0.09 text_bias: 0.12 text_exponent: 0.45 text_translation_weight: 1.1 knn_text_weight: 0.7 knn_image_weight: 2.8 knn_tie_breaker: 0.1 knn_bias: 0.55 knn_exponent: 0.55 knn_text_bias: 0.25 knn_text_exponent: 0.15 knn_image_bias: 0.28 knn_image_exponent: 1.0 optimizer: init_random: 2 candidate_pool_size: 160 explore_probability: 0.12 local_jitter_probability: 0.62 elite_fraction: 0.25 min_normalized_distance: 0.08