{ "config": { "query_token_id": "[unused0]", "doc_token_id": "[unused1]", "query_token": "[Q]", "doc_token": "[D]", "ncells": null, "centroid_score_threshold": null, "ndocs": null, "load_index_with_mmap": false, "index_path": null, "index_bsize": 32, "nbits": 8, "kmeans_niters": 20, "resume": false, "similarity": "cosine", "bsize": 64, "accumsteps": 1, "lr": 1e-5, "maxsteps": 400000, "save_every": null, "warmup": 20000, "warmup_bert": null, "relu": false, "nway": 64, "use_ib_negatives": true, "reranker": false, "distillation_alpha": 1.0, "ignore_scores": false, "model_name": null, "query_maxlen": 32, "attend_to_mask_tokens": false, "interaction": "colbert", "dim": 128, "doc_maxlen": 256, "mask_punctuation": true, "checkpoint": "colbert-ir\/colbertv2.0", "triples": "\/future\/u\/okhattab\/root\/unit\/experiments\/2021.10\/downstream.distillation.round2.2_score\/round2.nway6.cosine.ib\/examples.64.json", "collection": [ "list with 3148 elements starting with...", [ "Image restoration poses a garners substantial interest due to the exponential surge in demands for recovering high-quality images from diverse mobile camera devices, adverse lighting conditions, suboptimal shooting environments, and frequent image compression for efficient transmission purposes. Yet this problem gathers significant challenges as people are blind to the type of restoration the images suffer, which, is usually the case in real-day scenarios and is most urgent to solve for this field. Current research, however, heavily relies on prior knowledge of the restoration type, either explicitly through rules or implicitly through the availability of degraded-clean image pairs to define the restoration process, and consumes considerable effort to collect image pairs of vast degradation types. This paper introduces DreamClean, a training-free method that needs no degradation prior knowledge but yields high-fidelity and generality towards various types of image degradation. DreamClean embeds the degraded image back to the latent of pre-trained diffusion models and re-sample it through a carefully designed diffusion process that mimics those generating clean images. Thanks to the rich image prior in diffusion models and our novel Variance Preservation Sampling (VPS) technique, DreamClean manages to handle various different degradation types at one time and reaches far more satisfied final quality than previous competitors.", "Thanks to the rich image prior in diffusion models and our novel Variance Preservation Sampling (VPS) technique, DreamClean manages to handle various different degradation types at one time and reaches far more satisfied final quality than previous competitors. DreamClean relies on elegant theoretical supports to assure its convergence to clean image when VPS has appropriate parameters, and also enjoys superior experimental performance over various challenging tasks that could be overwhelming for previous methods when degradation prior is unavailable.", "Post-hoc out-of-distribution (OOD) detection has garnered intensive attention in reliable machine learning. Many efforts have been dedicated to deriving score functions based on logits, distances, or rigorous data distribution assumptions to identify low-scoring OOD samples. Nevertheless, these estimate scores may fail to accurately reflect the true data density or impose impractical constraints. To provide a unified perspective on density-based score design, we propose a novel theoretical framework grounded in Bregman divergence, which extends distribution considerations to encompass an exponential family of distributions. Leveraging the conjugation constraint revealed in our theorem, we introduce a \\textsc{ConjNorm} method, reframing density function design as a search for the optimal norm coefficient $p$ against the given dataset. In light of the computational challenges of normalization, we devise an unbiased and analytically tractable estimator of the partition function using the Monte Carlo-based importance sampling technique." ] ], "queries": "\/future\/u\/okhattab\/data\/MSMARCO\/queries.train.tsv", "index_name": "ICLR2024-papers-abstract-index", "overwrite": false, "root": ".ragatouille\/", "experiment": "colbert", "index_root": null, "name": "2024-05\/04\/00.30.44", "rank": 0, "nranks": 1, "amp": true, "gpus": 1, "avoid_fork_if_possible": false }, "num_chunks": 1, "num_partitions": 8192, "num_embeddings_est": 547258.0114746094, "avg_doclen_est": 173.84307861328125 }